DOKK Library

Algorithmic Graph Theory (Version 0.7-r1931)

Authors David Joyner Minh Van Nguyen Nathann Cohen

License GFDL-1.3-no-invariants-or-later

Plaintext
 Algorithmic Graph Theory

David Joyner, Minh Van Nguyen, Nathann Cohen

               Version 0.7-r1931
               2012 January 07
Copyright © 2010–2012 David Joyner hwdjoyner@gmail.comi
Copyright © 2009–2012 Minh Van Nguyen hmvngu.name@gmail.comi
Copyright © 2010 Nathann Cohen hnathann.cohen@gmail.comi

Permission is granted to copy, distribute and/or modify this document under the terms
of the GNU Free Documentation License, Version 1.3 or any later version published by
the Free Software Foundation; with no Invariant Sections, no Front-Cover Texts, and no
Back-Cover Texts. A copy of the license is included in the section entitled “GNU Free
Documentation License”.

The latest version of the book is available from its website at

   http://code.google.com/p/graphbook/

Edition
Version 0.7-r1931
2012 January 07
Contents

Acknowledgments                                                                                                                                       iv

1 Introduction to Graph Theory                                                                                                                         1
  1.1 Graphs and digraphs . . . . . . .                      .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .     2
  1.2 Subgraphs and other graph types                        .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .    11
  1.3 Representing graphs as matrices .                      .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .    17
  1.4 Isomorphic graphs . . . . . . . .                      .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .    22
  1.5 New graphs from old . . . . . . .                      .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .    27
  1.6 Common applications . . . . . . .                      .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .    36
  1.7 Application: finite automata . . .                     .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .    38
  1.8 Problems . . . . . . . . . . . . . .                   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .    45

2 Graph Algorithms                                                                                                                                    52
  2.1 Representing graphs in a computer                          .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .    53
  2.2 Graph searching . . . . . . . . . . .                      .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .    59
  2.3 Weights and distances . . . . . . .                        .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .    70
  2.4 Dijkstra’s algorithm . . . . . . . . .                     .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .    73
  2.5 Bellman-Ford algorithm . . . . . .                         .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .    76
  2.6 Floyd-Roy-Warshall algorithm . . .                         .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .    77
  2.7 Johnson’s algorithm . . . . . . . . .                      .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .    84
  2.8 Problems . . . . . . . . . . . . . . .                     .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .    86

3 Trees and Forests                                                                                                                                  104
  3.1 Definitions and examples           .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   104
  3.2 Properties of trees . . . .        .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   111
  3.3 Minimum spanning trees             .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   115
  3.4 Binary trees . . . . . . .         .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   126
  3.5 Huffman codes . . . . .            .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   133
  3.6 Tree traversals . . . . . .        .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   139
  3.7 Problems . . . . . . . . .         .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   144

4 Tree Data Structures                                                                                                                               152
  4.1 Priority queues . .    .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   153
  4.2 Binary heaps . . .     .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   154
  4.3 Binomial heaps . .     .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   164
  4.4 Binary search trees    .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   172
  4.5 AVL trees . . . . .    .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   179
  4.6 Problems . . . . . .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   189

                                                             i
ii                                                                                                                             Contents

5 Distance and Connectivity                                                                                                                196
  5.1 Paths and distance . . . . . . . . . . . .                   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   196
  5.2 Vertex and edge connectivity . . . . . . .                   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   201
  5.3 Expander graphs and Ramanujan graphs                         .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   206
  5.4 Menger’s theorem . . . . . . . . . . . . .                   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   209
  5.5 Whitney’s Theorem . . . . . . . . . . . .                    .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   212
  5.6 Centrality of a vertex . . . . . . . . . . .                 .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   212
  5.7 Network reliability . . . . . . . . . . . .                  .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   213
  5.8 The spectrum of a graph . . . . . . . . .                    .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   213
  5.9 Problems . . . . . . . . . . . . . . . . . .                 .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   215

6 Optimal Graph Traversals                                                                                                                 219
  6.1 Eulerian graphs . . . . . . . . . .          .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   219
  6.2 Hamiltonian graphs . . . . . . . .           .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   219
  6.3 The Chinese Postman Problem .                .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   220
  6.4 The Traveling Salesman Problem               .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   220

7 Planar Graphs                                                                                                                            221
  7.1 Planarity and Euler’s Formula . . . . . . . . . . . . . . . . . . . . . . . .                                                        221
  7.2 Kuratowski’s Theorem . . . . . . . . . . . . . . . . . . . . . . . . . . . .                                                         221
  7.3 Planarity algorithms . . . . . . . . . . . . . . . . . . . . . . . . . . . . .                                                       223

8 Graph Coloring                                                                                                                           224
  8.1 Vertex coloring . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . .                                                      224
  8.2 Edge coloring . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . .                                                      225
  8.3 Applications of graph coloring . . . . . . . . . . . . . . . . . . . . . . . .                                                       225

9 Network Flows                                                                                                                            227
  9.1 Flows and cuts . . . . . . . . . .           .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   227
  9.2 Chip firing games . . . . . . . . .          .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   232
  9.3 Ford-Fulkerson theorem . . . . .             .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   238
  9.4 Edmonds and Karp’s algorithm .               .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   243
  9.5 Goldberg and Tarjan’s algorithm              .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   243

10 Random Graphs                                                                                                                           244
   10.1 Network statistics . . . . . . .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   244
   10.2 Binomial random graph model        .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   248
   10.3 Erdős-Rényi model . . . . . .    .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   255
   10.4 Small-world networks . . . . .     .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   257
   10.5 Scale-free networks . . . . . .    .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   262
   10.6 Problems . . . . . . . . . . . .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   267

11 Graph Problems and Their LP             Formulations                                                                                    273
   11.1 Maximum average degree . . .       . . . . . . . . .                   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   273
   11.2 Traveling Salesman Problem .       . . . . . . . . .                   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   274
   11.3 Edge-disjoint spanning trees .     . . . . . . . . .                   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   276
   11.4 Steiner tree . . . . . . . . . .   . . . . . . . . .                   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   277
   11.5 Linear arboricity . . . . . . .    . . . . . . . . .                   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   279
   11.6 H-minor . . . . . . . . . . . .    . . . . . . . . .                   .   .   .   .   .   .   .   .   .   .   .   .   .   .   .   281
Contents                                                                                                     iii

A Asymptotic Growth                                                                                         285

B GNU Free Documentation License                                                                            286
  1. APPLICABILITY AND DEFINITIONS . . . . . . . . .            .   .   .   .   .   .   .   .   .   .   .   286
  2. VERBATIM COPYING . . . . . . . . . . . . . . . . .         .   .   .   .   .   .   .   .   .   .   .   288
  3. COPYING IN QUANTITY . . . . . . . . . . . . . . . .        .   .   .   .   .   .   .   .   .   .   .   288
  4. MODIFICATIONS . . . . . . . . . . . . . . . . . . . .      .   .   .   .   .   .   .   .   .   .   .   289
  5. COMBINING DOCUMENTS . . . . . . . . . . . . . .            .   .   .   .   .   .   .   .   .   .   .   290
  6. COLLECTIONS OF DOCUMENTS . . . . . . . . . . .             .   .   .   .   .   .   .   .   .   .   .   291
  7. AGGREGATION WITH INDEPENDENT WORKS . .                     .   .   .   .   .   .   .   .   .   .   .   291
  8. TRANSLATION . . . . . . . . . . . . . . . . . . . . . .    .   .   .   .   .   .   .   .   .   .   .   291
  9. TERMINATION . . . . . . . . . . . . . . . . . . . . . .    .   .   .   .   .   .   .   .   .   .   .   292
  10. FUTURE REVISIONS OF THIS LICENSE . . . . . .              .   .   .   .   .   .   .   .   .   .   .   292
  11. RELICENSING . . . . . . . . . . . . . . . . . . . . . .   .   .   .   .   .   .   .   .   .   .   .   292
  ADDENDUM: How to use this License for your documents          .   .   .   .   .   .   .   .   .   .   .   293

Bibliography                                                                                                294

Index                                                                                                       302
Acknowledgments

 ˆ Fidel Barrera-Cruz: reported typos in Chapter 3. See changeset 101. Suggested
   making a note about disregarding the direction of edges in undirected graphs. See
   changeset 277.

 ˆ Daniel Black: reported a typo in Chapter 1. See changeset 61.

 ˆ Kevin Brintnall: reported typos in the definition of iadj(v) ∩ oadj(v); see change-
   sets 240 and 242. Solution to Example 1.14(2); see changeset 246.

 ˆ John Costella: helped to clarify the idea that the adjacency matrix of a bipar-
   tite graph can be permuted to obtain a block diagonal matrix. See page 19 and
   revisions 1865 and 1869.

 ˆ Aaron Dutle: reported a typo in Figure 1.15. See changeset 125.

 ˆ Péter L. Erdős (http://www.renyi.hu/∼elp) for informing us of the reference [74] on
   the Havel-Hakimi theorem for directed graphs.

 ˆ Noel Markham: reported a typo in Algorithm 2.5. See changeset 131 and Issue 2.

 ˆ Caroline Melles: clarify definitions of various graph types (weighted graphs, multi-
   graphs, and weighted multigraphs); clarify definitions of degree, isolated vertices,
   and pendant and using the butterfly graph with 5 vertices (see Figure 1.10) to
   illustrate these definitions; clarify definitions of trails, closed paths, and cycles;
   see changeset 448. Some rearrangements of materials in Chapter 1 to make the
   reading flow better and a few additions of missing definitions; see changeset 584.
   Clarifications about unweighted and weighted degree of a vertex in a multigraph;
   notational convention about a graph being simple unless otherwise stated; an ex-
   ample on graph minor; see changeset 617.

 ˆ Pravin Paratey: simplify the sentence formation in the definition of digraphs; see
   changeset 714 and Issue 7.

 ˆ The world map in Figure 2.16 was adapted from an SVG image file from Wikipedia.
   The original SVG file was accessed on 2010-10-01 at http://en.wikipedia.org/wiki/
   File:WorldmapwlocationwNEDw50m.svg.




                                          iv
Chapter 1

Introduction to Graph Theory




     — Spiked Math, http://spikedmath.com/120.html

Our journey into graph theory starts with a puzzle that was solved over 250 years ago by
Leonhard Euler (1707–1783). The Pregel River flowed through the town of Königsberg,
which is present day Kaliningrad in Russia. Two islands protruded from the river.
On either side of the mainland, two bridges joined one side of the mainland with one
island and a third bridge joined the same side of the mainland with the other island. A
bridge connected the two islands. In total, seven bridges connected the two islands with
both sides of the mainland. A popular exercise among the citizens of Königsberg was
determining if it was possible to cross each bridge exactly once during a single walk. For
historical perspectives on this puzzle and Euler’s solution, see Gribkovskaia et al. [89]
and Hopkins and Wilson [103].
    To visualize this puzzle in a slightly different way, consider Figure 1.1. Imagine that
points a and c are either sides of the mainland, with points b and d being the two islands.
Place the tip of your pencil on any of the points a, b, c, d. Can you trace all the lines
in the figure exactly once, without lifting your pencil? Known as the seven bridges of
Königsberg puzzle, Euler solved this problem in 1735 and with his solution he laid the
foundation of what is now known as graph theory.




                                             1
2                                                        Chapter 1. Introduction to Graph Theory

                                           c




                                           b                          d




                                           a


                           Figure 1.1: The seven bridges of Königsberg puzzle.

1.1                Graphs and digraphs
             When I use a word, it means just what I choose it to mean—neither more nor less.
             — Humpty Dumpty in Lewis Carroll’s Through the Looking Glass

The word “graph” is commonly understood to mean a visual representation of a dataset,
such as a bar chart, a histogram, a scatterplot, or a plot of a function. Examples of such
graphs are shown in Figure 1.2.

               1

                                                                0.5
             0.5
    f (x)




               0                                                  0
                                                           y




            −0.5
                                                               −0.5

             −1

               −6    −4     −2     0      2    4    6                 −4       −2      0        2   4
                                   x                                                   x

                     (a) Plots of functions.                               (b) A scatterplot.

                          Figure 1.2: Visual representations of datasets as plots.

    This book is not about graphs in the sense of plots of functions or datasets. Rather,
our focus is on combinatorial graphs or graphs for short. A graph in the combinatorial
sense is a collection of discrete interconnected elements, an example of which is shown
in Figure 1.1. How can we elaborate on this brief description of combinatorial graphs?
To paraphrase what Felix Klein said about curves,1 it is easy to define a graph until we
realize the countless number of exceptions. There are directed graphs, weighted graphs,
multigraphs, simple graphs, and so on. Where do we begin?

Notation If S is a set, let S (n) denote the set of unordered n-tuples (with possible
repetition). We shall sometimes refer to an unordered n-tuple as an n-set.

     1
     “Everyone knows what a curve is, until he has studied enough mathematics to become confused
through the countless number of possible exceptions.”
1.1. Graphs and digraphs                                                                       3

We start by calling a “graph” what some call an “unweighted, undirected graph without
multiple edges.”

Definition 1.1. A graph G = (V, E) is an ordered pair of finite sets. Elements of V are
called vertices or nodes, and elements of E ⊆ V (2) are called edges or arcs. We refer to
V as the vertex set of G, with E being the edge set. The cardinality of V is called the
order of G, and |E| is called the size of G. We usually disregard any direction of the
edges and consider (u, v) and (v, u) as one and the same edge in G. In that case, G is
referred to as an undirected graph.

    One can label a graph by attaching labels to its vertices. If (v1 , v2 ) ∈ E is an edge of
a graph G = (V, E), we say that v1 and v2 are adjacent vertices. For ease of notation, we
write the edge (v1 , v2 ) as v1 v2 . The edge v1 v2 is also said to be incident with the vertices
v1 and v2 .
                                                a




                                  e                           b




                                 d                            c


                                 Figure 1.3: A house graph.


Example 1.2. Consider the graph in Figure 1.3.

  1. List the vertex and edge sets of the graph.

  2. For each vertex, list all vertices that are adjacent to it.

  3. Which vertex or vertices have the largest number of adjacent vertices? Similarly,
     which vertex or vertices have the smallest number of adjacent vertices?

  4. If all edges of the graph are removed, is the resulting figure still a graph? Why or
     why not?

  5. If all vertices of the graph are removed, is the resulting figure still a graph? Why
     or why not?

Solution. (1) Let G = (V, E) denote the graph in Figure 1.3. Then the vertex set of G
is V = {a, b, c, d, e}. The edge set of G is given by

                     E = {ab, ae, ba, bc, be, cb, cd, dc, de, ed, eb, ea}.                 (1.1)

We can also use Sage to construct the graph G and list its vertex and edge sets:
4                                                         Chapter 1. Introduction to Graph Theory

sage : G = Graph ({ " a " :[ " b " ," e " ] , " b " :[ " a " ," c " ," e " ] , " c " :[ " b " ," d " ] ,
...      " d " :[ " c " ," e " ] , " e " :[ " a " ," b " ," d " ]})
sage : G
Graph on 5 vertices
sage : G . vertices ()
[ ’a ’ , ’b ’ , ’c ’ , ’d ’ , ’e ’]
sage : G . edges ( labels = False )
[( ’a ’ , ’b ’) , ( ’a ’ , ’e ’) , ( ’b ’ , ’e ’) , ( ’c ’ , ’b ’) , ( ’c ’ , ’d ’) , ( ’e ’ , ’d ’ )]

The graph G is undirected, meaning that we do not impose direction on any edges.
Without any direction on the edges, the edge ab is the same as the edge ba. That is why
G.edges() returns six edges instead of the 12 edges listed in (1.1).
   (2) Let adj(v) be the set of all vertices that are adjacent to v. Then we have

                                             adj(a) = {b, e}
                                             adj(b) = {a, c, e}
                                             adj(c) = {b, d}
                                             adj(d) = {c, e}
                                             adj(e) = {a, b, d}.

The vertices adjacent to v are also referred to as its neighbors. We can use the function
G.neighbors() to list all the neighbors of each vertex.
sage :     G . neighbors ( " a " )
[ ’b ’ ,   ’e ’]
sage :     G . neighbors ( " b " )
[ ’a ’ ,   ’c ’ , ’e ’]
sage :     G . neighbors ( " c " )
[ ’b ’ ,   ’d ’]
sage :     G . neighbors ( " d " )
[ ’c ’ ,   ’e ’]
sage :     G . neighbors ( " e " )
[ ’a ’ ,   ’b ’ , ’d ’]

    (3) Taking the cardinalities of the above five sets, we get |adj(a)| = |adj(c)| =
|adj(d)| = 2 and |adj(b)| = |adj(e)| = 3. Thus a, c and d have the smallest number
of adjacent vertices, while b and e have the largest number of adjacent vertices.
    (4) If all the edges in G are removed, the result is still a graph, although one without
any edges. By definition, the edge set of any graph is a subset of V (2) . Removing all
edges of G leaves us with the empty set ∅, which is a subset of every set.
    (5) Say we remove all of the vertices from the graph in Figure 1.3 and in the process
all edges are removed as well. The result is that both of the vertex and edge sets are
empty. This is a special graph known as the empty or null graph.
Example 1.3. Consider the illustration in Figure 1.4. Does Figure 1.4 represent a
graph? Why or why not?
Solution. If V = {a, b, c} and E = {aa, bc}, it is clear that E ⊆ V (2) . Then (V, E) is a
graph. The edge aa is called a self-loop of the graph. In general, any edge of the form
vv is a self-loop.
    In Figure 1.3, the edges ae and ea represent one and the same edge. If we do not
consider the direction of the edges in the graph of Figure 1.3, then the graph has six
edges. However, if the direction of each edge is taken into account, then there are 12 edges
as listed in (1.1). The following definition captures the situation where the direction of
the edges are taken into account.
    A directed edge is an edge such that one vertex incident with it is designated as
the head vertex and the other incident vertex is designated as the tail vertex. In this
1.1. Graphs and digraphs                                                                                          5

                                                         a




                                        c                                 b


                                 Figure 1.4: A figure with a self-loop.

situation, we may assume that the set of edges is a subset of the ordered pairs V × V .
A directed edge uv is said to be directed from its tail u to its head v. A directed graph
or digraph G is a graph each of whose edges is directed. The indegree id(v) of a vertex
v ∈ V (G) counts the number of edges such that v is the head of those edges. The
outdegree od(v) of a vertex v ∈ V (G) is the number of edges such that v is the tail of
those edges. The degree deg(v) of a vertex v of a digraph is the sum of the indegree and
the outdegree of v.
    Let G be a graph without self-loops and multiple edges. It is important to distinguish
a graph G as being directed or undirected. If G is undirected and uv ∈ E(G), then uv
and vu represent the same edge. In case G is a digraph, then uv and vu are different
directed edges. For a digraph G = (V, E) and a vertex v ∈ V , all the neighbors of v
in G are contained in adj(v), i.e. the set of all neighbors of v. Just as we distinguish
between indegree and outdegree for a vertex in a digraph, we also distinguish between in-
neighbors and out-neighbors. The set of in-neighbors iadj(v) ⊆ adj(v) of v ∈ V consists
of all those vertices that contribute to the indegree of v. Similarly, the set of out-neighbors
oadj(v) ⊆ adj(v) of v ∈ V are those vertices that contribute to the outdegree of v. Then

                            iadj(v) ∩ oadj(v) = {u | uv ∈ E and vu ∈ E}

and adj(v) = iadj(v) ∪ oadj(v).

1.1.1       Multigraphs
This subsection presents a larger class of graphs. For simplicity of presentation, in this
book we shall assume usually that a graph is not a multigraph. In other words, when you
read a property of graphs later in the book, it will be assumed (unless stated explicitly
otherwise) that the graph is not a multigraph. However, as multigraphs and weighted
graphs are very important in many applications, we will try to keep them in the back
of our mind. When appropriate, we will add as a remark how an interesting property of
“ordinary” graphs extends to the multigraph or weighted graph case.
    An important class of graphs consist of those graphs having multiple edges between
pairs of vertices. A multigraph is a graph in which there are multiple edges between a
pair of vertices. A multi-undirected graph is a multigraph that is undirected. Similarly,
a multidigraph is a directed multigraph.

Example 1.4. Sage can compute with and plot multigraphs, or multidigraphs, having
loops.
sage :   G = Graph ({0:{0: ’ e0 ’ ,1: ’ e1 ’ ,2: ’ e2 ’ ,3: ’ e3 ’} , 2:{5: ’ e4 ’ }})
sage :   G . show ( vertex_labels = True , edge_labels = True , graph_border = True )
sage :   H = DiGraph ({0:{0: " e0 " }} , Loops = True )
sage :   H . add_edges ([(0 ,1 , ’ e1 ’) , (0 ,2 , ’ e2 ’) , (0 ,2 , ’ e3 ’) , (1 ,2 , ’ e4 ’) , (1 ,0 , ’ e5 ’ )])
sage :   H . show ( vertex_labels = True , edge_labels = True , graph_border = True )
6                                                  Chapter 1. Introduction to Graph Theory

                            5


                            e4                               2


                            2
                                                     e4                 e3
                            e2                               e5

                            0                1                                0    e0
                      e3         e1
                  3         e0        1                      e1

                           (a)                                    (b)

              Figure 1.5: A graph G and digraph H with a loop and multi-edges.

These graphs are plotted in Figure 1.5.
        As we indicated above, a graph may have “weighted” edges.
Definition 1.5. A weighted graph is a graph G = (V, E) where each set V and E is a
pair consisting of a vertex and a real number called the weight.
    The illustration in Figure 1.1 is actually a multigraph, a graph with multiple edges,
called the Königsberg graph.
Definition 1.6. For a weighted multigraph G, we are given:
        ˆ A finite set V whose elements are pairs (v, wv ), where v is called a vertex and
          wv ∈ R is called its weight. (Sometimes, the pair (v, wv ) is called the vertex.)
        ˆ A finite set E whose elements are called edges. We do not necessarily assume that
          E ⊆ V (2) , where V (2) is the set of unordered pairs of vertices.2
        ˆ An incidence function
                                             i : E −→ V (2) .                                  (1.2)
Such a multigraph is denoted G = (V, E, i). An orientation on G is a function
                                           h : E −→ V                                          (1.3)
where h(e) ∈ i(e) for all e ∈ E. The element v = h(e) is called the head of i(e). If G has
no self-loops, then i(e) is a set having exactly two elements denoted i(e) = {h(e), t(e)}.
The element v = t(e) is called the tail of i(e). For self-loops, we set t(e) = h(e). A
multigraph with an orientation can therefore be described as the 4-tuple (V, E, i, h).
In other words, G = (V, E, i, h) is a multidigraph. Figure 1.6 illustrates a weighted
multigraph.
    The degree of a weighted multigraph must be defined. There is a weighted degree and
an unweighted degree. Let G be a graph as in Definition 1.6. The unweighted indegree
of a vertex v ∈ V counts the edges going into v:
                                              X
                                   deg+ (v) =     1.
                                                     e∈E
                                                    h(e)=v

    2
     However, we always assume that E ⊆ R × V (2) , where the R-component is called the weight of the
edge.
1.1. Graphs and digraphs                                                                  7

                                           1

                           v3                           v4
                                                                             2

                                       3       1
                                                                     1
                       1   2                             3                       v5

                                       3                                 3
                                                                             6
                           v2                           v1

                                           1


                   Figure 1.6: An example of a weighted multigraph.

The unweighted outdegree of a vertex v ∈ V counts the edges going out of v:
                                             X
                               deg− (v) =           1.
                                                       e∈E
                                                   v∈i(e)={v,v 0 }
                                                      h(e)=v 0

The unweighted degree deg(v) of a vertex v of a weighted multigraph is the sum of the
unweighted indegree and the unweighted outdegree of v:
                                   deg(v) = deg+ (v) + deg− (v).                       (1.4)
Loops are counted twice.
   Similarly, there is the set of in-neighbors
              iadj(v) = {w ∈ V | for some e ∈ E, i(e) = {v, w}, h(e) = v}
and the set of out-neighbors
             oadj(v) = {w ∈ V | for some e ∈ E, i(e) = {v, w}, h(e) = w}.
Define the adjacency of v to be the union of these:
                                    adj(v) = iadj(v) ∪ oadj(v).                        (1.5)
It is clear that deg+ (v) = | iadj(v)| and deg− (v) = | oadj(v)|.
    The weighted indegree of a vertex v ∈ V counts the weights of edges going into v:
                                                  X
                                    wdeg + (v) =       wv .
                                                        e∈E
                                                       h(e)=v

The weighted outdegree of a vertex v ∈ V counts the weights of edges going out of v:
                                             X
                              wdeg − (v) =           wv .
                                                       e∈E
                                                   v∈i(e)={v,v 0 }
                                                      h(e)=v 0

The weighted degree of a vertex of a weighted multigraph is the sum of the weighted
indegree and the weighted outdegree of that vertex,
                                wdeg(v) = wdeg + (v) + wdeg − (v).
In other words, it is the sum of the weights of the edges incident to that vertex, regarding
the graph as an undirected weighted graph.
8                                                        Chapter 1. Introduction to Graph Theory

Definition 1.7. Let G = (V, E, h) be an unweighted multidigraph. The line graph of G,
denoted L(G), is the multidigraph whose vertices are the edges of G and whose edges are
(e, e0 ) where h(e) = t(e0 ) (for e, e0 ∈ E). A similar definition holds if G is undirected.

    For example, the line graph of the cyclic graph is itself.


1.1.2       Simple graphs
        Our life is frittered away by detail. . . . Simplify, simplify. Instead of three meals a day, if
        it be necessary eat but one; instead of a hundred dishes, five; and reduce other things in
        proportion.
        — Henry David Thoreau, Walden, 1854, Chapter 2: Where I Lived, and What I Lived For


A simple graph is a graph with no self-loops and no multiple edges. Figure 1.7 illustrates
a simple graph and its digraph version, together with a multidigraph version of the
Königsberg graph. The edges of a digraph can be visually represented as directed arrows,
similar to the digraph in Figure 1.7(b) and the multidigraph in Figure 1.7(c). The digraph
in Figure 1.7(b) has the vertex set {a, b, c} and the edge set {ab, bc, ca}. There is an arrow
from vertex a to vertex b, hence ab is in the edge set. However, there is no arrow from
b to a, so ba is not in the edge set of the graph in Figure 1.7(b). The family Sh(n) of
Shannon multigraphs is illustrated in Figure 1.8 for integers 2 ≤ n ≤ 7. These graphs
are named after Claude E. Shannon (1916–2001) and are sometimes used when studying
edge colorings. Each Shannon multigraph consists of three vertices, giving rise to a total
of three distinct unordered pairs. Two of these pairs are connected by bn/2c edges and
the third pair of vertices is connected by b(n + 1)/2c edges.

                                                                        c




                  a                                a                    b                                  d




    c                         b        c                        b       a

         (a) Simple graph.                   (b) Digraph.                       (c) Multidigraph.

            Figure 1.7: A simple graph, its digraph version, and a multidigraph.



Notational convention              Unless stated otherwise, all graphs are simple graphs in the
remainder of this book.

Definition 1.8. For any vertex v in a graph G = (V, E), the cardinality of adj(v) (as
in 1.5) is called the degree of v and written as deg(v) = | adj(v)|. The degree of v counts
the number of vertices in G that are adjacent to v. If deg(v) = 0, then v is not incident
to any edge and we say that v is an isolated vertex. If G has no loops and deg(v) = 1,
then v is called a pendant.
1.1. Graphs and digraphs                                                                9




                (a) Sh(2)                             (b) Sh(3)          (c) Sh(4)




                (d) Sh(5)                              (e) Sh(6)         (f) Sh(7)

           Figure 1.8: The family of Shannon multigraphs Sh(n) for n = 2, . . . , 7.

    Some examples would put the above definition in concrete terms. Consider again
the graph in Figure 1.4. Note that no vertices are isolated. Even though vertex a is
not incident to any vertex other than a itself, note that deg(a) = 2 and so by definition
a is not isolated. Furthermore, each of b and c is a pendant. For the house graph in
Figure 1.3, we have deg(b) = 3. For the graph in Figure 1.7(b), we have deg(b) = 2.
If V 6= ∅ and E = ∅, then G is a graph consisting entirely of isolated vertices. From
Example 1.2 we know that the vertices a, c, d in Figure 1.3 have the smallest degree in
the graph of that figure, while b, e have the largest degree.
    The minimum degree among all vertices in G is denoted δ(G), whereas the maximum
degree is written as ∆(G). Thus, if G denotes the graph in Figure 1.3 then we have
δ(G) = 2 and ∆(G) = 3. In the following Sage session, we construct the digraph in
Figure 1.7(b) and compute its maximum and minimum number of degrees.
sage : G = DiGraph ({ " a " : " b " , " b " : " c " , " c " : " a " })
sage : G
Digraph on 3 vertices
sage : G . degree ( " a " )
2
sage : G . degree ( " b " )
2
sage : G . degree ( " c " )
2

So for the graph G in Figure 1.7, we have δ(G) = ∆(G) = 2.
    The graph G in Figure 1.7 has the special property that its minimum degree is the
same as its maximum degree, i.e. δ(G) = ∆(G). Graphs with this property are referred
to as regular . An r-regular graph is a regular graph each of whose vertices has degree r.
For instance, G is a 2-regular graph. The following result, due to Euler, counts the total
number of degrees in any graph.
10                                                        Chapter 1. Introduction to Graph Theory
                                                                               P
Theorem 1.9. Euler 1736. If G = (V, E) is a graph, then                             v∈V   deg(v) = 2|E|.

Proof. Each edge e = v1 v2 ∈ E is incident with two vertices, so e is counted twice
towards the total sum of degrees. The first time, we count e towards the degree of vertex
v1 and the second time we count e towards the degree of v2 .

    Theorem 1.9 is sometimes called the “handshaking lemma,” due to its interpretation
as in the following story. Suppose you go into a room. Suppose there are n people in the
room (including yourself) and some people shake hands with others and some do not.
Create the graph with n vertices, where each vertex is associated with a different person.
Draw an edge between two people if they shook hands. The degree of a vertex is the
number of times that person has shaken hands (we assume that there are no multiple
edges, i.e. that no two people shake hands twice). The theorem above simply says that
the total number of handshakes is even. This is “obvious” when you look at it this way
since each handshake is counted twice (A shaking B’s hand is counted, and B shaking A’s
hand is counted as well, since the sum in the theorem is over all vertices). To interpret
Theorem 1.9 in a slightly different way within the context of the same room of people,
there is an even number of people who shook hands with an odd number of other people.
This consequence of Theorem 1.9 is recorded in the following corollary.

Corollary 1.10. A graph G = (V, E) contains an even number of vertices with odd
degrees.

Proof. Partition V into two disjoint subsets: Ve is the subset of V that contains only
vertices with even degrees; and Vo is the subset of V with only vertices of odd degrees.
That is, V = Ve ∪ Vo and Ve ∩ Vo = ∅. From Theorem 1.9, we have
                     X             X             X
                         deg(v) =      deg(v) +      deg(v) = 2|E|
                         v∈V               v∈Ve              v∈Vo


which can be re-arranged as
                        X                         X                X
                                      deg(v) =          deg(v) −          deg(v).
                               v∈Vo               v∈V              v∈Ve

     P                   P
As    v∈V   deg(v) and       v∈Ve   deg(v) are both even, their difference is also even.

    As E ⊆ V (2) , then E can be the empty set, in which case the total degree of G =
(V, E) is zero. Where E 6= ∅, then the total degree of G is greater than zero. By
Theorem 1.9, the total degree of G is nonnegative and even. This result is an immediate
consequence of Theorem 1.9 and is captured in the following corollary.

Corollary 1.11. If G is a graph, then the sum of its degrees is nonnegative and even.

    If G = (V, E) is an r-regular graph with n vertices and m edges, it is clear by definition
of r-regular graphs that the total degree of G is rn. By Theorem 1.9 we have 2m = rn
and therefore m = rn/2. This result is captured in the following corollary.

Corollary 1.12. If G = (V, E) is an r-regular graph having n vertices and m edges,
then m = rn/2.
1.2. Subgraphs and other graph types                                                       11

1.2      Subgraphs and other graph types
We now consider several common types of graphs. Along the way, we also present basic
properties of graphs that could be used to distinguish different types of graphs.
   Let G be a multigraph as in Definition 1.6, with vertex set V (G) and edge set E(G).
Consider a graph H such that V (H) ⊆ V (G) and E(H) ⊆ E(G). Furthermore, if
e ∈ E(H) and i(e) = {u, v}, then u, v ∈ V (H). Under these conditions, H is called a
subgraph of G.

1.2.1     Walks, trails, and paths
      I like long walks, especially when they are taken by people who annoy me.
      — Noel Coward

If u and v are two vertices in a graph G, a u-v walk is an alternating sequence of vertices
and edges starting with u and ending at v. Consecutive vertices and edges are incident.
Formally, a walk W of length n ≥ 0 can be defined as

                              W : v0 , e1 , v1 , e2 , v2 , . . . , vn−1 , en , vn

where each edge ei = vi−1 vi and the length n refers to the number of (not necessarily
distinct) edges in the walk. The vertex v0 is the starting vertex of the walk and vn is
the end vertex, so we refer to W as a v0 -vn walk. The trivial walk is the walk of length
n = 0 in which the start and end vertices are one and the same vertex. If the graph has
no multiple edges then, for brevity, we omit the edges in a walk and usually write the
walk as the following sequence of vertices:

                                    W : v0 , v1 , v2 , . . . , vn−1 , vn .

For the graph in Figure 1.9, an example of a walk is an a-e walk: a, b, c, b, e. In other
words, we start at vertex a and travel to vertex b. From b, we go to c and then back to
b again. Then we end our journey at e. Notice that consecutive vertices in a walk are
adjacent to each other. One can think of vertices as destinations and edges as footpaths,
say. We are allowed to have repeated vertices and edges in a walk. The number of edges
in a walk is called its length. For instance, the walk a, b, c, b, e has length 4.
                                      a                                b



                                                                                    c


                     g


                                                                                    d



                                      f                                e


                             Figure 1.9: Walking along a graph.

   A trail is a walk with no repeating edges. For example, the a-b walk a, b, c, d, f, g, b in
Figure 1.9 is a trail. It does not contain any repeated edges, but it contains one repeated
12                                                       Chapter 1. Introduction to Graph Theory

vertex, i.e. b. Nothing in the definition of a trail restricts a trail from having repeated
vertices. A walk with no repeating vertices, except possibly the first and last, is called a
path. Without any repeating vertices, a path cannot have repeating edges, hence a path
is also a trail.
Proposition 1.13. Let G = (V, E) be a simple (di)graph of order n = |V |. Any path in
G has length at most n − 1.
Proof. Let V = {v1 , v2 , . . . , vn } be the vertex set of G. Without loss of generality, we can
assume that each pair of vertices in the digraph G is connected by an edge, giving a total
of n2 possible edges for E = V × V . We can remove self-loops from E, which now leaves
us with an edge set E1 that consists of n2 − n edges. Start our path from any vertex,
say, v1 . To construct a path of length 1, choose an edge v1 vj1 ∈ E1 such that vj1 ∈              / {v1 }.
Remove from E1 all v1 vk such that vj1 6= vk . This results in a reduced edge set E2 of
n2 − n − (n − 2) elements and we now have the path P1 : v1 , vj1 of length 1. Repeat the
same process for vj1 vj2 ∈ E2 to obtain a reduced edge set E3 of n2 − n − 2(n − 2) elements
and a path P2 : v1 , vj1 , vj2 of length 2. In general, let Pr : v1 , vj1 , vj2 , . . . , vjr be a path of
length r < n and let Er+1 be our reduced edge set of n2 − n − r(n − 2) elements. Repeat
the above process until we have constructed a path Pn−1 : v1 , vj1 , vj2 , . . . , vjn−1 of length
n − 1 with reduced edge set En of n2 − n − (n − 1)(n − 2) elements. Adding another
vertex to Pn−1 means going back to a vertex that was previously visited, because Pn−1
already contains all vertices of V .
    A walk of length n ≥ 3 whose start and end vertices are the same is called a closed
walk . A trail of length n ≥ 3 whose start and end vertices are the same is called a closed
trail . A path of length n ≥ 3 whose start and end vertices are the same is called a closed
path or a cycle (with apologies for slightly abusing terminology).3 For example, the
walk a, b, c, e, a in Figure 1.9 is a closed path. A path whose length is odd is called odd ,
otherwise it is referred to as even. Thus the walk a, b, e, a in Figure 1.9 is a cycle. It is
easy to see that if you remove any edge from a cycle, then the resulting walk contains no
closed walks. An Euler subgraph of a graph G is either a cycle or an edge-disjoint union
of cycles in G. An example of a closed walk which is not a cycle is given in Figure 1.10.
                                    0                                4



                                                     2



                                    1                                3


                          Figure 1.10: Butterfly graph with 5 vertices.

   The length of the shortest cycle in a graph is called the girth of the graph. By
convention, an acyclic graph is said to have infinite girth.
Example 1.14. Consider the graph in Figure 1.9.
     1. Find two distinct walks that are not trails and determine their lengths.

     2. Find two distinct trails that are not paths and determine their lengths.
     3
      A cycle in a graph is sometimes also called a “circuit”. Since that terminology unfortunately
conflicts with the closely related notion of a circuit of a matroid, we do not use it here.
1.2. Subgraphs and other graph types                                                              13

   3. Find two distinct paths and determine their lengths.

   4. Find a closed trail that is not a cycle.

   5. Find a closed walk C which has an edge e such that C − e contains a cycle.

Solution. (1) Here are two distinct walks that are not trails: w1 : g, b, e, a, b, e and
w2 : f, d, c, e, f, d. The length of walk w1 is 5 and the length of walk w2 is also 5.
   (2) Here are two distinct trails that are not paths: t1 : a, b, c, e, b and t2 : b, e, f, d, c, e.
The length of trail t1 is 4 and the length of trail t2 is 5.
   (3) Here are two distinct paths: p1 : a, b, c, d, f, e and p2 : g, b, a, e, f, d. The length of
path p1 is 5 and the length of path p2 is also 5.
   (4) Here is a closed trail that is not a cycle: d, c, e, b, a, e, f, d.
   (5) Left to the reader.

Theorem 1.15. Every u-v walk in a graph contains a u-v path.

Proof. A walk of length n = 0 is the trivial path. So assume that W is a u-v walk of
length n > 0 in a graph G:

                                   W : u = v0 , v1 , . . . , vn = v.

It is possible that a vertex in W is assigned two different labels. If W has no repeated
vertices, then W is already a path. Otherwise W has at least one repeated vertex. Let
0 ≤ i, j ≤ n be two distinct integers with i < j such that vi = vj . Deleting the vertices
vi , vi+1 , . . . , vj−1 from W results in a u-v walk W1 whose length is less than n. If W1 is
a path, then we are done. Otherwise we repeat the above process to obtain a u-v walk
shorter than W1 . As W is a finite sequence, we only need to apply the above process a
finite number of times to arrive at a u-v path.

   A graph is said to be connected if for every pair of distinct vertices u, v there is a
u-v path joining them. A graph that is not connected is referred to as disconnected .
The empty graph is disconnected and so is any nonempty graph with an isolated vertex.
However, the graph in Figure 1.7 is connected. A geodesic path or shortest path between
two distinct vertices u, v of a graph is a u-v path of minimum length. A nonempty graph
may have several shortest paths between some distinct pair of vertices. For the graph
in Figure 1.9, both a, b, c and a, e, c are geodesic paths between a and c. Let H be a
connected subgraph of a graph G such that H is not a proper subgraph of any connected
subgraph of G. Then H is said to be a component of G. We also say that H is a maximal
connected subgraph of G. Any connected graph is its own component. The number of
connected components of a graph G will be denoted ω(G).
   The following is an immediate consequence of Corollary 1.10.

Proposition 1.16. Suppose that exactly two vertices of a graph have odd degree. Then
those two vertices are connected by a path.

Proof. Let G be a graph all of whose vertices are of even degree, except for u and v. Let
C be a component of G containing u. By Corollary 1.10, C also contains v, the only
remaining vertex of odd degree. As u and v belong to the same component, they are
connected by a path.
14                                                                    Chapter 1. Introduction to Graph Theory

Example 1.17. Determine whether or not the graph in Figure 1.9 is connected. Find a
shortest path from g to d.
Solution. In the following Sage session, we first construct the graph in Figure 1.9 and
use the method is_connected() to determine whether or not the graph is connected.
Finally, we use the method shortest_path() to find a geodesic path between g and d.
sage :     g = Graph ({ " a " :[ " b " ," e " ] , " b " :[ " a " ," g " ," e " ," c " ] , \
...        " c " :[ " b " ," e " ," d " ] , " d " :[ " c " ," f " ] , " e " :[ " f " ," a " ," b " ," c " ] , \
...        " f " :[ " g " ," d " ," e " ] , " g " :[ " b " ," f " ]})
sage :     g . is_connected ()
True
sage :     g . shortest_path ( " g " , " d " )
[ ’g ’ ,   ’f ’ , ’d ’]

This shows that g, f, d is a shortest path from g to d. In fact, any other g-d path has
length greater than 2, so we can say that g, f, d is the shortest path between g and d.
Remark 1.18. We will explain Dijkstra’s algorithm in Chapter 2, which gives one of
the best algorithms for finding shortest paths between two vertices in a connected graph.
What is very remarkable is that, at the present state of knowledge, finding the shortest
path from a vertex v to a particular (but arbitrarily given) vertex w appears to be as
hard as finding the shortest path from a vertex v to all other vertices in the graph!
   Trees are a special type of graphs that are used in modelling structures that have
some form of hierarchy. For example, the hierarchy within an organization can be drawn
as a tree structure, similar to the family tree in Figure 1.11. Formally, a tree is an
undirected graph that is connected and has no cycles. If one vertex of a tree is specially
designated as the root vertex , then the tree is called a rooted tree. Chapter 3 covers trees
in more details.
                                                              grandma




                                               mum                                uncle            aunt




                               me              sister          brother           cousin1          cousin2


                                                Figure 1.11: A family tree.



1.2.2          Subgraphs, complete and bipartite graphs
Let G be a graph with vertex set V (G) and edge set E(G). Suppose we have a graph
H such that V (H) ⊆ V (G) and E(H) ⊆ E(G). Furthermore, suppose the incidence
function i of G, when restricted to E(H), has image in V (H)(2) . Then H is a subgraph
of G. In this situation, G is referred to as a supergraph of H.
   Starting from G, one can obtain its subgraph H by deleting edges and/or vertices
from G. Note that when a vertex v is removed from G, then all edges incident with
v are also removed. If V (H) = V (G), then H is called a spanning subgraph of G. In
Figure 1.12, let G be the left-hand side graph and let H be the right-hand side graph.
Then it is clear that H is a spanning subgraph of G. To obtain a spanning subgraph
from a given graph, we delete edges from the given graph.
1.2. Subgraphs and other graph types                                                     15




                            (a)                             (b)

                     Figure 1.12: A graph and one of its subgraphs.

   We now consider several standard classes of graphs. The complete graph Kn on n
vertices is a graph such that any two distinct vertices are adjacent. As |V (Kn )| = n,
then |E(Kn )| is equivalent to the total number of 2-combinations from a set of n objects:
                                            
                                            n     n(n − 1)
                               |E(Kn )| =      =           .                         (1.6)
                                            2         2
Thus for any simple graph G with n vertices, its total number of edges |E(G)| is bounded
above by
                                            n(n − 1)
                                 |E(G)| ≤              .                            (1.7)
                                                 2
Figure 1.13 shows complete graphs each of whose total number of vertices is bounded by
1 ≤ n ≤ 5. The complete graph K1 has one vertex with no edges. It is also called the
trivial graph.




          (a) K5              (b) K4               (c) K3           (d) K2      (e) K1

                    Figure 1.13: Complete graphs Kn for 1 ≤ n ≤ 5.

   The following result is an application of inequality (1.7).
Theorem 1.19. Let G be a simple graph with n vertices and k components. Then G
has at most 21 (n − k)(n − k + 1) edges.
Proof. If ni is the number of vertices in component i, then ni > 0 and it can be shown (see
the proof of Lemma 2.1 in [80, pp.21–22]) that
                       X         X 2                X           
                            2
                           ni ≤        ni − (k − 1) 2       ni − k .                  (1.8)

(This
P     result holds true for any nonempty but finite set of positive integers.) Note that
  ni = n and by (1.7) each component i has at most 21 ni (ni − 1) edges. Apply (1.8) to
16                                             Chapter 1. Introduction to Graph Theory

get
                   X ni (ni − 1)       1X 2 1X
                                     =      ni −       ni
                            2          2         2
                                       1                          1
                                     ≤ (n2 − 2nk + k 2 + 2n − k) − n
                                       2                          2
                                       (n − k)(n − k + 1)
                                     =
                                               2
as required.

    The cycle graph on n ≥ 3 vertices, denoted Cn , is the connected 2-regular graph on n
vertices. Each vertex in Cn has degree exactly 2 and Cn is connected. Figure 1.14 shows
cycles graphs Cn where 3 ≤ n ≤ 6. The path graph on n ≥ 1 vertices is denoted Pn . For
n = 1, 2 we have P1 = K1 and P2 = K2 . Where n ≥ 3, then Pn is a spanning subgraph
of Cn obtained by deleting one edge.




         (a) C6                  (b) C5                (c) C4               (d) C3

                      Figure 1.14: Cycle graphs Cn for 3 ≤ n ≤ 6.

    A bipartite graph G is a graph with at least two vertices such that V (G) can be split
into two disjoint subsets V1 and V2 , both nonempty. Every edge uv ∈ E(G) is such that
u ∈ V1 and v ∈ V2 , or v ∈ V1 and u ∈ V2 . See Kalman [117] for an application of bipartite
graphs to the problem of allocating satellites to radio stations.

Theorem 1.20. A graph is bipartite if and only if it has no odd cycles.

Proof. Necessity (=⇒): Assume G to be bipartite. Traversing each edge involves going
from one side of the bipartition to the other. For a walk to be closed, it must have
even length in order to return to the side of the bipartition from which the walk started.
Thus, any cycle in G must have even length.
   Sufficiency (⇐=): Assume G = (V, E) has order n ≥ 2 and no odd cycles. If G is
connected, choose any vertex u ∈ V and define a partition of V thus:

                                X = {x ∈ V | d(u, x) is even},
                                Y = {y ∈ V | d(u, y) is odd}

where d(u, v) denotes the distance (or length of the shortest path) from u to v. If (X, Y )
is a bipartition of G, then we are done. Otherwise, (X, Y ) is not a bipartition of G.
Then one of X and Y has two vertices v, w joined by an edge e. Let P1 be a shortest
u-v path and P2 be a shortest u-w path. By definition of X and Y , both P1 and P2 have
even lengths or both have odd lengths. From u, let x be the last vertex common to both
1.3. Representing graphs as matrices                                                            17

P1 and P2 . The subpath u-x of P1 and u-x of P2 have equal length. That is, the subpath
x-v of P1 and x-w of P2 both have even or odd lengths. Construct a cycle C from the
paths x-v and x-w, and the edge e joining v and w. Since x-v and x-w both have even
or odd lengths, the cycle C has odd length, contradicting our hypothesis that G has no
odd cycles. Hence, (X, Y ) is a bipartition of G.
    Finally, if G is disconnected, each of its components has no odd cycles. Repeat the
above argument for each component to conclude that G is bipartite.
    The complete bipartite graph Km,n is the bipartite graph whose vertex set is parti-
tioned into two nonempty disjoint sets V1 and V2 with |V1 | = m and |V2 | = n. Any
vertex in V1 is adjacent to each vertex in V2 , and any two distinct vertices in Vi are not
adjacent to each other. If m = n, then Kn,n is n-regular. Where m = 1 then K1,n is
called the star graph. Figure 1.15 shows a bipartite graph together with the complete
bipartite graphs K4,3 and K3,3 , and the star graph K1,4 .




           (a) bipartite             (b) K4,3                 (c) K3,3         (d) K1,4

                 Figure 1.15: Bipartite, complete bipartite, and star graphs.

   As an example of K3,3 , suppose that there are 3 boys and 3 girls dancing in a room.
The boys and girls naturally partition the set of all people in the room. Construct a
graph having 6 vertices, each vertex corresponding to a person in the room, and draw
an edge form one vertex to another if the two people dance together. If each girl dances
three times, once with with each of the three boys, then the resulting graph is K3,3 .


1.3       Representing graphs as matrices
       Neo: What is the Matrix?
       Morpheus: Unfortunately, no one can be told what the Matrix is. You have to see it for
       yourself.
       — From the movie The Matrix, 1999

An m × n matrix A can be represented as
                                                                    
                                 a11 a12 · · · a1n
                                a21 a22 · · · a2n 
                           A=                                       
                               . . . . . . . . . . . . . . . . . . . .
                                 am1 am2 · · · amn
The positive integers m and n are the row and column dimensions of A, respectively.
The entry in row i column j is denoted aij . Where the dimensions of A are clear from
context, A is also written as A = [aij ].
18                                                   Chapter 1. Introduction to Graph Theory

    Representing a graph as a matrix is very inefficient in some cases and not so in
other cases. Imagine you walk into a large room full of people and you consider the
“handshaking graph” discussed in connection with Theorem 1.9. If not many people
shake hands in the room, it is a waste of time recording all the handshakes and also all
the “non-handshakes.” This is basically what the adjacency matrix does. In this kind
of “sparse graph” situation, it would be much easier to simply record the handshakes as
a Python dictionary.4 This section requires some concepts and techniques from linear
algebra, especially matrix theory. See introductory texts on linear algebra and matrix
theory [19] for coverage of such concepts and techniques.


1.3.1      Adjacency matrix
Let G be an undirected graph with vertices V = {v1 , . . . , vn } and edge set E. The
adjacency matrix of G is the n × n matrix A = [aij ] defined by
                                             (
                                              1, if vi vj ∈ E,
                                     aij =
                                                 0, otherwise.

The adjacency matrix of G is also written as A(G). As G is an undirected graph, then
A is a symmetric matrix. That is, A is a square matrix such that aij = aji .
    Now let G be a directed graph with vertices V = {v1 , . . . , vn } and edge set E. The
(0, −1, 1)-adjacency matrix of G is the n × n matrix A = [aij ] defined by
                                         
                                         
                                          1, if vi vj ∈ E,
                                         
                                    aij = −1, if vj vi ∈ E,
                                         
                                         
                                         
                                           0, otherwise.



                              3                                        f



               6                             2          d                             e




               5                             1          b                             c



                              4                                        a

                             (a)                                     (b)

              Figure 1.16: What are the adjacency matrices of these graphs?


Example 1.21. Compute the adjacency matrices of the graphs in Figure 1.16.
     4
     A Python dictionary is basically an indexed set. See the reference manual at http://www.python.org
for further details.
1.3. Representing graphs as matrices                                                                     19

Solution. Define the graphs in Figure 1.16 using DiGraph and Graph. Then call the
method adjacency_matrix().
sage : G1 = DiGraph ({1:[2] , 2:[1] , 3:[2 ,6] , 4:[1 ,5] , 5:[6] , 6:[5]})
sage : G2 = Graph ({ " a " :[ " b " ," c " ] , " b " :[ " a " ," d " ] , " c " :[ " a " ," e " ] , \
...    " d " :[ " b " ," f " ] , " e " :[ " c " ," f " ] , " f " :[ " d " ," e " ]})
sage : m1 = G1 . adjacency_matrix (); m1
[0 1 0 0 0 0]
[1 0 0 0 0 0]
[0 1 0 0 0 1]
[1 0 0 0 1 0]
[0 0 0 0 0 1]
[0 0 0 0 1 0]
sage : m2 = G2 . adjacency_matrix (); m2
[0 1 1 0 0 0]
[1 0 0 1 0 0]
[1 0 0 0 1 0]
[0 1 0 0 0 1]
[0 0 1 0 0 1]
[0 0 0 1 1 0]
sage : m1 . is_symmetric ()
False
sage : m2 . is_symmetric ()
True

In general, the adjacency matrix of a digraph is not symmetric, while that of an undi-
rected graph is symmetric.

    More generally, if G is an undirected multigraph with edge eij = vi vj having mul-
tiplicity wij , or a weighted graph with edge eij = vi vj having weight wij , then we can
define the (weighted) adjacency matrix A = [aij ] by
                                                   (
                                                    wij , if vi vj ∈ E,
                                           aij =
                                                        0,       otherwise.

For example, Sage allows you to easily compute a weighted adjacency matrix.
sage : G = Graph ( sparse = True , weighted = True )
sage : G . add_edges ([(0 ,1 ,1) , (1 ,2 ,2) , (0 ,2 ,3) , (0 ,3 ,4)])
sage : M = G . w e i g h t e d _ a d ja c e n c y _ m a t r i x (); M
[0 1 3 4]
[1 0 2 0]
[3 2 0 0]
[4 0 0 0]



Bipartite case
Suppose G = (V, E) is an undirected bipartite graph with n = |V | vertices. Any ad-
jacency matrix A of G is symmetric and we assume that it is indexed from zero up to
n − 1, inclusive. Then there exists a permutation π of the index set {0, 1, . . . , n − 1} such
that the matrix A0 = [aπ(i)π(j) ] is also an adjacency matrix for G and has the form
                                                                     
                                                    0  0 B
                                                   A =                                                 (1.9)
                                                       BT 0

where 0 is a zero matrix. The matrix B is called a reduced adjacency matrix or a bi-
adjacency matrix (the literature also uses the terms “transfer matrix” or the ambiguous
term “adjacency matrix”). In fact, it is known [9, p.16] that any undirected graph is
bipartite if and only if there is a permutation π on {0, 1, . . . , n − 1} such that A0 (G) =
[aπ(i)π(j) ] can be written as in (1.9).
20                                                  Chapter 1. Introduction to Graph Theory

Tanner graphs
If H is an m × n (0, 1)-matrix, then the Tanner graph of H is the bipartite graph
G = (V, E) whose set of vertices V = V1 ∪V2 is partitioned into two sets: V1 corresponding
to the m rows of H and V2 corresponding to the n columns of H. For any i, j with
1 ≤ i ≤ m and 1 ≤ j ≤ n, there is an edge ij ∈ E if and only if the (i, j)-th entry of
H is 1. This matrix H is sometimes called the reduced adjacency matrix or the check
matrix of the Tanner graph. Tanner graphs are used in the theory of error-correcting
codes. For example, Sage allows you to easily compute such a bipartite graph from its
matrix.
sage : H = Matrix ([(1 ,1 ,1 ,0 ,0) , (0 ,0 ,1 ,0 ,1) , (1 ,0 ,0 ,1 ,1)])
sage : B = BipartiteGraph ( H )
sage : B . r ed u c e d_ a d j ac e n c y_ m a t ri x ()
[1 1 1 0 0]
[0 0 1 0 1]
[1 0 0 1 1]
sage : B . plot ( graph_border = True )

The corresponding graph is similar to that in Figure 1.17.
                                     1                            1



                                     2



                                     3                            2



                                     4



                                     5                            3


                                 Figure 1.17: A Tanner graph.


Theorem 1.22. Let A be the adjacency matrix of a graph G with vertex set V =
{v1 , v2 , . . . , vp }. For each positive integer n, the ij-th entry of An counts the number
of vi -vj walks of length n in G.

Proof. We shall prove by induction on n. For the base case n = 1, the ij-th entry of
A1 counts the number of walks of length 1 from vi to vj . This is obvious because A1 is
merely the adjacency matrix A.
   Suppose for induction that for some positive integer k ≥ 1, the ij-th entry of Ak
counts the number of walks of length k from vi to vj . We need to show that the ij-th
entry of Ak+1 counts the number of vi -vj walks of length k + 1. Let A = [aij ], Ak = [bij ],
and Ak+1 = [cij ]. Since Ak+1 = AAk , then
                                                  p
                                                  X
                                          cij =         air brj
                                                  r=1

for i, j = 1, 2, . . . , p. Note that air is the number of edges from vi to vr , and brj is the
number of vr -vj walks of length k. Any edge from vi to vr can be joined with any vr -vj
walk to create a walk vi , vr , . . . , vj of length k + 1. Then for each r = 1, 2, . . . , p, the
value air brj counts the number of vi -vj walks of length k + 1 with vr being the second
vertex in the walk. Thus cij counts the total number of vi -vj walks of length k + 1.
1.3. Representing graphs as matrices                                                           21

1.3.2     Incidence matrix
The relationship between edges and vertices provides a very strong constraint on the
data structure, much like the relationship between points and blocks in a combinatorial
design or points and lines in a finite plane geometry. This incidence structure gives rise
to another way to describe a graph using a matrix.
    Let G be a digraph with edge set E = {e1 , . . . , em } and vertex set V = {v1 , . . . , vn }.
The incidence matrix of G is the n × m matrix B = [bij ] defined by
                                
                                
                                  −1, if vi is the tail of ej ,
                                
                                
                                
                                1,      if vi is the head of ej ,
                          bij =                                                          (1.10)
                                
                                  2,    if e   is a self-loop at v  ,
                                
                                             j                    i
                                
                                
                                   0,    otherwise.
Each column of B corresponds to an edge and each row corresponds to a vertex. The
definition of incidence matrix of a digraph as contained in expression (1.10) is applicable
to digraphs with self-loops as well as multidigraphs.
    For the undirected case, let G be an undirected graph with edge set E = {e1 , . . . , em }
and vertex set V = {v1 , . . . , vn }. The unoriented incidence matrix of G is the n × m
matrix B = [bij ] defined by
                                    
                                    
                                     1, if vi is incident to ej ,
                                    
                           bij = 2, if ej is a self-loop at vi ,
                                    
                                    
                                    
                                      0, otherwise.
An orientation of an undirected graph G is an assignment of direction to each edge of G.
The oriented incidence matrix of G is defined similarly to the case where G is a digraph:
it is the incidence matrix of any orientation of G. For each column of B, we have 1 as
an entry in the row corresponding to one vertex of the edge under consideration and −1
as an entry in the row corresponding to the other vertex. Similarly, bij = 2 if ej is a
self-loop at vi .

1.3.3     Laplacian matrix
The degree matrix of a graph G = (V, E) is an n × n diagonal matrix D whose i-th
diagonal entry is the degree of the i-th vertex in V . The Laplacian matrix L of G is the
difference between the degree matrix and the adjacency matrix:
                                          L = D − A.
In other words, for an undirected unweighted simple graph, L = [`ij ] is given by
                                
                                
                                 −1, if i 6= j and vi vj ∈ E,
                                
                          `ij = di , if i = j,
                                
                                
                                
                                  0,   otherwise,

where di = deg(vi ) is the degree of vertex vi .
  Sage allows you to compute the Laplacian matrix of a graph:
22                                              Chapter 1. Introduction to Graph Theory

sage : G = Graph ({1:[2 ,4] , 2:[1 ,4] , 3:[2 ,6] , 4:[1 ,3] , 5:[4 ,2] , 6:[3 ,1]})
sage : G . laplacian_matrix ()
[ 3 -1 0 -1 0 -1]
[ -1 4 -1 -1 -1 0]
[ 0 -1 3 -1 0 -1]
[ -1 -1 -1 4 -1 0]
[ 0 -1 0 -1 2 0]
[ -1 0 -1 0 0 2]

There are many remarkable properties of the Laplacian matrix. It shall be discussed
further in Chapter 5.

1.3.4     Distance matrix
Recall that the distance (or geodesic distance) d(v, w) between two vertices v, w ∈ V in a
connected graph G = (V, E) is the number of edges in a shortest path connecting them.
The n × n matrix [d(vi , vj )] is the distance matrix of G. Sage helps you to compute the
distance matrix of a graph:
sage : G = Graph ({1:[2 ,4] , 2:[1 ,4] , 3:[2 ,6] , 4:[1 ,3] , 5:[4 ,2] , 6:[3 ,1]})
sage : d = [[ G . distance (i , j ) for i in range (1 ,7)] for j in range (1 ,7)]
sage : matrix ( d )
[0 1 2 1 2 1]
[1 0 1 1 1 2]
[2 1 0 1 2 1]
[1 1 1 0 1 2]
[2 1 2 1 0 3]
[1 2 1 2 3 0]

   The distance matrix is an important quantity which allows one to better understand
the “connectivity” of a graph. Distance and connectivity will be discussed in more detail
in Chapters 5 and 10.


1.4      Isomorphic graphs
Determining whether or not two graphs are, in some sense, the “same” is a hard but
important problem. Two graphs G and H are isomorphic if there is a bijection f :
V (G) −→ V (H) such that whenever uv ∈ E(G) then f (u)f (v) ∈ E(H). The function
f is an isomorphism between G and H. Otherwise, G and H are non-isomorphic. If G
and H are isomorphic, we write G ∼
                                 = H.




                            (a)                              (b)

                Figure 1.18: Two representations of the Franklin graph.

   A graph G is isomorphic to a graph H if these two graphs can be labelled in such a
way that if u and v are adjacent in G, then their counterparts in V (H) are also adjacent
1.4. Isomorphic graphs                                                                                              23

          e                    f                 1                         2                e               f




  c                                     d        3                         4        c                           d




          a                    b                 5                         6                a               b

                  (a) C6                                  (b) G1                                   (c) G2

                         Figure 1.19: Isomorphic and nonisomorphic graphs.

in H. To determine whether or not two graphs are isomorphic is to determine if they are
structurally equivalent. Graphs G and H may be drawn differently so that they seem
different. However, if G ∼      = H then the isomorphism f : V (G) −→ V (H) shows that both
of these graphs are fundamentally the same. In particular, the order and size of G are
equal to those of H, the isomorphism f preserves adjacencies, and deg(v) = deg(f (v)) for
all v ∈ G. Since f preserves adjacencies, then adjacencies along a given geodesic path are
preserved as well. That is, if v1 , v2 , v3 , . . . , vk is a shortest path between v1 , vk ∈ V (G),
then f (v1 ), f (v2 ), f (v3 ), . . . , f (vk ) is a geodesic path between f (v1 ), f (vk ) ∈ V (H). For
example, the two graphs in Figure 1.18 are isomorphic to each other.

Example 1.23. Consider the graphs in Figure 1.19. Which pair of graphs are isomor-
phic, and which two graphs are non-isomorphic?

Solution. If G is a Sage graph, one can use the method G.is_isomorphic() to determine
whether or not the graph G is isomorphic to another graph. The following Sage session
illustrates how to use G.is_isomorphic().
sage :   C6 = Graph ({ " a " :[ " b " ," c " ] , " b " :[ " a " ," d " ] , " c " :[ " a " ," e " ] , \
...      " d " :[ " b " ," f " ] , " e " :[ " c " ," f " ] , " f " :[ " d " ," e " ]})
sage :   G1 = Graph ({1:[2 ,4] , 2:[1 ,3] , 3:[2 ,6] , 4:[1 ,5] , \
...      5:[4 ,6] , 6:[3 ,5]})
sage :   G2 = Graph ({ " a " :[ " d " ," e " ] , " b " :[ " c " ," f " ] , " c " :[ " b " ," f " ] , \
...      " d " :[ " a " ," e " ] , " e " :[ " a " ," d " ] , " f " :[ " b " ," c " ]})
sage :   C6 . is_isomorphic ( G1 )
True
sage :   C6 . is_isomorphic ( G2 )
False
sage :   G1 . is_isomorphic ( G2 )
False

Thus, for the graphs C6 , G1 and G2 in Figure 1.19, C6 and G1 are isomorphic, but G1
and G2 are not isomorphic.

   An important notion in graph theory is the idea of an “invariant”. An invariant is
an object f = f (G) associated to a graph G which has the property

                                            G∼
                                             = H =⇒ f (G) = f (H).

For example, the number of vertices of a graph, f (G) = |V (G)|, is an invariant.

1.4.1         Adjacency matrices
Two n × n matrices A1 and A2 are permutation equivalent if there is a permutation
matrix P such that A1 = P A2 P −1 . In other words, A1 is the same as A2 after a suitable
24                                                  Chapter 1. Introduction to Graph Theory

re-ordering of the rows and a corresponding re-ordering of the columns. This notion of
permutation equivalence is an equivalence relation.
    To show that two undirected graphs are isomorphic depends on the following result.
Theorem 1.24. Consider two directed or undirected graphs G1 and G2 with respective
adjacency matrices A1 and A2 . Then G1 and G2 are isomorphic if and only if A1 is
permutation equivalent to A2 .
     This says that the permutation equivalence class of the adjacency matrix is an in-
variant.
     Define an ordering on the set of n×n (0, 1)-matrices as follows: we say A1 < A2 if the
list of entries of A1 is less than or equal to the list of entries of A2 in the lexicographical
ordering. Here, the list of entries of a (0, 1)-matrix is obtained by concatenating the
entries of the matrix, row-by-row. For example,
                                                     
                                         1 1      1 1
                                              <           .
                                         0 1      1 1
    Algorithm 1.1 is an immediate consequence of Theorem 1.24. The lexicographically
maximal element of the permutation equivalence class of the adjacency matrix of G is
called the canonical label of G. Thus, to check if two undirected graphs are isomorphic,
we simply check if their canonical labels are equal. This idea for graph isomorphism
checking is presented in Algorithm 1.1.

 Algorithm 1.1: Computing graph isomorphism using canonical labels.
  Input: Two undirected simple graphs G1 and G2 , each having n vertices.
  Output: True if G1 ∼
                     = G2 ; False otherwise.
 1   for i ← 1, 2 do
 2       Ai ← adjacency matrix of Gi
 3       pi ← permutation equivalence class of Ai
 4       A0i ← lexicographically maximal element of pi
 5   if A01 = A02 then
 6       return True
 7   return False



1.4.2      Degree sequence
Let G be a graph with n vertices. The degree sequence of G is the ordered n-tuple of the
vertex degrees of G arranged in non-increasing order.
    The degree sequence of G may contain the same degrees, repeated as often as they
occur. For example, the degree sequence of C6 is 2, 2, 2, 2, 2, 2 and the degree sequence
of the house graph in Figure 1.3 is 3, 3, 2, 2, 2. If n ≥ 3 then the cycle graph Cn has the
degree sequence
                                       2, 2, 2, . . . , 2 .
                                       |     {z         }
                                           n copies of 2

The path Pn , for n ≥ 3, has the degree sequence
                                      2, 2, 2, . . . , 2, 1, 1 .
                                      |         {z           }
                                         n−2 copies of 2
1.4. Isomorphic graphs                                                                        25

For positive integer values of n and m, the complete graph Kn has the degree sequence
                                    n − 1, n − 1, n − 1, . . . , n − 1
                                    |             {z                 }
                                              n copies of n−1

and the complete bipartite graph Km,n has the degree sequence
                                 n, n, n, . . . , n, m, m, m, . . . , m .
                                 |      {z         }|      {z         }
                                     m copies of n     n copies of m

    Let S be a non-increasing sequence of non-negative integers. Then S is said to be
graphical if it is the degree sequence of some graph. If G is a graph with degree sequence
S, we say that G realizes S.
    Let S = (d1 , d2 , . . . , dn ) be a graphical sequence,
                                                      P      i.e. di ≥ dj for all i ≤ j such that
1 ≤ i, j ≤ n. From Corollary 1.11 we see that di ∈S di = 2k for some integer k ≥ 0. In
other words, the sum of a graphical sequence is nonnegative and even. In 1961, Erdős
and Gallai [71] used this observation as part of a theorem that provides necessary and
sufficient conditions for a sequence to be realized by a simple graph. The result is stated
in Theorem 1.25, but the original paper of Erdős and Gallai [71] does not provide an
algorithm to construct a simple graph with a given degree sequence. For a simple graph
that has a degree sequence with repeated elements, e.g. the degree sequences of Cn ,
Pn , Kn , and Km,n , it is redundant to verify inequality (1.11) for repeated elements of
that sequence. In 2003, Tripathi and Vijay [189] showed that one only needs to verify
inequality (1.11) for as many times as there are distinct terms in S.
Theorem 1.25. Erdős & Gallai 1961 [71]. Let d = (d1 , d2 , . . . , dn ) be a sequence
   positive integers such that di ≥ di+1 . Then d is realized by a simple graph if and only
of P
if i di is even and
                            Xk                   Xn
                                di ≤ k(k + 1) +       min{k, di }                    (1.11)
                              i=1                       j=k+1

for all 1 ≤ k ≤ n − 1.
    As noted above, Theorem 1.25 is an existence result showing that something ex-
ists without providing a construction of the object under consideration. Havel [97] and
Hakimi [94,95] independently provided an algorithmic approach that allows for construct-
ing a simple graph with a given degree sequence. See Sierksma and Hoogeveen [178] for
a coverage of seven criteria for a sequence of integers to be graphic. See Erdős et al. [74]
for an extension of the Havel-Hakimi theorem to digraphs.
Theorem 1.26. Havel 1955 [97] & Hakimi 1962–3 [94, 95]. Consider the non-
increasing sequence S1 = (d1 , d2 , . . . , dn ) of nonnegative integers, where n ≥ 2 and d1 ≥ 1.
Then S1 is graphical if and only if the sequence
                     S2 = (d2 − 1, d3 − 1, . . . , dd1 +1 − 1, dd1 +2 , . . . , dn )
is graphical.
Proof. Suppose S2 is graphical. Let G2 = (V2 , E2 ) be a graph of order n − 1 with vertex
set V2 = {v2 , v3 , . . . , vn } such that
                                            (
                                             di − 1, if 2 ≤ i ≤ d1 + 1,
                                 deg(vi ) =
                                             di ,    if d1 + 2 ≤ i ≤ n.
26                                                   Chapter 1. Introduction to Graph Theory

Construct a new graph G1 with degree sequence S1 as follows. Add another vertex v1
to V2 and add to E2 the edges v1 vi for 2 ≤ i ≤ d1 + 1. It is clear that deg(v1 ) = d1 and
deg(vi ) = di for 2 ≤ i ≤ n. Thus G1 has the degree sequence S1 .
   On the other hand, suppose S1 is graphical and let G1 be a graph with degree sequence
S1 such that

  (i) The graph G1 has the vertex set V (G1 ) = {v1 , v2 , . . . , vn } and deg(vi ) = di for
      i = 1, . . . , n.

 (ii) The degree sum of all vertices adjacent to v1 is a maximum.

To obtain a contradiction, suppose v1 is not adjacent to vertices having degrees

                                       d2 , d3 , . . . , dd1 +1 .

Then there exist vertices vi and vj with dj > di such that v1 vi ∈ E(G1 ) but v1 vj 6∈ E(G1 ).
As dj > di , there is a vertex vk such that vj vk ∈ E(G1 ) but vi vk 6∈ E(G1 ). Replacing the
edges v1 vi and vj vk with v1 vj and vi vk , respectively, results in a new graph H whose degree
sequence is S1 . However, the graph H is such that the degree sum of vertices adjacent to
v1 is greater than the corresponding degree sum in G1 , contradicting property (ii) in our
choice of G1 . Consequently, v1 is adjacent to d1 other vertices of largest degree. Then
S2 is graphical because G1 − v1 has degree sequence S2 .
    The proof of Theorem 1.26 can be adapted into an algorithm to determine whether
or not a sequence of nonnegative integers can be realized by a simple graph. If G is
a simple graph, the degree of any vertex in V (G) cannot exceed the order of G. By
the handshaking lemma (Theorem 1.9), the sum of all terms in the sequence cannot be
odd. Once the sequence passes these two preliminary tests, we then adapt the proof of
Theorem 1.26 to successively reduce the original sequence to a smaller sequence. These
ideas are summarized in Algorithm 1.2.

 Algorithm 1.2: Havel-Hakimi test for sequences realizable by simple graphs.
   Input: A nonincreasing sequence S = (d1 , d2 , . . . , dn ) of nonnegative integers,
            where n ≥ 2.
   Output: True if S is realizable by a simple graph; False otherwise.
      P
 1 if   i di is odd then
 2    return False
 3 while True do
 4    if min(S) < 0 then
 5         return False
 6    if max(S) = 0 then
 7         return True
 8    if max(S) > length(S) − 1 then
 9         return False
10    S ← (d2 − 1, d3 − 1, . . . , dd1 +1 − 1, dd1 +2 , . . . , dlength(S) )
11    sort S in nonincreasing order


    We now show that Algorithm 1.2 determines whether or not a sequence of integers
is realizable by a simple graph. Our input is a sequence S = (d1 , d2 , . . . , dn ) arranged
1.5. New graphs from old                                                                   27

in non-increasing order, where each di ≥ 0. The first test as contained in the if block,
otherwise known as a conditional, on line 1 uses the handshaking lemma (Theorem 1.9).
During the first run of the while loop, the conditional on line 4 ensures that the sequence
S only consists of nonnegative integers. At the conditional on line 6, we know that S
is arranged in non-increasing order and has nonnegative integers. If this conditional
holds true, then S is a sequence of zeros and it is realizable by a graph with only isolated
vertices. Such a graph is simple by definition. The conditional on line 8 uses the following
property of simple graphs: If G is a simple graph, then the degree of each vertex of G
is less than the order of G. By the time we reach line 10, we know that S has n terms,
max(S) > 0, and 0 ≤ di ≤ n − 1 for all i = 1, 2, . . . , n. After applying line 10, S is now a
sequence of n − 1 terms with max(S) > 0 and 0 ≤ di ≤ n − 2 for all i = 1, 2, . . . , n − 1. In
general, after k rounds of the while loop, S is a sequence of n − k terms with max(S) > 0
and 0 ≤ di ≤ n − k − 1 for all i = 1, 2, . . . , n − k. And after n − 1 rounds of the while
loop, the resulting sequence has one term whose value is zero. In other words, eventually
Algorithm 1.2 produces a sequence with a negative term or a sequence of zeros.

1.4.3     Invariants revisited
In some cases, one can distinguish non-isomorphic graphs by considering graph invariants.
For instance, the graphs C6 and G1 in Figure 1.19 are isomorphic so they have the same
number of vertices and edges. Also, G1 and G2 in Figure 1.19 are non-isomorphic because
the former is connected, while the latter is not connected. To prove that two graphs
are non-isomorphic, one could show that they have different values for a given graph
invariant. The following list contains some items to check off when showing that two
graphs are non-isomorphic:

  1. the number of vertices,

  2. the number of edges,

  3. the degree sequence,

  4. the length of a geodesic path,

  5. the length of the longest path,

  6. the number of connected components of a graph.


1.5      New graphs from old
This section provides a brief survey of operations on graphs to obtain new graphs from
old graphs. Such graph operations include unions, products, edge addition, edge deletion,
vertex addition, and vertex deletion. Several of these are briefly described below.

1.5.1     Union, intersection, and join
The disjoint union of graphs is defined as follows. For two graphs G1 = (V1 , E1 ) and
G2 = (V2 , E2 ) with disjoint vertex sets, their disjoint union is the graph

                               G1 ∪ G2 = (V1 ∪ V2 , E1 ∪ E2 ).
28                                                    Chapter 1. Introduction to Graph Theory

For example, Figure 1.20 shows the vertex disjoint union of the complete bipartite graph
K1,5 with the wheel graph W4 . The adjacency matrix A of the disjoint union of two
graphs G1 and G2 is the diagonal block matrix obtained from the adjacency matrices A1
and A2 , respectively. Namely,                  
                                          A1 0
                                   A=              .
                                          0 A2
Sage can compute graph unions, as the following example shows.
sage : G1 = Graph ({1:[2 ,4] , 2:[1 ,3] , 3:[2 ,6] , 4:[1 ,5] , 5:[4 ,6] , 6:[3 ,5]})
sage : G2 = Graph ({7:[8 ,10] , 8:[7 ,10] , 9:[8 ,12] , 10:[7 ,9] , 11:[10 ,8] , 12:[9 ,7]})
sage : G1u2 = G1 . union ( G2 )
sage : G1u2 . adjacency_matrix ()
[0 1 0 1 0 0 0 0 0 0 0 0]
[1 0 1 0 0 0 0 0 0 0 0 0]
[0 1 0 0 0 1 0 0 0 0 0 0]
[1 0 0 0 1 0 0 0 0 0 0 0]
[0 0 0 1 0 1 0 0 0 0 0 0]
[0 0 1 0 1 0 0 0 0 0 0 0]
[0 0 0 0 0 0 0 1 0 1 0 1]
[0 0 0 0 0 0 1 0 1 1 1 0]
[0 0 0 0 0 0 0 1 0 1 0 1]
[0 0 0 0 0 0 1 1 1 0 1 0]
[0 0 0 0 0 0 0 1 0 1 0 0]
[0 0 0 0 0 0 1 0 1 0 0 0]

In the case where V1 = V2 , then G1 ∪ G2 is simply the graph consisting of all edges in G1
or in G2 . In general, the union of two graphs G1 = (V1 , E1 ) and G2 = (V2 , E2 ) is defined
as
                               G1 ∪ G2 = (V1 ∪ V2 , E1 ∪ E2 )
where V1 ⊆ V2 , V2 ⊆ V1 , V1 = V2 , or V1 ∩ V2 = ∅. Figure 1.21(c) illustrates the graph
union where one vertex set is a proper subset of the other. If G1 , G2 , . . . , Gn are the
components
        S of a graph G, then G is obtained by the disjoint union of its components,
i.e. G = Gi .




                      Figure 1.20: The vertex disjoint union K1,5 ∪ W4 .


                                       3                        3
               3                                                                      3
                             1                    2    1                 2
                                       4                        4
               4                                                                      4

         1             2         5            6            5        6        1                 2

             (a) G1                  (b) G2                (c) G1 ∪ G2           (d) G1 ∩ G2

     Figure 1.21: The union and intersection of graphs with overlapping vertex sets.
   The intersection of graphs is defined as follows. For two graphs G1 = (V1 , E1 ) and
G2 = (V2 , E2 ), their intersection is the graph
                                 G1 ∩ G2 = (V1 ∩ V2 , E1 ∩ E2 ).
1.5. New graphs from old                                                                    29

Figure 1.21(d) illustrates the intersection of two graphs whose vertex sets overlap.
   The symmetric difference of graphs is defined as follows. For two graphs G1 = (V1 , E1 )
and G2 = (V2 , E2 ), their symmetric difference is the graph
                                          G1 ∆G2 = (V, E)
where V = V1 ∆V2 and the edge set is given by
                    E = (E1 ∆E2 )\{uv | u ∈ V1 ∩ V2          or v ∈ V1 ∩ V2 }.
Recall that the symmetric difference of two sets S1 and S2 is defined by
                             S1 ∆S2 = {x ∈ S1 ∪ S2 | x ∈
                                                       / S1 ∩ S2 }.
In the case where V1 = V2 , then G1 ∆G2 is simply the empty graph. See Figure 1.22 for
an illustration of the symmetric difference of two graphs.

                                                5
                                                                            5
                    3

                                                                    9                7
                                      7         9        3


                    4


            1                2                  1                       2        4

                 (a) G1                       (b) G2                    (c) G1 ∆G2

                        Figure 1.22: The symmetric difference of graphs.

    The join of two disjoint graphs G1 and G2 , denoted G1 +G2 , is their graph union, with
each vertex of one graph connecting to each vertex of the other graph. For example, the
join of the cycle graph Cn−1 with a single vertex graph is the wheel graph Wn . Figure 1.23
shows various wheel graphs.

1.5.2     Edge or vertex deletion/insertion
Vertex deletion subgraph
If G = (V, E) is any graph with at least 2 vertices, then the vertex deletion subgraph is
the subgraph obtained from G by deleting a vertex v ∈ V and also all the edges incident
to that vertex. The vertex deletion subgraph of G is sometimes denoted G − {v}. Sage
can compute vertex deletions, as the following example shows.
sage : G = Graph ({1:[2 ,4] , 2:[1 ,4] , 3:[2 ,6] , 4:[1 ,3] , 5:[4 ,2] , 6:[3 ,1]})
sage : G . vertices ()
[1 , 2 , 3 , 4 , 5 , 6]
sage : E1 = Set ( G . edges ( labels = False )); E1
{(1 , 2) , (4 , 5) , (1 , 4) , (2 , 3) , (3 , 6) , (1 , 6) , (2 , 5) , (3 , 4) , (2 , 4)}
sage : E4 = Set ( G . edges_incident ( vertices =[4] , labels = False )); E4
{(4 , 5) , (3 , 4) , (2 , 4) , (1 , 4)}
sage : G . delete_vertex (4)
sage : G . vertices ()
[1 , 2 , 3 , 5 , 6]
sage : E2 = Set ( G . edges ( labels = False )); E2
{(1 , 2) , (1 , 6) , (2 , 5) , (2 , 3) , (3 , 6)}
sage : E1 . difference ( E2 ) == E4
True

Figure 1.24 presents a sequence of subgraphs obtained by repeatedly deleting vertices.
As the figure shows, when a vertex is deleted from a graph, all edges incident on that
vertex are deleted as well.
30                                                 Chapter 1. Introduction to Graph Theory




             (a) W4                          (b) W5                                (c) W6




             (d) W7                         (e) W8                                 (f) W9

                     Figure 1.23: The wheel graphs Wn for n = 4, . . . , 9.

             c                                                        c




         b
     a                                       e        a                                     e




             d                                                        d

                      (a) G                                                (b) G − {b}

                 c                                               c




                                                  e




                 d                                               d

                           (c) G − {a, b}                            (d) G − {a, b, e}




                                       (e) G − {a, b, c, d, e}

         Figure 1.24: Obtaining subgraphs via repeated vertex deletion.
1.5. New graphs from old                                                                            31

Edge deletion subgraph
If G = (V, E) is any graph with at least 1 edge, then the edge deletion subgraph is the
subgraph obtained from G by deleting an edge e ∈ E, but not the vertices incident to
that edge. The edge deletion subgraph of G is sometimes denoted G − {e}. Sage can
compute edge deletions, as the following example shows.
sage : G = Graph ({1:[2 ,4] , 2:[1 ,4] , 3:[2 ,6] , 4:[1 ,3] , 5:[4 ,2] , 6:[3 ,1]})
sage : E1 = Set ( G . edges ( labels = False )); E1
{(1 , 2) , (4 , 5) , (1 , 4) , (2 , 3) , (3 , 6) , (1 , 6) , (2 , 5) , (3 , 4) , (2 , 4)}
sage : V1 = G . vertices (); V1
[1 , 2 , 3 , 4 , 5 , 6]
sage : E14 = Set ([(1 ,4)]); E14
{(1 , 4)}
sage : G . delete_edge ([1 ,4])
sage : E2 = Set ( G . edges ( labels = False )); E2
{(1 , 2) , (4 , 5) , (2 , 3) , (3 , 6) , (1 , 6) , (2 , 5) , (3 , 4) , (2 , 4)}
sage : E1 . difference ( E2 ) == E14
True

Figure 1.25 shows a sequence of graphs resulting from edge deletion. Unlike vertex
deletion, when an edge is deleted the vertices incident on that edge are left intact.

                 b                              b                                 b




      c                    a          c                    a         c                          a

               (a) G                      (b) G − {ac}                   (c) G − {ab, ac, bc}

              Figure 1.25: Obtaining subgraphs via repeated edge deletion.


Vertex cut, cut vertex, or cutpoint
A vertex cut (or separating set) of a connected graph G = (V, E) is a subset W ⊆ V
such that the vertex deletion subgraph G − W is disconnected. In fact, if v1 , v2 ∈ V are
two non-adjacent vertices, then you can ask for a vertex cut W for which v1 , v2 belong
to different components of G − W . Sage’s vertex_cut method allows you to compute a
minimal cut having this property. For many connected graphs, the removal of a single
vertex is sufficient for the graph to be disconnected (see Figure 1.25(c)).

Edge cut, cut edge, or bridge
If deleting a single, specific edge would disconnect a graph G, that edge is called a
bridge. More generally, the edge cut (or disconnecting set or seg) of a connected graph
G = (V, E) is a set of edges F ⊆ E whose removal yields an edge deletion subgraph
G − F that is disconnected. A minimal edge cut is called a cut set or a bond . In fact, if
v1 , v2 ∈ V are two vertices, then you can ask for an edge cut F for which v1 , v2 belong
to different components of G − F . Sage’s edge_cut method allows you to compute a
minimal cut having this property. For example, any of the three edges in Figure 1.25(c)
qualifies as a bridge and those three edges form an edge cut for the graph in question.
Theorem 1.27. Let G be a connected graph. An edge e ∈ E(G) is a bridge of G if and
only if e does not lie on a cycle of G.
32                                                                  Chapter 1. Introduction to Graph Theory

Proof. First, assume that e = uv is a bridge of G. Suppose for contradiction that e lies
on a cycle
                               C : u, v, w1 , w2 , . . . , wk , u.
Then G − e contains a u-v path u, wk , . . . , w2 , w1 , v. Let u1 , v1 be any two vertices in
G − e. By hypothesis, G is connected so there is a u1 -v1 path P in G. If e does not lie
on P , then P is also a path in G − e so that u1 , v1 are connected, which contradicts our
assumption of e being a bridge. On the other hand, if e lies on P , then express P as

                                 u1 , . . . , u, v, . . . , v1   or u1 , . . . , v, u, . . . , v1 .

Now

          u1 , . . . , u, wk , . . . , w2 , w1 , v, . . . , v1   or u1 , . . . , v, w1 , w2 , . . . , wk , u, . . . , v1

respectively is a u1 -v1 walk in G − e. By Theorem 1.15, G − e contains a u1 -v1 path,
which contradicts our assumption about e being a bridge.
    Conversely, let e = uv be an edge that does not lie on any cycles of G. If G − e has no
u-v paths, then we are done. Otherwise, assume for contradiction that G − e has a u-v
path P . Then P with uv produces a cycle in G. This cycle contains e, in contradiction
of our assumption that e does not lie on any cycles of G.

Edge contraction
An edge contraction is an operation which, like edge deletion, removes an edge from a
graph. However, unlike edge deletion, edge contraction also merges together the two
vertices the edge used to connect. For a graph G = (V, E) and an edge uv = e ∈ E, the
edge contraction G/e is the graph obtained as follows:
     1. Delete the vertices u, v from G.
     2. In place of u, v is a new vertex ve .
  3. The vertex ve is adjacent to vertices that were adjacent to u, v, or both u and v.
                                                                  
The vertex set of G/e = (V 0 , E 0 ) is defined as V 0 = V \{u, v} ∪ {ve } and its edge set is
                                                 
    E 0 = wx ∈ E | {w, x} ∩ {u, v} = ∅ ∪ ve w | uw ∈ E\{e} or vw ∈ E\{e} .

Make the substitutions
                                     
                                 E1 = wx ∈ E | {w, x} ∩ {u, v} = ∅
                                     
                                 E2 = ve w | uw ∈ E\{e} or vw ∈ E\{e} .

Let G be the wheel graph W6 in Figure 1.26(a) and consider the edge contraction G/ab,
where ab is the gray colored edge in that figure. Then the edge set E1 denotes all those
edges in G each of which is not incident on a, b, or both a and b. These are precisely
those edges that are colored red. The edge set E2 means that we consider those edges in
G each of which is incident on exactly one of a or b, but not both. The blue colored edges
in Figure 1.26(a) are precisely those edges that E2 suggests for consideration. The result
of the edge contraction G/ab is the wheel graph W5 in Figure 1.26(b). Figures 1.26(a)
to 1.26(f) present a sequence of edge contractions that starts with W6 and repeatedly
contracts it to the trivial graph K1 .
1.5. New graphs from old                                                                                       33

                                                      d
                   d
                                                                                       d

                                                          f
     e                            c
                       f               e                            c
                                                                                           f



          a                 b                             vab = g           e                        vcg = h

                 (a) G1                        (b) G2 = G1 /ab                     (c) G3 = G2 /cg

                   f




      e                          vdh = i   e                            vf i = j               vej

               (d) G4 = G3 /dh                      (e) G5 = G4 /f i                 (f) G6 = G5 /ej

          Figure 1.26: Contracting the wheel graph W6 to the trivial graph K1 .

1.5.3         Complements
The complement of a simple graph has the same vertices, but exactly those edges that
are not in the original graph. In other words, if Gc = (V, E c ) is the complement of
G = (V, E), then two distinct vertices v, w ∈ V are adjacent in Gc if and only if they are
not adjacent in G. We also write the complement of G as G. The sum of the adjacency
matrix of G and that of Gc is the matrix with 1’s everywhere, except for 0’s on the
main diagonal. A simple graph that is isomorphic to its complement is called a self-
complementary graph. Let H be a subgraph of G. The relative complement of G and H
is the edge deletion subgraph G − E(H). That is, we delete from G all edges in H. Sage
can compute edge complements, as the following example shows.
sage : G = Graph ({1:[2 ,4] , 2:[1 ,4] , 3:[2 ,6] , 4:[1 ,3] , 5:[4 ,2] , 6:[3 ,1]})
sage : Gc = G . complement ()
sage : EG = Set ( G . edges ( labels = False )); EG
{(1 , 2) , (4 , 5) , (1 , 4) , (2 , 3) , (3 , 6) , (1 , 6) , (2 , 5) , (3 , 4) , (2 , 4)}
sage : EGc = Set ( Gc . edges ( labels = False )); EGc
{(1 , 5) , (2 , 6) , (4 , 6) , (1 , 3) , (5 , 6) , (3 , 5)}
sage : EG . difference ( EGc ) == EG
True
sage : EGc . difference ( EG ) == EGc
True
sage : EG . intersection ( EGc )
{}


Theorem 1.28. If G = (V, E) is self-complementary, then the order of G is |V | = 4k
or |V | = 4k + 1 for some nonnegative integer k. Furthermore, if n = |V | is the order of
G, then the size of G is |E| = n(n − 1)/4.
Proof. Let G be a self-complementary graph of order n. Each of G and Gc contains half
the number of edges in Kn . From (1.6), we have
                                                     1 n(n − 1)   n(n − 1)
                           |E(G)| = |E(Gc )| =         ·        =          .
                                                     2    2          4
34                                                    Chapter 1. Introduction to Graph Theory

Then n | n(n − 1), with one of n and n − 1 being even and the other odd. If n is even,
n − 1 is odd so gcd(4, n − 1) = 1, hence by [177, Theorem 1.9] we have 4 | n and so
n = 4k for some nonnegative k ∈ Z. If n − 1 is even, use a similar argument to conclude
that n = 4k + 1 for some nonnegative k ∈ Z.
Theorem 1.29. A graph and its complement cannot be both disconnected.
Proof. If G is connected, then we are done. Without loss of generality, assume that G
is disconnected and let G be the complement of G. Let u, v be vertices in G. If u, v
are in different components of G, then they are adjacent in G. If both u, v belong to
some component Ci of G, let w be a vertex in a different component Cj of G. Then u, w
are adjacent in G, and similarly for v and w. That is, u and v are connected in G and
therefore G is connected.

1.5.4          Cartesian product
The Cartesian product GH of graphs G and H is a graph such that the vertex set of
GH is the Cartesian product
                                      V (GH) = V (G) × V (H).
Any two vertices (u, u0 ) and (v, v 0 ) are adjacent in GH if and only if either
     1. u = v and u0 is adjacent with v 0 in H; or
     2. u0 = v 0 and u is adjacent with v in G.
The vertex set of GH is V (GH) and the edge set of GH is
                                                           
                   E(GH) = V (G) × E(H) ∪ E(G) × V (H) .
Sage can compute Cartesian products, as the following example shows.
sage : Z = graphs . CompleteGraph (2); len ( Z . vertices ()); len ( Z . edges ())
2
1
sage : C = graphs . CycleGraph (5); len ( C . vertices ()); len ( C . edges ())
5
5
sage : P = C . cartesian_product ( Z ); len ( P . vertices ()); len ( P . edges ())
10
15

    The path graph Pn is a tree with n vertices V = {v1 , v2 , . . . , vn } and edges E =
{(vi , vi+1 ) | 1 ≤ i ≤ n − 1}. In this case, deg(v1 ) = deg(vn ) = 1 and deg(vi ) = 2 for
1 < i < n. The path graph Pn can be obtained from the cycle graph Cn by deleting
one edge of Cn . The ladder graph Ln is the Cartesian product of path graphs, i.e.
Ln = Pn P1 .
    The Cartesian product of two graphs G1 and G2 can be visualized as follows. Let V1 =
{u1 , u2 , . . . , um } and V2 = {v1 , v2 , . . . , vn } be the vertex sets of G1 and G2 , respectively.
Let H1 , H2 , . . . , Hn be n copies of G1 . Place each Hi at the location of vi in G2 . Then
ui ∈ V (Hj ) is adjacent to ui ∈ V (Hk ) if and only if vjk ∈ E(G2 ). See Figure 1.27 for an
illustration of obtaining the Cartesian product of K3 and P3 .
    The hypercube graph Qn is the n-regular graph having vertex set
                                           
                                   V = (1 , . . . , n ) | i ∈ {0, 1}
of cardinality 2n . That is, each vertex of Qn is a bit string of length n. Two vertices
v, w ∈ V are connected by an edge if and only if v and w differ in exactly one coordinate.5
     5
         In other words, the Hamming distance between v and w is equal to 1.
1.5. New graphs from old                                                                    35




                           (a) K3              (b) P3           (c) K3 P3

                    Figure 1.27: The Cartesian product of K3 and P3 .

The Cartesian product of n edge graphs K2 is a hypercube:
                                          (K2 )n = Qn .
Figure 1.28 illustrates the hypercube graphs Qn for n = 1, . . . , 4.




    (a) Q1      (b) Q2              (c) Q3                               (d) Q4

                   Figure 1.28: Hypercube graphs Qn for n = 1, . . . , 4.

Example 1.30. The Cartesian product of two hypercube graphs is another hypercube,
i.e. Qi Qj = Qi+j .
    Another family of graphs that can be constructed via Cartesian product is the mesh.
Such a graph is also referred to as grid or lattice. The 2-mesh is denoted M (m, n) and
is defined as the Cartesian product M (m, n) = Pm Pn . Similarly, the 3-mesh is defined
as M (k, m, n) = Pk Pm Pn . In general, for a sequence a1 , a2 , . . . , an of n > 0 positive
integers, the n-mesh is given by
                          M (a1 , a2 , . . . , an ) = Pa1 Pa2  · · · Pan
where the 1-mesh is simply the path graph M (k) = Pk for some positive integer k.
Figure 1.29(a) illustrates the 2-mesh M (3, 4) = P3 P4 , while the 3-mesh M (3, 2, 3) =
P3 P2 P3 is presented in Figure 1.29(b).
36                                              Chapter 1. Introduction to Graph Theory




                          (a) M (3, 4)               (b) M (3, 2, 3)

              Figure 1.29: The 2-mesh M (3, 4) and the 3-mesh M (3, 2, 3).

1.5.5     Graph minors
A graph H is called a minor of a graph G if H is isomorphic to a graph obtained by a
sequence of edge contractions on a subgraph of G. The order in which a sequence of such
contractions is performed on G does not affect the resulting graph H. A graph minor is
not in general a subgraph. However, if G1 is a minor of G2 and G2 is a minor of G3 , then
G1 is a minor of G3 . Therefore, the relation “being a minor of” is a partial ordering on
the set of graphs. For example, the graph in Figure 1.26(c) is a minor of the graph in
Figure 1.26(a).
   The following non-intuitive fact about graph minors was proven by Neil Robertson
and Paul Seymour in a series of 20 papers spanning 1983 to 2004. This result is known
by various names including the Robertson-Seymour theorem, the graph minor theorem,
or Wagner’s conjecture (named after Klaus Wagner).
Theorem 1.31. Robertson & Seymour 1983–2004. If an infinite list G1 , G2 , . . .
of finite graphs is given, then there always exist two indices i < j such that Gi is a minor
of Gj .
    Many classes of graphs can be characterized by forbidden minors: a graph belongs
to the class if and only if it does not have a minor from a certain specified list. We shall
see examples of this in Chapter 7.


1.6      Common applications




                   (a) 2,4,4-trimethylheptane                 (b) naphthalene

                           Figure 1.30: Two molecular graphs.

Graph theory, and especially undirected graphs, is used in chemistry to study the struc-
ture of molecules. The graph theoretical representation of the structure of a molecule
1.6. Common applications                                                                    37

is called a molecular graph; two such examples are illustrated in Figure 1.30. Below we
list a few common problems arising in applications of graph theory. See Foulds [80] and
Walther [194] for surveys of applications of graph theory in science, engineering, social
sciences, economics, and operation research.

   ˆ If the edge weights are all nonnegative, find a “cheapest” closed path which contains
     all the vertices. This is related to the famous traveling salesman problem and is
     further discussed in Chapters 2 and 6.

   ˆ Find a walk that visits each vertex, but contains as few edges as possible and
     contains no cycles. This type of problem is related to spanning trees and is discussed
     in further details in Chapter 3.

   ˆ Determine which vertices are “more central” than others. This is connected with
     various applications to social network analysis and is covered in more details in
     Chapters 5 and 10. An example of a social network is shown in Figure 1.31, which
     illustrates the marriage ties among Renaissance Florentine families [32]. Note that
     one family has been removed because its inclusion would create a disconnected
     graph.

                          Pazzi                Salviati         Barbadori




     Ginori           Albizzi                  Medici     Ridolfi



                                  Acciaiuol               Strozzi              Castellan


    Lambertes                                 Tornabuon


                     Guadagni                             Bischeri                Peruzzi




              Figure 1.31: Marriage ties among Renaissance Florentine families.

   ˆ A planar graph is a graph that can be drawn on the plane in such a way that its
     edges intersect only at their endpoints. Can a graph be drawn entirely in the plane,
     with no crossing edges? In other words, is a given graph planar? This problem is
     important for designing computer chips and wiring diagrams. Further discussion
     is contained in Chapter 7.

   ˆ Can you label or color all the vertices of a graph in such a way that no adjacent
     vertices have the same color? If so, this is called a vertex coloring. Can you label
     or color all the edges of a graph in such a way that no incident edges have the same
     color? If so, this is called an edge coloring. Figure 1.32(a) shows a vertex coloring
     of the wheel graph W4 using two colors; Figure 1.32(b) shows a vertex coloring
     of the Petersen graph using three colors. Graph coloring has several remarkable
     applications, one of which is to scheduling of jobs relying on a shared resource.
     This is discussed further in Chapter 8.
38                                              Chapter 1. Introduction to Graph Theory




                        (a)                             (b)

                  Figure 1.32: Vertex coloring with two and three colors.


     ˆ In some fields, such as operations research, a directed graph with nonnegative edge
       weights is called a network , the vertices are called nodes, the edges are called arcs,
       and the weight on an edge is called its capacity. A network flow must satisfy
       the restriction that the amount of flow into a node equals the amount of flow out
       of it, except when it is a source node, which has more outgoing flow, or a sink
       node, which has more incoming flow. The flow along an edge must not exceed the
       capacity. What is the maximum flow on a network and how to you find it? This
       problem, which has many industrial applications, is discussed in Chapter 9.



1.7       Application: finite automata
In theoretical computer science, automata are used as idealized mathematical models
of computation. The studies of computability (i.e. what can be computed) and com-
plexity (i.e. the time and space requirements of a computation) are based on automata
theory to provide precise mathematical models of computers. For an intuitive appreci-
ation of automata, consider a vending machine that dispenses food or beverages. We
insert a fixed amount of money into the vending machine and make our choice of food
or beverage by pressing buttons that correspond to our choice. If the amount of money
inserted is sufficient to cover the cost of our choice of food or beverage, the machine
dispenses the item of our choice. Otherwise we need to insert more money until the
required amount is reached and then make our selection again. Embodied in the above
vending machine example are notions of input (money), machine states (has a selection
been made? has sufficient money been inserted?), state transition (move from money
insertion state to food/beverage selection state), and output (dispense item of choice).
    In the above vending machine example, we should note that the vending machine
only accepts a finite number of objects as legitimate input. The vending machine can
accept dollar bills and coins of a fixed variety of denominations and belonging to a specific
locale, e.g. Australia. Thus we say that the vending machine has finite input and the
automaton that models the vending machine is referred to as a finite automaton having
a finite alphabet.
1.7. Application: finite automata                                                          39

                                      δ  20¢  50¢
                                     0¢  20¢  50¢
                                    20¢  40¢  70¢
                                    40¢  60¢  90¢
                                    50¢  70¢ ≥ $1
                                    60¢  80¢ ≥ $1
                                    70¢  90¢ ≥ $1
                                    80¢ ≥ $1 ≥ $1
                                    90¢ ≥ $1 ≥ $1
                                    ≥ $1 ≥ $1 ≥ $1
                Table 1.1: Transition table of a simple vending machine.

1.7.1     Automaton and language
Before presenting a precise definition of finite automata, we take a detour to describe
notations associated with valid input to finite automata. Let Σ be a nonempty finite
alphabet. By Σ∗ we mean the set of all finite strings over Σ. Each element of Σ∗ is a
string or word of finite length whose components are elements of Σ. That is, if w ∈ Σ∗
then w = w1 w2 · · · wn for some integer n ≥ 0 and each wi ∈ Σ. It follows that Σ ⊆ Σ∗ .
We also consider the empty string ε as a valid string over Σ. The string ε is sometimes
called the null string.
Definition 1.32. Finite automata. Let Q and Σ be nonempty finite sets. A finite
automaton is a 5-tuple A = (Q, Σ, δ, q0 , F ) where
  1. Q is a finite set of states.
  2. Σ is a finite set of input alphabet.
  3. δ : Q × Σ −→ Q is the transition function.
  4. q0 ∈ Q is the start or initial state.
  5. F ⊆ Q is the set of accepting or final states.
    For each possible combination of state and input symbol, the transition function δ
specifies exactly one subsequent or next state. The finite automaton A must have at least
one initial state, but this lower bound does not necessarily apply to its set of final states.
It is possible that the set of final states be empty, in which case A has no accepting
states.
Example 1.33. Figure 1.33 illustrates a finite-automaton representation of a basic vend-
ing machine. The initial state is depicted as a circle with an arrow pointing to it, with
no other state at the tail of the arrow. The final state is shown as a circle with two
concentric rings. We can consider the visual representation in Figure 1.33, also called
a state diagram, as a multidigraph where each vertex is a state and each directed edge
is a transition from one state to another. The state diagram can also be represented in
tabular form as shown in Table 1.1.
   Let q1 , q2 ∈ Q. The finite-state automaton A is said to be a deterministic finite-state
automaton (DFA) if for all (q, a) ∈ Q × Σ, the mappings (q, a) 7→ q1 and (q, a) 7→ q2
imply that q1 = q2 . Furthermore, for each state q ∈ Q and each input symbol a ∈ Σ, we
have (q, a) 7→ q 0 for some q 0 ∈ Q. In other words |δ(q, a)| = 1.
40                                                             Chapter 1. Introduction to Graph Theory

                                                         20¢                  20¢
                                         20¢                       40¢                     60¢

                                                                                                       20¢
                           20¢
                                       50¢                     50¢

                                                                                                             80¢

                                                         20¢              50¢
                      0¢                 70¢                       90¢

                                                                                    20¢
                                 20¢                     20¢
                                                               50¢
                           50¢
                                               50¢                                               50¢


                                         50¢                       ≥ $1
                                                         50¢


                                                               20¢, 50¢



                  Figure 1.33: State diagram of a simple vending machine.

Definition 1.34. Nondeterministic finite-state automata. A nondeterministic
finite-state automaton (NFA) is a 5-tuple A = (Q, Σ, δ, Q0 , F ) where

     1. Q is a finite set of states.
     2. Σ is a finite set of input alphabet.
     3. δ is a transition function defined by δ : Q × Σ −→ 2Q , where 2Q is the power set
        of Q.
     4. Q0 ⊆ Q is a set of initial states.
     5. F ⊆ Q is a set of accepting or final states.

   Intuitively, A is said to be an NFA if there exist some (q, a) ∈ Q × Σ and q1 , q2 ∈ Q
such that the transitions (q, a) 7→ q1 and (q, a) 7→ q2 imply q1 6= q2 . That is, correspond-
ing to each state/input pair is a multitude of subsequent states. Note the contrast to
DFA, where it is required that each state/input pair has at most one subsequent state.

Example 1.35. Let A = (Q, Σ, δ, q0 , F ) be defined by Q = {1, 2}, Σ = {a, b}, q0 = 1,
F = {2} and the transition function δ given by

                     δ(1, a) = 1,       δ(1, b) = 2,            δ(2, a) = 2,              δ(2, b) = 2.

Figure 1.34 shows a digraph representation of A. It is easily verifiable by definition that
A is indeed a DFA.


                                                     a                    Σ



                                                     1                    2
                                                               b


                     Figure 1.34: A deterministic finite-state automaton.
1.7. Application: finite automata                                                             41

Example 1.36. Let A = (Q, Σ, δ, Q0 , F ) be defined by Q = {1, 2}, Σ = {a, b}, Q0 = {1},
F = {2}, and the transition function δ given by
                   δ(1, a) = 1,   δ(1, a) = 2,        δ(2, a) = 2,          δ(2, b) = 2.
Figure 1.35 shows a digraph representation of A. Note that δ(1, a) = 1 and δ(1, a) = 2.
It follows by definition that A is an NFA.

                                          a                    Σ



                                          1                    2
                                                      a



                 Figure 1.35: A nondeterministic finite-state automaton.

    We can inductively define a transition function δ̂ of a DFA A = (Q, Σ, δ, q0 , F ) oper-
ating on finite strings over Σ. That is,
                                      δ̂ : Q × Σ∗ −→ Q.                                    (1.12)
Let q ∈ Q and let s = s1 s2 · · · sn ∈ Σ∗ . In the case of the empty string, define δ̂(q, ε) = q.
When i = 1, we have δ̂(q, s1 ) = δ(q, s1 ). For 1 < i ≤ n, define
                                                                             
                      δ̂(q, s1 s2 · · · si ) = δ̂ δ̂(q, s1 s2 · · · si−1 ), si .

For convenience, we write δ(q, s) instead of δ̂(q, s). Where δ(q0 , s) ∈ F , we say that the
string s is accepted by A. Any subset of Σ∗ is said to be a language over Σ. The language
L of A is the set of all finite strings accepted by A, i.e.
                              L(A) = {s ∈ Σ∗ | δ(q0 , s) ∈ F } .
The special language L(A) is also referred to as a regular language. Referring back to
example 1.35, any string accepted by A has zero or more a, followed by exactly one b,
and finally zero or more occurrences of a or b. We can describe this language using the
regular expression a∗ b(a|b)∗ .
   For NFAs, we can similarly define a transition function operating on finite strings.
Each input is a string over Σ and the transition function δ̂ returns a subset of Q. Formally,
our transition function for NFAs operating on finite strings is the map
                                      δ̂ : Q × Σ∗ −→ 2Q .
Let q ∈ Q and let w = xa, where x ∈ Σ∗ and a ∈ Σ. The input symbol a can be
interpreted as being the very last symbol in the string w. Then x is interpreted as being
the substring of w excluding the symbol a. In the case of the empty string, we have
δ̂(q, ε) = {q}. For the inductive case, assume that δ̂(q, x) = {p1 , p2 , . . . , pk } where each
pi ∈ Q. Then δ̂(q, w) is defined by
                                                       
                              δ̂(q, w) = δ̂ δ̂(q, x), a

                                        = δ̂ ({p1 , p2 , . . . , pk }, a)
                                            k
                                            [
                                        =         δ(pi , a).
                                            i=1

It may happen that for some state pi , there are no transitions from pi with input a. We
cater for this possibility by writing δ(pi , a) = ∅.
42                                                           Chapter 1. Introduction to Graph Theory

1.7.2     Simulating NFAs using DFAs
Any NFA can be simulated by a DFA. One way of accomplishing this is to allow the DFA
to keep track of all the states that the NFA can be in after reading an input symbol.
The formal proof depends on this construction of an equivalent DFA and then showing
that the language of the DFA is the same as that of the NFA.
Theorem 1.37. Determinize an NFA. If A is a nondeterministic finite-state au-
tomaton, then there exists a deterministic finite-state automaton A0 such that L(A) =
L(A0 ).
Proof. Let the NFA A be defined by A = (Q, Σ, δ, Q0 , F ) and define a DFA A0 =
(Q0 , Σ, δ 0 , q00 , F 0 ) as follows. The state space of A0 is the power set of Q, i.e. Q0 = 2Q .
The accepting state space F 0 of A0 is a subset of Q0 , where each f ∈ F 0 is a set containing
at least an accepting state of A. In symbols, we write F 0 ⊆ Q0 where
                            F 0 = {q ∈ Q0 | p ∈ F for some p ∈ q} .
Denote each element q ∈ Q0 by q = [q1 , q2 , . . . , qi ] where q1 , q2 , . . . , qi ∈ Q. Thus the
initial state of A0 is q00 = [Q0 ]. Now define the transition function δ 0 by
                        δ 0 ([q1 , q2 , . . . , qi ], s) = [p1 , p2 , . . . , pj ]
                                                             i
                                                             [                                          (1.13)
                ⇐⇒ δ ({q1 , q2 , . . . , qi }, s) =              δ(qk , s) = {p1 , p2 , . . . , pj }.
                                                            k=1

For any input string w, we now show by induction on the length of w that
                                            δ 0 (q00 , w) = [q1 , q2 , . . . , qi ]
                                                                                                        (1.14)
                                 ⇐⇒ δ(Q0 , w) = {q1 , q2 , . . . , qi }.
For the basis step, let |w| = 0 so that w = ε. Then it is clear that
                                    δ 0 (q00 , w) = δ 0 (q00 , ε) = [q00 ]
                                 ⇐⇒ δ(Q0 , w) = δ(Q0 , ε) = Q0 .
Next, assume for induction that statement (1.14) holds for all strings of length less than
or equal to m > 0. Let w be a string of length m and let a ∈ Σ so that |wa| = m + 1.
Then δ 0 (q00 , wa) = δ 0 δ 0 (q00 , w), a . By our inductive hypothesis, we have
                                    δ 0 (q00 , w) = [p1 , p2 , . . . , pj ]
                                 ⇐⇒ δ(Q0 , w) = {p1 , p2 , . . . , pj }
and applying (1.14) we get
                          δ 0 ([p1 , p2 , . . . , pj ], a) = [r1 , r2 , . . . , rk ]
                       ⇐⇒ δ ({p1 , p2 , . . . , pj }, a) = {r1 , r2 , . . . , rk }.
Hence
                                   δ 0 (q00 , wa) = [r1 , r2 , . . . , rk ]
                                ⇐⇒ δ(Q0 , wa) = {r1 , r2 , . . . , rk }
which establishes that statement (1.14) holds for all finite strings over Σ. Finally,
δ 0 (q00 , w) ∈ F 0 if and only if there is some p ∈ δ(Q0 , w) such that p ∈ F . Therefore
L(A) = L(A0 ).
1.7. Application: finite automata                                                              43

      Theorem 1.37 tells us that any NFA corresponds to some DFA that accepts the
same language. For this reason, the theorem is said to provide us with a procedure
for determinizing NFAs. The actual procedure itself is contained in the proof of the
theorem, although it must be noted that the procedure is inefficient since it potentially
yields transitions from states that are unreachable from the initial state. If q ∈ Q0 is
a state of A0 that is unreachable from q00 , then there are no input strings w such that
δ 0 (q00 , w) = q. Such unreachable states are redundant insofar as they do not affect L(A0 ).
      Another inefficiency of the procedure in the proof of Theorem 1.37 is the problem of
state space explosion. As Q0 = 2Q is the power set of Q, the resulting DFA can potentially
have exponentially more states than the NFA it is simulating. In the worse case, each
element of Q0 is a state of the resulting DFA that is reachable from q00 = [Q0 ]. The
best-case scenario is when each state of the DFA is a singleton, hence the DFA has the
same number of states as its corresponding NFA. However, according to the procedure
in the proof of Theorem 1.37, we generate all the possible 2n states of the DFA, where
n = |Q|. After considering all the transitions whose starting states are singletons, we
then consider all transitions starting from each of the remaining 2n − n elements in Q0 .
In the best-case, none of those remaining 2n − n states are reachable from q00 , hence it is
redundant to generate transitions starting at each of those 2n − n states. Example 1.38
concretizes our discussion.

Example 1.38. Use the procedure in Theorem 1.37 to determinize the NFA in Fig-
ure 1.36.

                                        a                         b


                                                  a
                                        1                         2



                                            c             c


                                                  3



                 Figure 1.36: An NFA with 3 states and 3 input symbols.


Solution. The NFA A = (Q, Σ, δ, q0 , F ) in Figure 1.36 has the states Q = {1, 2, 3}, the
initial state q0 = 1, the final state set F = {3}, and the input alphabet Σ = {a, b, c}.
Its transitions are contained in Table 1.2. To determinize A, we construct a DFA A0 =

                                    δ   a             b    c
                                    1 {1, 2}          ∅   {3}
                                    2       ∅    {2}      {3}
                                    3       ∅         ∅       ∅
                  Table 1.2: Transition table for the NFA in Figure 1.36.

(Q0 , Σ, δ 0 , q00 , F 0 ). As Q0 is the power set of Q, then all the possible states of A0 are
contained in Q0 = {∅, [1], [2], [3], [1, 2], [1, 3], [2, 3], [1, 2, 3]}. The alphabet of A0 is the
same as the alphabet of A, namely Σ. The initial state of A0 is q00 = [q0 ] = [1]. All
the possible accepting states of A0 are contained in F 0 = {[3], [1, 3], [2, 3], [1, 2, 3]}. Next,
44                                                     Chapter 1. Introduction to Graph Theory

we apply (1.13) to construct all the possible transitions of A0 . These transitions are
contained in Table 1.3. Using those transitions, we obtain the digraph representation in
Figure 1.37, from which it is clear that the states [1], [2], [3], and [1, 2] are the only states

                                       δ0          a       b          c
                                      [1]        [1, 2]    ∅         [3]
                                      [2]          ∅       [2]       [3]
                                      [3]          ∅       ∅         ∅
                                    [1, 2]       [1, 2]    [2]       [3]
                                    [1, 3]       [1, 2]    ∅         [3]
                                    [2, 3]         ∅       [2]       [3]
                                   [1, 2, 3] [1, 2]        [2]       [3]
     Table 1.3: Transition table of a deterministic version of the NFA in Figure 1.36.

reachable from the initial state q00 = [1]. The remaining states [1, 3], [2, 3], and [1, 2, 3]
are not reachable from q00 = [1]. In other words, starting at q00 = [1] there are no input
strings that would result in a transition to any of [1, 3], [2, 3], and [1, 2, 3]. Therefore these
states, and the transitions starting from them, can be deleted from Figure 1.37 without
affecting the language of A0 . Figure 1.38 shows an equivalent DFA with redundant states
removed.



                                                       1


                                             a                   c
                                     a


                                                       c
                                    1, 2                                    3


                             b               c                                      c
                                                                 a


                  b     2                              c                                1, 2, 3
                                                                                c
                                                  a


                             b
                                                       b

                                    2, 3                                   1, 3



      Figure 1.37: A DFA accepting the same language as the NFA in Figure 1.36.
1.8. Problems                                                                                      45


                                                     1


                                             a               c

                                                     c

                                a     1, 2           b                 3

                                             b               c
                                                     2



Figure 1.38: A DFA equivalent to that in Figure 1.37, with redundant states removed.

1.8      Problems
      A problem left to itself dries up or goes rotten. But fertilize a problem with a solution—
      you’ll hatch out dozens.
      — N. F. Simpson, A Resounding Tinkle, 1958

1.1. For each graph in Figure 1.7, do the following:
       (a) Construct the graph using Sage.
      (b) Find its adjacency matrix.
       (c) Find its node and edge sets.
      (d) How many nodes and edges are in the graph?
       (e) If applicable, find all of each node’s in-coming and out-going edges. Hence
           find the node’s indegree and outdegree.

                                    Alice                        Bob




                                                 Carol


                  Figure 1.39: Graph representation of a social network.

1.2. In the friendship network of Figure 1.39, Carol is a mutual friend of Alice and Bob.
     How many possible ways are there to remove exactly one edge such that, in the
     resulting network, Carol is no longer a mutual friend of Alice and Bob?
1.3. The routing network of German cities in Figure 1.40 shows that each pair of distinct
     cities are connected by a flight path. The weight of each edge is the flight distance
     in kilometers between the two corresponding cities. In particular, there is a flight
     path connecting Karlsruhe and Stuttgart. What is the shortest route between
     Karlsruhe and Stuttgart? Suppose we can remove at least one edge from this
     network. How many possible ways are there to remove edges such that, in the
     resulting network, Karlsruhe is no longer connected to Stuttgart via a flight path?
1.4. Let D = (V, E) be a digraph of size q. Show that
                                X            X
                                    id(v) =     od(v) = q.
                                       v∈V           v∈V
46                                         Chapter 1. Introduction to Graph Theory




                                   Karlsruhe




                          197                        54




     Augsburg                                                       Mannheim




        57                                                             72




     Munich               383       Kassel          145             Frankfurt




                 149                                          97




                       Nuremberg      90          Würzburg




                 157                                          154




     Stuttgart                                                       Erfurt


       Figure 1.40: Graph representation of a routing network.
1.8. Problems                                                                           47

 1.5. If G is a simple graph of order n > 0, show that deg(v) < n for all v ∈ V (G).

 1.6. Let G be a graph of order n and size m. Then G is called an overfull graph if
      m > ∆(G) · bn/2c. If m = ∆(G) · bn/2c + 1, then G is said to be just overfull.
      It can be shown that overfull graphs have odd order. Equivalently, let G be of
      odd order. We can define G to be overfull if m > ∆(G) · (n − 1)/2, and G is just
      overfull if m = ∆(G) · (n − 1)/2 + 1. Find an overfull graph and a graph that is
      just overfull. Some basic results on overfull graphs are presented in Chetwynd and
      Hilton [52].

 1.7. Fix a positive integer n and denote by Γ(n) the number of simple graphs on n
      vertices. Show that                  n
                                  Γ(n) = 2( 2 ) = 2n(n−1)/2 .

 1.8. Let G be an undirected graph whose unoriented incidence matrix is Mu and whose
      oriented incidence matrix is Mo .

      (a) Show that the sum of the entries in any row of Mu is the degree of the
          corresponding vertex.
      (b) Show that the sum of the entries in any column of Mu is equal to 2.
       (c) If G has no self-loops, show that each column of Mo sums to zero.

 1.9. Let G be a loopless digraph and let M be its incidence matrix.

      (a) If r is a row of M , show that the number of occurrences of −1 in r counts
          the outdegree of the vertex corresponding to r. Show that the number of
          occurrences of 1 in r counts the indegree of the vertex corresponding to r.
      (b) Show that each column of M sums to 0.

1.10. Let G be a digraph and let M be its incidence matrix. For any row r of M , let m
      be the frequency of −1 in r, let p be the frequency of 1 in r, and let t be twice the
      frequency of 2 in r. If v is the vertex corresponding to r, show that the degree of
      v is deg(v) = m + p + t.

1.11. Let G be an undirected graph without self-loops and let M and its oriented in-
      cidence matrix. Show that the Laplacian matrix L of G satisfies L = M × M T ,
      where M T is the transpose of M .

1.12. Let J1 denote the incidence matrix of G1 and let J2 denote the incidence matrix of
      G2 . Find matrix theoretic criteria on J1 and J2 which hold if and only if G1 ∼
                                                                                    = G2 .
      In other words, find the analog of Theorem 1.24 for incidence matrices.

1.13. Show that the complement of an edgeless graph is a complete graph.

1.14. Let GH be the Cartesian product of two graphs G and H. Show that |E(GH)| =
      |V (G)| · |E(H)| + |E(G)| · |V (H)|.

1.15. In 1751, Leonhard Euler posed a problem to Christian Goldbach, a problem that
      now bears the name “Euler’s polygon division problem”. Given a plane convex
      polygon having n sides, how many ways are there to divide the polygon into tri-
      angles using only diagonals? For our purposes, we consider only regular polygons
48                                             Chapter 1. Introduction to Graph Theory




            Figure 1.41: Euler’s polygon division problem for the hexagon.

      having n sides for n ≥ 3 and any two diagonals must not cross each other. For
      example, the triangle is a regular 3-gon, the square a regular 4-gon, the pentagon
      a regular 5-gon, etc. In the case of the hexagon considered as the cycle graph C6 ,
      there are 14 ways to divide it into triangles, as shown in Figure 1.41, resulting in
      14 graphs. However, of those 14 graphs only 3 are nonisomorphic to each other.

       (a) What is the number of ways to divide a pentagon into triangles using only
           diagonals? List all such divisions. If each of the resulting so divided pentagons
           is considered a graph, how many of those graphs are nonisomorphic to each
           other?
      (b) Repeat the above exercise for the heptagon.
       (c) Let En be the number of ways to divide an n-gon into triangles using only
           diagonals. For n ≥ 1, the Catalan numbers Cn are defined as
                                                   
                                               1    2n
                                        Cn =            .
                                              n+1 n

           Dörrie [64, pp.21–27] showed that En is related to the Catalan numbers via
           the equation En = Cn−1 . Show that
                                                          
                                              1     2n + 2
                                      Cn =                   .
                                            4n + 2 n + 1
           For k ≥ 2, show that the Catalan numbers satisfy the recurrence relation
                                                 4k − 2
                                          Ck =          Ck−1 .
                                                  k+1

1.16. A graph is said to be planar if it can be drawn on the plane in such a way that
      no two edges cross each other. For example, the complete graph Kn is planar for
      n = 1, 2, 3, 4, but K5 is not planar (see Figure 1.13). Draw a planar version of K4 as
1.8. Problems                                                                             49

     presented in Figure 1.13(b). Is the graph in Figure 1.9 planar? For n = 1, 2, . . . , 5,
     enumerate all simple nonisomorphic graphs on n vertices that are planar; only work
     with undirected graphs.

1.17. If n ≥ 3, show that the join of Cn and K1 is the wheel graph Wn+1 . In other words,
      show that Cn + K1 = Wn+1 .

1.18. A common technique for generating “random” numbers is the linear congruential
      method, a generalization of the Lehmer generator [135] introduced in 1949. First,
      we choose four integers:

                                      m,      modulus,         0<m
                                      a,      multiplier,      0≤a<m
                                      c,      increment,       0≤c<m
                                      X0 ,    seed,            0 ≤ X0 < m

     where the value X0 is also referred to as the starting value. Then iterate the
     relation
                          Xn+1 = (aXn + c) mod m,        n≥0
     and halt when the relation produces the seed X0 or when it produces an integer
     Xk such that Xk = Xi for some 0 ≤ i < k. The resulting sequence

                                             S = (X0 , X1 , . . . , Xn )

     is called a linear congruential sequence. Define a graph theoretic representation
     of S as follows: let the vertex set be V = {X0 , X1 , . . . , Xn } and let the edge set
     be E = {Xi Xi+1 | 0 ≤ i < n}. The resulting graph G = (V, E) is called the
     linear congruential graph of the linear congruential sequence S. See chapter 3 of
     Knuth [123] for other techniques for generating “random” numbers.

      (a) Compute the linear congruential sequences Si with the following parameters:
            (i)   S1 :   m = 10,   a = c = X0 = 7
           (ii)   S2 :   m = 10,   a = 5, c = 7, X0 = 0
          (iii)   S3 :   m = 10,   a = 3, c = 7, X0 = 2
          (iv)    S4 :   m = 10,   a = 2, c = 5, X0 = 3
      (b) Let Gi be the linear congruential graph of Si . Draw each of the graphs Gi .
          Draw the graph resulting from the union
                                             [
                                                Gi .
                                                           i


      (c) Let m, a, c, and X0 be the parameters of a linear congruential sequence where
            (i) c is relatively prime to m;
           (ii) b = a − 1 is a multiple of p for each prime p that divides m; and
          (iii) 4 divides b if 4 divides m.
          Show that the corresponding linear congruential graph is the wheel graph Wm
          on m vertices.
50                                              Chapter 1. Introduction to Graph Theory

1.19. We want to generate a random bipartite graph whose first and second partitions
      have n1 and n2 vertices, respectively. Describe and present pseudocode to generate
      the required random bipartite graph. What is the worst-case runtime of your
      algorithm? Modify your algorithm to account for a third parameter m that specifies
      the number of edges in the resulting bipartite graph.

1.20. Describe and present pseudocode to generate a random regular graph. What is the
      worst-case runtime of your algorithm?

1.21. The Cantor-Schröder-Bernstein theorem states that if A, B are sets and we have
      an injection f : A −→ B and an injection g : B −→ A, then there is a bijection
      between A and B, thus proving that A and B have the same cardinality. Here
      we use bipartite graphs and other graph theoretic concepts to prove the Cantor-
      Schröder-Bernstein theorem. The full proof can be found in Yegnanarayanan [207].

      (a) Is it possible for A and B to be bipartitions of V and yet satisfy A ∩ B 6= ∅?
      (b) Now assume that A ∩ B = ∅ and define a bipartite graph G = (V, E) with A
          and B being the two partitions of V , where for any x ∈ A and y ∈ B we have
          xy ∈ E if and only if either f (x) = y or g(y) = x. Show that deg(v) = 1 or
          deg(v) = 2 for each v ∈ V .
       (c) Let C be a component of G and let A0 ⊆ A and B 0 ⊆ B contain all vertices
           in the component C. Show that |A0 | = |B 0 |.

1.22. Fermat’s little theorem states that if p is prime and a is an integer not divisible
      by p, then p divides ap − a. Here we cast the problem within the context of graph
      theory and prove it using graph theoretic concepts. The full proof can be found in
      Heinrich and Horak [98] and Yegnanarayanan [207].

      (a) Let G = (V, E) be a graph with V being the set of all sequences (a1 , a2 , . . . , ap )
          of integers 1 ≤ ai ≤ a and aj 6= ak for some j 6= k. Show that G has ap − a
          vertices.
      (b) Define the edge set of G as follows. If u, v ∈ V such that u = (u1 , u2 , . . . , up )
          and v = (up , u1 , . . . , up−1 ), then uv ∈ E. Show that each component of G is a
          cycle of length p.
       (c) Show that G has (ap − a)/p components.

1.23. For the finite automaton in Figure 1.33, identify the following:

      (a) The states set Q.
      (b) The alphabet set Σ.
       (c) The transition function δ : Q × Σ −→ Q.
      (d) The initial state q0 ∈ Q.
       (e) The set of final states F ⊆ Q.

1.24. The cycle graph Cn is a 2-regular graph. If 2 < r < n/2, unlike the cycle graph
      there are various realizations of an r-regular graph; see Figure 1.42 for the case of
      r = 3 and n = 10. The k-circulant graph on n vertices can be considered as an
      intermediate graph between Cn and a k-regular graph. Let k and n be positive
1.8. Problems                                                                                         51

             3         2                        3         2                   3          2

       4                    1               4                 1           4                   1



   5                            0       5                         0   5                           0



       6                    9               6                 9           6                   9

             7         8                        7         8                   7          8

                 (a)                                (b)                            (c)

                       Figure 1.42: Various 3-regular graphs on 10 vertices.




           (a) k = 4                            (b) k = 6                         (c) k = 8

                       Figure 1.43: Various k-circulant graphs for k = 4, 6, 8.

       integers satisfying k < n/2 with k being even. Suppose G = (V, E) is a simple
       undirected graph with vertex set V = {0, 1, . . . , n − 1}. Define the edge set of G
       as follows. Each i ∈ V is incident with each of i + j mod n and i − j mod n for
       j ∈ {1, 2, . . . , k/2}. With the latter edge set, G is said to be a k-circulant graph, a
       type of graphs used in constructing small-world networks (see section 10.4). Refer
       to Figure 1.43 for examples of k-circulant graphs.

        (a) Describe and provide pseudocode of an algorithm to construct a k-circulant
            graph on n vertices.
       (b) Show that the cycle graph Cn is 2-circulant.
        (c) Show that the sum of all degrees of a k-circulant graph on n vertices is nk.
       (d) Show that a k-circulant graph is k-regular.
        (e) Let C be the collection of all k-regular graphs on n vertices. If each k-regular
            graph from C is equally likely to be chosen, what is the probability that a
            k-circulant graph be chosen from C?
Chapter 2

Graph Algorithms




     — Randall Munroe, xkcd, http://xkcd.com/518/



Graph algorithms have many applications. Suppose you are a salesman with a product
you would like to sell in several cities. To determine the cheapest travel route from city-
to-city, you must effectively search a graph having weighted edges for the “cheapest”
route visiting each city once. Each vertex denotes a city you must visit and each edge
has a weight indicating either the distance from one city to another or the cost to travel
from one city to another.
    Shortest path algorithms are some of the most important algorithms in algorithmic
graph theory. In this chapter, we first examine several common graph traversal algo-
rithms and some basic data structures underlying these algorithms. A data structure is
a combination of methods for structuring a collection of data (e.g. vertices and edges)
and protocols for accessing the data. We then consider a number of common shortest
path algorithms, which rely in one way or another on graph traversal techniques and
basic data structures for organizing and managing vertices and edges.

                                            52
2.1. Representing graphs in a computer                                                       53

2.1      Representing graphs in a computer
      To err is human but to really foul things up requires a computer.
      — Anonymous, Farmers’ Almanac for 1978, “Capsules of Wisdom”

In section 1.3, we discussed how to use matrices for representing graphs and digraphs. If
A = [aij ] is an m×n matrix, the adjacency matrix representation of a graph would require
representing all the mn entries of A. Alternative graph representations exist that are
much more efficient than representing all entries of a matrix. The graph representation
used can be influenced by the size of a graph or the purpose of the representation. Sec-
tion 2.1.1 discusses the adjacency list representation that can result in less storage space
requirement than the adjacency matrix representation. The graph6 format discussed in
section 2.1.3 provides a compact means of storing graphs for archival purposes.

2.1.1     Adjacency lists
A list is a sequence of objects. Unlike sets, a list may contain multiple copies of the same
object. Each object in a list is referred to as an element of the list. A list L of n ≥ 0
elements is written as L = [a1 , a2 , . . . , an ], where the i-th element ai can be indexed
as L[i]. In case n = 0, the list L = [ ] is referred to as the empty list. Two lists are
equivalent if they both contain the same elements at exactly the same positions.
     Define the adjacency lists of a graph as follows. Let G be a graph with vertex set
V = {v1 , v2 , . . . , vn }. Assign to each vertex vi a list Li containing all the vertices that
are adjacent to vi . The list Li associated with vi is referred to as the adjacency list of
vi . Then Li = [ ] if and only if vi is an isolated vertex. We say that Li is the adjacency
list of vi because any permutation of the elements of Li results in a list that contains
the same vertices adjacent to vi . We are mainly concerned with the neighbors of vi , but
disregard the position where each neighbor is located in Li . If each adjacency list Li
contains si elements where 0 ≤ si ≤ n, we say that Li has length        P     si . The adjacency
list representation of the graph G requires that we represent i si = 2 · |E(G)| ≤ n2
elements in a computer’s memory, since each edge appears twice in the adjacency list
representation. An adjacency list is explicit about which vertices are adjacent to a vertex
and implicit about which vertices are not adjacent to that same vertex. Without knowing
the graph G, given the adjacency lists L1 , L2 , . . . , Ln , we can reconstruct G. For example,
Figure 2.1 shows a graph and its adjacency list representation.
                 4                        3

                               7



                       8             6            L1 = [2, 8]       L5 = [6, 8]
                                                  L2 = [1, 6]       L6 = [2, 5, 8]
                               5
                                                  L3 = [4]          L7 = [ ]
                 1                        2       L4 = [3]          L8 = [1, 5, 6]


                           Figure 2.1: A graph and its adjacency lists.


Example 2.1. The Kneser graph with parameters (n, k), also known as the (n, k)-Kneser
graph, is the graph whose vertices are all the k-subsets of {1, 2, . . . , n}. Furthermore, two
54                                                               Chapter 2. Graph Algorithms

vertices are adjacent if their corresponding sets are disjoint. Draw the (5, 2)-Kneser
graph and find its order and adjacency lists. In general, if n and k are positive, what is
the order of the (n, k)-Kneser graph?
Solution. The (5, 2)-Kneser graph is the graph whose vertices are the 2-subsets

            {1, 2}, {1, 3}, {1, 4}, {1, 5}, {2, 3}, {2, 4}, {2, 5}, {3, 4}, {3, 5}, {4, 5}

of {1, 2, 3, 4, 5}. That is, each vertex of the (5, 2)-Kneser graph
                                                                  is5×4
                                                                      a 2-combination of the
                                                                5
set {1, 2, 3, 4, 5} and therefore the graph itself has order 2 = 2! = 10. The edges of
this graph are

     ({1, 3}, {2, 4}), ({2, 4}, {1, 5}), ({2, 4}, {3, 5}), ({1, 3}, {4, 5}), ({1, 3}, {2, 5})
     ({3, 5}, {1, 4}), ({3, 5}, {1, 2}), ({1, 4}, {2, 3}), ({1, 4}, {2, 5}), ({4, 5}, {2, 3})
     ({4, 5}, {1, 2}), ({1, 5}, {2, 3}), ({1, 5}, {3, 4}), ({3, 4}, {1, 2}), ({3, 4}, {2, 5})

from which we obtain the following adjacency lists:

               L{1,2} = [{3, 4}, {3, 5}, {4, 5}],   L{1,3} = [{2, 4}, {2, 5}, {4, 5}],
               L{1,4} = [{2, 3}, {3, 5}, {2, 5}],   L{1,5} = [{2, 4}, {3, 4}, {2, 3}],
               L{2,3} = [{1, 5}, {1, 4}, {4, 5}],   L{2,4} = [{1, 3}, {1, 5}, {3, 5}],
               L{2,5} = [{1, 3}, {3, 4}, {1, 4}],   L{3,4} = [{1, 2}, {1, 5}, {2, 5}],
               L{3,5} = [{2, 4}, {1, 2}, {1, 4}],   L{4,5} = [{1, 3}, {1, 2}, {2, 3}].

The (5, 2)-Kneser graph itself is shown in Figure 2.2. Using Sage, we have
sage : K = graphs . KneserGraph (5 , 2); K
Kneser graph with parameters 5 ,2: Graph on 10 vertices
sage : for v in K . vertices ():
...         print (v , K . neighbors ( v ))
...
({4 , 5} , [{1 , 3} , {1 , 2} , {2 , 3}])
({1 , 3} , [{2 , 4} , {2 , 5} , {4 , 5}])
({2 , 5} , [{1 , 3} , {3 , 4} , {1 , 4}])
({2 , 3} , [{1 , 5} , {1 , 4} , {4 , 5}])
({3 , 4} , [{1 , 2} , {1 , 5} , {2 , 5}])
({3 , 5} , [{2 , 4} , {1 , 2} , {1 , 4}])
({1 , 4} , [{2 , 3} , {3 , 5} , {2 , 5}])
({1 , 5} , [{2 , 4} , {3 , 4} , {2 , 3}])
({1 , 2} , [{3 , 4} , {3 , 5} , {4 , 5}])
({2 , 4} , [{1 , 3} , {1 , 5} , {3 , 5}])

If n and k are positive integers, then the (n, k)-Kneser graph has
                              
                               n      n(n − 1) · · · (n − k + 1)
                                   =
                               k                  k!
vertices.
     We can categorize a graph G = (V, E) as dense or sparse   based upon its size. A dense
                                        2                   2
graph has size |E| that is close to |V | , i.e. |E| = Ω |V | , in which case it is feasible to
                                                                                             2
represent G as an adjacency matrix. The size of a sparse graph is much less than |V | ,
i.e. |E| = Ω |V | , which renders the adjacency matrix representation as unsuitable. For
a sparse graph, an adjacency list representation can require less storage space than an
adjacency matrix representation of the same graph.
2.1. Representing graphs in a computer                                                   55

                                                   {3, 4}




                                                        {1, 2}



                       {1, 5}                                                   {2, 5}

                                                   {2, 3}




                       {3, 5}                                                   {4, 5}




                                                   {1, 4}

                                {2, 4}                                 {1, 3}



                            Figure 2.2: The (5, 2)-Kneser graph.

2.1.2     Edge lists
Lists can also be used to store the edges of a graph. To create an edge list L for a graph
G, if uv is an edge of G then we let uv or the ordered pair (u, v) be an element of L. In
general, let
                                  v0 v1 , v2 v3 , . . . , vk vk+1
be all the edges of G, where k is even. Then the edge list of G is given by

                                   L = [v0 v1 , v2 v3 , . . . , vk vk+1 ].

In some cases, it is desirable to have the edges of G be in contiguous list representation.
If the edge list L of G is as given above, the contiguous edge list representation of the
edges of G is
                                [v0 , v1 , v2 , v3 , . . . , vk , vk+1 ].
That is, if 0 ≤ i ≤ k is even then vi vi+1 is an edge of G.

2.1.3     The graph6 format
The graph formats graph6 and sparse6 were developed by Brendan McKay [144] at
The Australian National University as a compact way to represent graphs. These two
formats use bit vectors and printable characters of the American Standard Code for
Information Interchange (ASCII) encoding scheme. The 64 printable ASCII characters
used in graph6 and sparse6 are those ASCII characters with decimal codes from 63 to
126, inclusive, as shown in Table 2.1. This section shall only cover the graph6 format.
For full specification on both of the graph6 and sparse6 formats, see McKay [144].

Bit vectors
Before discussing how graph6 and sparse6 represent graphs using printable ASCII char-
acters, we first present encoding schemes used by these two formats. A bit vector is, as
56                                               Chapter 2. Graph Algorithms




            binary decimal    glyph    binary decimal    glyph
           0111111   63         ?     1011111   95         _
           1000000   64         @     1100000   96         ‘
           1000001   65         A     1100001   97         a
           1000010   66         B     1100010   98         b
           1000011   67         C     1100011   99         c
           1000100   68         D     1100100   100        d
           1000101   69         E     1100101   101        e
           1000110   70         F     1100110   102        f
           1000111   71         G     1100111   103        g
           1001000   72         H     1101000   104        h
           1001001   73         I     1101001   105        i
           1001010   74         J     1101010   106        j
           1001011   75         K     1101011   107        k
           1001100   76         L     1101100   108        l
           1001101   77         M     1101101   109        m
           1001110   78         N     1101110   110        n
           1001111   79         O     1101111   111        o
           1010000   80         P     1110000   112        p
           1010001   81         Q     1110001   113        q
           1010010   82         R     1110010   114        r
           1010011   83         S     1110011   115        s
           1010100   84         T     1110100   116        t
           1010101   85         U     1110101   117        u
           1010110   86         V     1110110   118        v
           1010111   87         W     1110111   119        w
           1011000   88         X     1111000   120        x
           1011001   89         Y     1111001   121        y
           1011010   90         Z     1111010   122        z
           1011011   91         [     1111011   123        {
           1011100   92         \     1111100   124        |
           1011101   93         ]     1111101   125        }
           1011110   94         ^     1111110   126        ~

     Table 2.1: ASCII printable characters used by graph6 and sparse6.
2.1. Representing graphs in a computer                                                     57

its name suggests, a vector whose elements are 1’s and 0’s. It can be represented as a list
of bits, e.g. E can be represented as the ASCII bit vector [1, 0, 0, 0, 1, 0, 1]. For brevity,
we write a bit vector in a compact form such as 1000101. The length of a bit vector
is its number of bits. The most significant bit of a bit vector v is the bit position with
the largest value among all the bit positions in v. Similarly, the least significant bit is
the bit position in v having the least value among all the bit positions in v. The least
significant bit of v is usually called the parity bit because when v is interpreted as an
integer the parity bit determines whether the integer is even or odd. Reading 1000101
from left to right, the first bit 1 is the most significant bit, followed by the second bit 0
which is the second most significant bit, and so on all the way down to the seventh bit
1 which is the least significant bit.
    The order in which we process the bits of a bit vector

                                        v = bn−1 bn−2 · · · b0                          (2.1)

is referred to as endianness. Processing v in big-endian order means that we first process
the most significant bit of v, followed by the second most significant bit, and so on all the
way down to the least significant bit of v. Thus, in big-endian order we read the bits bi of
v from left to right in increasing order of powers of 2. Table 2.2 illustrates the big-endian
interpretation of the ASCII binary representation of E. Little-endian order means that
we first process the least significant bit, followed by the second least significant bit, and
so on all the way up to the most significant bit. In little-endian order, the bits bi are read
from right to left in increasing order of powers of 2. Table 2.3 illustrates the little-endian
interpretation of the ASCII binary representation of E. In his novel Gulliver’s Travels
first published in 1726, Jonathan Swift used the terms big- and little-endian in satirizing
politicians who squabbled over whether to break an egg at the big end or the little end.
Danny Cohen [55, 56] first used the terms in 1980 as an April fool’s joke in the context
of computer architecture.
    Suppose the bit vector (2.1) is read in big-endian order. To determine the integer
representation of v, multiply each bit value by its corresponding position value, then add
up all the results. Thus, if v is read in big-endian order, the integer representation of v
is obtained by evaluating the polynomial
                          n−1
                          X
                 p(x) =         xi bi = xn−1 bn−1 + xn−2 bn−2 + · · · + xb1 + b0 .      (2.2)
                          i=0

at x = 2. See problem 2.2 for discussion of an efficient method to compute the integer
representation of a bit vector.

                      position             0    1    2     3     4    5    6
                      bit value            1    0    0     0     1    0    1
                      position value       20   21   22    23    24   25   26

               Table 2.2: Big-endian order of the ASCII binary code of E.

   In graph6 and sparse6 formats, the length of a bit vector must be a multiple of 6.
Suppose v is a bit vector of length k such that 6 - k. To transform v into a bit vector
having length a multiple of 6, let r = k mod 6 be the remainder upon dividing k by 6,
and pad 6 − r zeros to the right of v.
58                                                                         Chapter 2. Graph Algorithms

                          position              0      1     2      3    4     5      6
                          bit value             1      0     0      0    1     0      1
                          position value        26     25    24     23   22    21     20

              Table 2.3: Little-endian order of the ASCII binary code of E.

    Suppose v = b1 b2 · · · bk is a bit vector of length k, where 6 | k. We split v into k/6
bit vectors vi , each of length 6. For 0 ≤ i ≤ k/6, the i-th bit vector is given by

                                   vi = b6i−5 b6i−4 b6i−3 b6i−2 b6i−1 b6i .

Consider each vi as the big-endian binary representation of a positive integer. Use (2.2)
to obtain the integer representation Ni of each vi . Then add 63 to each Ni to obtain Ni0
and store Ni0 in one byte of memory. That is, each Ni0 can be represented as a bit vector
of length 8. Thus the required number of bytes to store v is dk/6e. Let Bi be the byte
representation of Ni0 so that
                                 R(v) = B1 B2 · · · Bdk/6e                          (2.3)
denotes the representation of v as a sequence of dk/6e bytes.
    We now discuss how to encode an integer n in the range 0 ≤ n ≤ 236 − 1 using (2.3)
and denote such an encoding of n as N (n). Let v be the big-endian binary representation
of n. Then N (n) is given by
                           
                           
                            n + 63,        if 0 ≤ n ≤ 62,
                           
                   N (n) = 126 R(v),        if 63 ≤ n ≤ 258047,                    (2.4)
                           
                           
                           
                             126 126 R(v), if 258048 ≤ n ≤ 236 − 1.

Note that n + 63 requires one byte of storage memory, while 126 R(v) and 126 126 R(v)
require 4 and 8 bytes, respectively.

The graph6 format
The graph6 format is used to represent simple, undirected graphs of order from 0 to
236 − 1, inclusive. Let G be a simple, undirected graph of order 0 ≤ n ≤ 236 − 1. If
n = 0, then G is represented in graph6 format as “?”. Suppose n > 0. Let M = [aij ]
be the adjacency matrix of G. Consider the upper triangle of M , excluding the main
diagonal, and write that upper triangle as the bit vector

            v = a0,1 a0,2 a1,2 a0,3 a1,3 a2,3 · · · a0,i a1,i · · · ai−1,i · · · a0,n a1,n · · · an−1,n
                |{z} | {z } | {z }                  |        {z         }        |        {z          }
                   c1       c2          c3                     ci                          cn

where ci denotes the entries a0,i a1,i · · · ai−1,i in column i of M . Then the graph6 repre-
sentation of G is N (n)R(v), where R(v) and N (n) are as in (2.3) and (2.4), respectively.
That is, N (n) encodes the order of G and R(v) encodes the edges of G.
2.2. Graph searching                                                                 59

2.2      Graph searching
      Errors, like straws, upon the surface flow;
      He who would search for pearls must dive below.
      — John Dryden, All for Love, 1678


This section discusses two fundamental algorithms for graph traversal: breadth-first
search and depth-first search. The word “search” used in describing these two algorithms
is rather misleading. It would be more accurate to describe them as algorithms for
constructing trees using the adjacency information of a given graph. However, the names
“breadth-first search” and “depth-first search” are entrenched in literature on graph
theory and computer science. From hereon, we use these two names as given above,
bearing in mind their intended purposes.


2.2.1     Breadth-first search
Breadth-first search (BFS) is a strategy for running through the vertices of a graph. It
was presented by Moore [152] in 1959 within the context of traversing mazes. Lee [134]
independently discovered the same algorithm in 1961 in his work on routing wires on
circuit boards. In the physics literature, BFS is also known as a “burning algorithm” in
view of the analogy of a fire burning and spreading through an area, a piece of paper,
fabric, etc.
    The basic BFS algorithm can be described as follows. Starting from a given vertex
v of a graph G, we first explore the neighborhood of v by visiting all vertices that are
adjacent to v. We then apply the same strategy to each of the neighbors of v. The
strategy of exploring the neighborhood of a vertex is applied to all vertices of G. The
result is a tree rooted at v and this tree is a subgraph of G. Algorithm 2.1 presents a
general template for the BFS strategy. The tree resulting from the BFS algorithm is
called a breadth-first search tree.

 Algorithm 2.1: A general breadth-first search template.
  Input: A directed or undirected graph G = (V, E) of order n > 0. A vertex s
          from which to start the search. The vertices are numbered from 1 to
          n = |V |, i.e. V = {1, 2, . . . , n}.
  Output: A list D of distances of all vertices from s. A tree T rooted at s.
 1   Q ← [s]                   /* queue of nodes to visit */
 2   D ← [∞, ∞, . . . , ∞]               /* n copies of ∞ */
 3   D[s] ← 0
 4   T ← []
 5   while length(Q) > 0 do
 6      v ← dequeue(Q)
 7      for each w ∈ adj(v) do
 8         if D[w] = ∞ then
 9             D[w] ← D[v] + 1
10             enqueue(Q, w)
11             append(T, vw)
12   return (D, T )
60                                                                        Chapter 2. Graph Algorithms

    The breadth-first search algorithm makes use of a special type of list called a queue.
This is analogous to a queue of people waiting in line to be served. A person may enter
the queue by joining the rear of the queue. The person who is in the queue the longest
amount of time is served first, followed by the person who has waited the second longest
time, and so on. Formally, a queue Q is a list of elements. At any time, we only have
access to the first element of Q, known as the front or start of the queue. We insert
a new element into Q by appending the new element to the rear or end of the queue.
The operation of removing the front of Q is referred to as dequeue, while the operation
of appending to the rear of Q is called enqueue. That is, a queue implements a first-in
first-out (FIFO) protocol for adding and removing elements. As with lists, the length of
a queue is its total number of elements.

               1                      2                                   1                         2


                                                 3                                                        3


     7                                                       7


                                                 4                                                        4


               6                      5                                   6                         5

          (a) Original undirected graph.                             (b) First iteration of while loop.

               1                      2                                   1                         2


                                                 3                                                        3


     7                                                       7


                                                 4                                                        4


               6                      5                                   6                         5

         (c) Second iteration of while loop.                         (d) Third iteration of while loop.

                                                                                           1



                             1                       2
                                                                                  2             5
                                                                 3


                   7
                                                                              3        7        6

                                                                 4


                             6                       5                        4

                       (e) Fourth iteration of while loop.                    (f) Final BFS tree.

                   Figure 2.3: Breadth-first search tree for an undirected graph.

    Note that the BFS Algorithm 2.1 works on both undirected and directed graphs. For
an undirected graph, line 7 means that we explore all the neighbors of vertex v, i.e. the
set adj(v) of vertices adjacent to v. In the case of a digraph, we replace “w ∈ adj(v)”
on line 7 with “w ∈ oadj(v)” because we only want to explore all vertices that are out-
neighbors of v. The algorithm returns two lists D and T . The list T contains a subset
2.2. Graph searching                                                                                        61




             1                      2                                   1                         2


                                               3                                                        3


   7                                                       7


                                               4                                                        4


             6                      5                                   6                         5


             (a) Original digraph.                                 (b) First iteration of while loop.

             1                      2                                   1                         2


                                               3                                                        3


   7                                                       7


                                               4                                                        4


             6                      5                                   6                         5


       (c) Second iteration of while loop.                         (d) Third iteration of while loop.

                                                                                         4


                           1                       2

                                                                                3             6
                                                               3


                 7
                                                                            2        5        7
                                                               4


                           6                       5
                                                                                     1

                     (e) Fourth iteration of while loop.                    (f) Final BFS tree.

                      Figure 2.4: Breadth-first search tree for a digraph.
62                                                            Chapter 2. Graph Algorithms

of edges in E(G) that make up a tree rooted at the given start vertex s. As trees are
connected graphs without cycles, we may take the vertices comprising the edges of T to
be the vertex set of the tree. It is clear that T represents a tree by means of a list of
edges, which allows us to identify the tree under consideration as the edge list T . The
list D has the same number of elements as the order of G = (V, E), i.e. length(D) = |V |.
The i-th element D[i] counts the number of edges in T between the vertices s and vi . In
other words, D[i] is the length of the s-vi path in T . It can be shown that D[i] = ∞ if
and only if G is disconnected. After one application of Algorithm 2.1, it may happen that
D[i] = ∞ for at least one vertex vi ∈ V . To traverse those vertices that are unreachable
from s, again we apply Algorithm 2.1 on G with starting vertex vi . Repeat this algorithm
as often as necessary until all vertices of G are visited. The result may be a tree that
contains all the vertices of G or a collection of trees, each of which contains a subset of
V (G). Figures 2.3 and 2.4 present BFS trees resulting from applying Algorithm 2.1 on
an undirected graph and a digraph, respectively.
Theorem 2.2. The worst-case time complexity of Algorithm 2.1 is O(|V | + |E|).
Proof. Without loss of generality, we can assume that G = (V, E) is connected. The
initialization steps in lines 1 to 4 take O(|V |) time. After initialization, all but one
vertex are labelled ∞. Line 8 ensures that each vertex is enqueued at most once and
hence dequeued at most once. Each of enqueuing and dequeuing takes constant time.
The total time devoted to queue operations is O(|V |). The adjacency list of a vertex
is scanned after dequeuing that vertex, so each adjacency list is scanned at most once.
Summing the lengths of the adjacency lists, we have Θ(|E|) and therefore we require
O(|E|) time to scan the adjacency lists. After the adjacency list of a vertex is scanned,
at most k edges are added to the list T , where k is the length of the adjacency list under
consideration. Like queue operations, appending to a list takes constant time, hence we
require O(|E|) time to build the list T . Therefore, BFS runs in O(|V | + |E|) time.
Theorem 2.3. For the list D resulting from Algorithm 2.1, let s be a starting vertex
and let v be a vertex such that D[v] 6= ∞. Then D[v] is the length of any shortest path
from s to v.
Proof. It is clear that D[v] = ∞ if and only if there are no paths from s to v. Let v be
a vertex such that D[v] 6= ∞. As v can be reached from s by a path of length D[v], the
length d(s, v) of any shortest s-v path satisfies d(s, v) ≤ D[v]. Use induction on d(s, v) to
show that equality holds. For the base case s = v, we have d(s, v) = D[v] = 0 since the
trivial path has length zero. Assume for induction that if d(s, v) = k, then d(s, v) = D[v].
Let d(s, u) = k + 1 with the corresponding shortest s-u path being (s, v1 , v2 , . . . , vk , u).
By our induction hypothesis, (s, v1 , v2 , . . . , vk ) is a shortest path from s to vk of length
d(s, vk ) = D[vk ] = k. In other words, D[vk ] < D[u] and the while loop spanning lines 5
to 11 processes vk before processing u. The graph under consideration has the edge vk u.
When examining the adjacency list of vk , BFS reaches u (if u is not reached earlier) and
so D[u] ≤ k + 1. Hence, D[u] = k + 1 and therefore d(s, u) = D[u] = k + 1.
    In the proof of Theorem 2.3, we used d(u, v) to denote the length of the shortest path
from u to v. This shortest path length is also known as the distance from u to v, and
will be discussed in further details in section 2.3 and Chapter 5. The diameter diam(G)
of a graph G = (V, E) is defined as
                                   diam(G) = max d(u, v).                                  (2.5)
                                                u,v∈V
                                                 u6=v
2.2. Graph searching                                                                    63

Using the above definition, to find the diameter we first determine the distance between
each pair of distinct vertices, then we compute the maximum of all such distances.
Breadth-first search is a useful technique for finding the diameter: we simply run breadth-
first search from each vertex. An interesting application of the diameter appears in the
small-world phenomenon [121, 150, 199], which contends that a certain special class of
sparse graphs have low diameter.

2.2.2     Depth-first search




     — Randall Munroe, xkcd, http://xkcd.com/761/

A depth-first search (DFS) is a graph traversal strategy similar to breadth-first search.
Both BFS and DFS differ in how they explore each vertex. Whereas BFS explores
the neighborhood of a vertex v before moving on to explore the neighborhoods of the
neighbors, DFS explores as deep as possible a path starting at v. One can think of BFS
as exploring the immediate surrounding, while DFS prefers to see what is on the other
side of the hill. In the 19th century, Lucas [141] and Tarry [185] investigated DFS as
a strategy for traversing mazes. Fundamental properties of DFS were discovered in the
early 1970s by Hopcroft and Tarjan [101, 184].
    To get an intuitive appreciation for DFS, suppose we have an 8 × 8 chessboard in
front of us. We place a single knight piece on a fixed square of the board, as shown in
Figure 2.5(a). Our objective is to find a sequence of knight moves that visits each and
every square exactly once, while obeying the rules of chess that govern the movement
of the knight piece. Such a sequence of moves, if one exists, is called a knight’s tour .
How do we find such a tour? We could make one knight move after another, recording
each move to ensure that we do not step on a square that is already visited, until we
could not make any more moves. Acknowledging defeat when encountering a dead end,
64                                                        Chapter 2. Graph Algorithms




     0Z0Z0Z0Z                                 0Z0Z0Z0Z
     Z0Z0Z0Z0                                 Z0Z0Z0Z0
     0Z0Z0Z0Z                                 0Z0Z0Z0Z
     Z0Z0m0Z0                                 Z0Z0Z0Z0
     0Z0Z0Z0Z                                 0Z0Z0Z0Z
     Z0Z0Z0Z0                                 Z0Z0Z0Z0
     0Z0Z0Z0Z                                 0Z0Z0Z0Z
     Z0Z0Z0Z0                                 Z0Z0Z0Z0
     (a) The knight’s initial position.                (b) A knight’s tour.




                           (c) Graph representation of tour.

       Figure 2.5: The knight’s tour from a given starting position.
2.2. Graph searching                                                                       65

it might make sense to backtrack a few moves and try again, hoping we would not get
stuck. If we fail again, we try backtracking a few more moves and traverse yet another
path, hoping to make further progress. Repeat this strategy until a tour is found or until
we have exhausted all possible moves. The above strategy for finding a knight’s tour
is an example of depth-first search, sometimes called backtracking. Figure 2.5(b) shows
a knight’s tour with the starting position as shown in Figure 2.5(a); and Figure 2.5(c)
is a graph representation of this tour. The black-filled nodes indicate the endpoints
of the tour. A more interesting question is: What is the number of knight’s tours
on an 8 × 8 chessboard? Loebbing and Wegener [139] announced in 1996 that this
number is 33,439,123,484,294. The answer was later corrected by McKay [145] to be
13,267,364,410,532. See [69] for a discussion of the knight’s tour and its relationship to
mathematics.

 Algorithm 2.2: A general depth-first search template.
  Input: A directed or undirected graph G = (V, E) of order n > 0. A vertex s
          from which to start the search. The vertices are numbered from 1 to
          n = |V |, i.e. V = {1, 2, . . . , n}.
  Output: A list D of distances of all vertices from s. A tree T rooted at s.
 1   S ← [s]                   /* stack of nodes to visit */
 2   D ← [∞, ∞, . . . , ∞]               /* n copies of ∞ */
 3   D[s] ← 0
 4   T ← []
 5   while length(S) > 0 do
 6      v ← pop(S)
 7      for each w ∈ adj(v) do
 8         if D[w] = ∞ then
 9             D[w] ← D[v] + 1
10             push(S, w)
11             append(T, vw)
12   return (D, T )


    Algorithm 2.2 formalizes the above description of depth-first search. The tree re-
sulting from applying DFS on a graph is called a depth-first search tree. The general
structure of this algorithm bears close resemblance to Algorithm 2.1. A significant dif-
ference is that instead of using a queue to structure and organize vertices to be visited,
DFS uses another special type of list called a stack . To understand how elements of a
stack are organized, we use the analogy of a stack of cards. A new card is added to
the stack by placing it on top of the stack. Any time we want to remove a card, we
are only allowed to remove the top-most card that is on the top of the stack. A list
L = [a1 , a2 , . . . , ak ] of k elements is a stack when we impose the same rules for element
insertion and removal. The top and bottom of the stack are L[k] and L[1], respectively.
The operation of removing the top element of the stack is referred to as popping the
element off the stack. Inserting an element into the stack is called pushing the element
onto the stack. In other words, a stack implements a last-in first-out (LIFO) protocol
for element insertion and removal, in contrast to the FIFO policy of a queue. We also
use the term length to refer to the number of elements in the stack.
    The depth-first search Algorithm 2.2 can be analyzed similar to how we analyzed
66                                                                        Chapter 2. Graph Algorithms




               1                    2                                     1                   2


                                                   3                                                    3


     7                                                     7


                                                   4                                                    4


               6                    5                                     6                   5

          (a) Original undirected graph.                           (b) First iteration of while loop.

               1                    2                                     1                   2


                                                   3                                                    3


     7                                                     7


                                                   4                                                    4


               6                    5                                     6                   5

         (c) Second iteration of while loop.                       (d) Third iteration of while loop.

                                               1




                                        2              5




                                               3               6




                                                       7              4

                                            (e) Final DFS tree.

                   Figure 2.6: Depth-first search tree for an undirected graph.
2.2. Graph searching                                                                                67




             1                    2                             1                          2


                                             3                                                  3


   7                                                   7


                                             4                                                  4


             6                    5                             6                          5


             (a) Original digraph.                         (b) First iteration of while loop.

             1                    2                             1                          2


                                             3                                                  3


   7                                                   7


                                             4                                                  4


             6                    5                             6                          5


       (c) Second iteration of while loop.                 (d) Third iteration of while loop.

                                                                          4


                        1                    2

                                                                 3               6
                                                       3


             7
                                                                          5                7
                                                       4


                        6                    5
                                                                          1                2

                 (e) Fourth iteration of while loop.                 (f) Final DFS tree.

                     Figure 2.7: Depth-first search tree for a digraph.
68                                                             Chapter 2. Graph Algorithms

Algorithm 2.3. Just as BFS is applicable to both directed and undirected graphs, we
can also have undirected graphs and digraphs as input to DFS. For the case of an
undirected graph, line 7 of Algorithm 2.2 considers all vertices adjacent to the current
vertex v. In case the input graph is directed, we replace “w ∈ adj(v)” on line 7 with
“w ∈ oadj(v)” to signify that we only want to consider the out-neighbors of v. If any
neighbors (respectively, out-neighbors) of v are labelled as ∞, we know that we have
not explored any paths starting from any of those vertices. So we label each of those
unexplored vertices with a positive integer and push them onto the stack S, where
they will wait for later processing. We also record the paths leading from v to each of
those unvisited neighbors, i.e. the edges vw for each vertex w ∈ adj(v) (respectively,
w ∈ oadj(v)) are appended to the list T . The test on line 8 ensures that we do not
push onto S any vertices on the path that lead to v. When we resume another round of
the while loop that starts on line 5, the previous vertex v have been popped off S and
the neighbors (respectively, out-neighbors) of v have been pushed onto S. For example,
in step 2 of Figure 2.6, vertex 5 is considered in DFS (in contrast to the vertex 2 in
step 2 of the BFS in the graph in Figure 2.3) because DFS is organized by the LIFO
protocol (in contrast to the FIFO protocol of BFS). To explore a path starting at v,
we choose any unexplored neighbors of v by popping an element off S and repeat the
for loop starting on line 7. Repeat the DFS algorithm as often as required in order to
traverse all vertices of the input graph. The output of DFS consists of two lists D and
T : T is a tree rooted at the starting vertex s; and each D[i] counts the length of the s-vi
path in T . Figures 2.6 and 2.7 show the DFS trees resulting from running Algorithm 2.2
on an undirected graph and a digraph, respectively. The worst-case time complexity of
DFS can be analyzed using an argument similar to that in Theorem 2.2. Arguing along
the same lines as in the proof of Theorem 2.3, we can also show that the list D returned
by DFS contains lengths of any shortest paths in the tree T from the starting vertex s
to any other vertex in T (but not necessarily for shortest paths in the original graph G).

                                               0




                                               5

                            1                                    4
                                       6               9




                                           7       8



                                   2                       3


                             Figure 2.8: The Petersen graph.


Example 2.4. In 1898, Julius Petersen published [164] a graph that now bears his name:
the Petersen graph shown in Figure 2.8. Compare the search trees resulting from running
breadth- and depth-first searches on the Petersen graph with starting vertex 0.

Solution. The Petersen graph in Figure 2.8 can be constructed and searched as follows.
2.2. Graph searching                                                                         69

sage : g = graphs . PetersenGraph (); g
Petersen graph : Graph on 10 vertices
sage : list ( g . breadth_first_search (0))
[0 , 1 , 4 , 5 , 2 , 6 , 3 , 9 , 7 , 8]
sage : list ( g . depth_first_search (0))
[0 , 5 , 8 , 6 , 9 , 7 , 2 , 3 , 4 , 1]

From the above Sage session, we see that starting from vertex 0 breadth-first search
yields the edge list
                         [01, 04, 05, 12, 16, 43, 49, 57, 58]
and depth-first search produces the corresponding edge list

                               [05, 58, 86, 69, 97, 72, 23, 34, 01].

Our results are illustrated in Figure 2.9.

                           0                                            0




                           5                                            5

        1                                   4         1                                  4
                   6                9                           6                9




                       7        8                                   7        8



               2                        3                   2                        3

               (a) Breadth-first search.                     (b) Depth-first search.

             Figure 2.9: Traversing the Petersen graph starting from vertex 0.



2.2.3       Connectivity of a graph
Both BFS and DFS can be used to determine if an undirected graph is connected. Let
G = (V, E) be an undirected graph of order n > 0 and let s be an arbitrary vertex
of G. We initialize a counter c ← 1 to mean that we are starting our exploration at
s, hence we have already visited one vertex, i.e. s. We apply either BFS or DFS,
treating G and s as input to any of these algorithms. Each time we visit a vertex that
was previously unvisited, we increment the counter c. At the end of the algorithm, we
compare c with n. If c = n, we know that we have visited all vertices of G and conclude
that G is connected. Otherwise, we conclude that G is disconnected. This procedure is
summarized in Algorithm 2.3.
    Note that Algorithm 2.3 uses the BFS template of Algorithm 2.1, with some minor
changes. Instead of initializing the list D with n = |V | copies of ∞, we use n copies of
0. Each time we have visited a vertex w, we make the assignment D[w] ← 1, instead
of incrementing the value D[v] of w’s parent vertex and  Passign that value to D[w]. At
the end of the while loop, we have the equality c =        d∈D d. The value of this sum
could be used in the test starting from line 12. However, the value of the counter c
is incremented immediately after we have visited an unvisited vertex. An advantage is
70                                                         Chapter 2. Graph Algorithms

 Algorithm 2.3: Determining whether an undirected graph is connected.
  Input: An undirected graph G = (V, E) of order n > 0. A vertex s from which to
          start the search. The vertices are numbered from 1 to n = |V |,
          i.e. V = {1, 2, . . . , n}.
  Output: True if G is connected; False otherwise.
 1   Q ← [s]                    /* queue of nodes to visit */
 2   D ← [0, 0, . . . , 0]               /* n copies of 0 */
 3   D[s] ← 1
 4   c←1
 5   while length(Q) > 0 do
 6       v ← dequeue(Q)
 7       for each w ∈ adj(v) do
 8          if D[w] = 0 then
 9               D[w] ← 1
10               c←c+1
11               enqueue(Q, w)
12   if c = |V | then
13       return True
14   return False


that we do not need to perform a separate summation outside of the while loop. To
use the DFS template for determining graph connectivity, we simply replace the queue
implementation in Algorithm 2.3 with a stack implementation (see problem 2.20).


2.3      Weights and distances
In Chapter 1, we briefly mentioned some applications of weighted graphs, but we did
not define the concept of weighted graphs. A graph is said to be weighted when we
assign a numeric label or weight to each of its edges. Depending on the application,
we can let the vertices represent physical locations and interpret the weight of an edge
as the distance separating two adjacent vertices. There might be a cost involved in
traveling from a vertex to one of its neighbors, in which case the weight assigned to the
corresponding edge can represent such a cost. The concept of weighted digraphs can be
similarly defined. When no explicit weights are assigned to the edges of an undirected
graph or digraph, it is usually convenient to consider each edge as having a weight of
one or unit weight.
    Based on the concept of weighted graphs, we now define what it means for a path
to be a shortest path. Let G = (V, E) be a (di)graph with nonnegative edge weights
w(e) ∈ R for each edge e ∈ E. The length or distance d(P ) of a u-v path P from u ∈ V
to v ∈ V is the sum of the edge weights for edges in P . Denote by d(u, v) the smallest
value of d(P ) for all paths P from u to v. When we regard edge weights as physical
distances, a u-v path that realizes d(u, v) is sometimes called a shortest path from u to v.
The above definitions of distance and shortest path also apply to graphs with negative
edge weights. Unless otherwise specified, where the weight of an edge is not explicitly
given, we usually consider the edge to have unit weight.
    The distance function d on a graph with nonnegative edge weights is known as a
2.3. Weights and distances                                                               71

metric function. Intuitively, the distance between two physical locations is greater than
zero. When these two locations coincide, i.e. they are one and the same location, the
distance separating them is zero. Regardless of whether we are measuring the distance
from location a to b or from b to a, we would obtain the same distance. Imagine now
a third location c. The distance from a to b plus the distance from b to c is greater
than or equal to the distance from a to c. The latter principle is known as the triangle
inequality. In summary, given three vertices u, v, w in a graph G, the distance function
d on G satisfies the following property.

Lemma 2.5. Path distance as metric function. Let G = (V, E) be a graph with
weight function w : E −→ R. Define a distance function d : V × V −→ R given by
                 (
                  ∞,                               if there are no paths from u to v,
     d(u, v) =
                  min{w(W ) | W is a u-v walk}, otherwise.

Then d is a metric on V if it satisfies the following properties:

  1. Nonnegativity: d(u, v) ≥ 0 with d(u, v) = 0 if and only if u = v.

  2. Symmetry: d(u, v) = d(v, u).

  3. Triangle inequality: d(u, v) + d(v, w) ≥ d(u, w).

    The pair (V, d) is called a metric space, where the word “metric” refers to the distance
function d. Any graphs we consider are assumed to have finite sets of vertices. For this
reason, (V, d) is also known as a finite metric space. The distance matrix D = [d(vi , vj )]
of a connected graph is the distance matrix of its finite metric space. The topic of metric
space is covered in further details in topology texts such as Runde [171] and Shirali and
Vasudeva [176]. See Buckley and Harary [43] for an in-depth coverage of the distance
concept in graph theory.
    Many different algorithms exist for computing a shortest path in a weighted graph.
Some only work if the graph has no negative weight cycles. Some assume that there is a
single start or source vertex. Some compute the shortest paths from any vertex to any
other and also detect if the graph has a negative weight cycle. No matter what algorithm
is used for the special case of nonnegative weights, the length of the shortest path can
neither equal nor exceed the order of the graph.

Lemma 2.6. Fix a vertex v in a connected graph G = (V, E) of order n = |V |. If there
are no negative weight cycles in G, then there exists a shortest path from v to any other
vertex w ∈ V that uses at most n − 1 edges.

Proof. Suppose that G contains no negative weight cycles. Observe that at most n − 1
edges are required to construct a path from v to any vertex w (Proposition 1.13). Let P
denote such a path:
                             P : v0 = v, v1 , v2 , . . . , vk = w.
Since G has no negative weight cycles, the weight of P is no less than the weight of
P 0 , where P 0 is the same as P except that all cycles have been removed. Thus, we can
remove all cycles from P and obtain a v-w path P 0 of lower weight. Since the final path
is acyclic, it must have no more than n − 1 edges.
72                                                         Chapter 2. Graph Algorithms

 Algorithm 2.4: A template for shortest path algorithms.
  Input: A weighted graph or digraph G = (V, E), where the vertices are numbered
          as V = {1, 2, . . . , n}. A starting vertex s.
  Output: A list D of distances from s to all other vertices. A list P of parent
            vertices such that P [v] is the parent of v.
 1   D ← [∞, ∞, . . . , ∞]                   /* n copies of ∞ */
 2   C ← list of candidate vertices to visit
 3   while length(C) > 0 do
 4      select v ∈ C
 5      C ← remove(C, v)
 6      for each u ∈ adj(v) do
 7          if D[u] > D[v] + w(vu) then
 8              D[u] ← D[v] + w(vu)
 9              P [u] ← v
10              if u ∈/ C then
11                  add u to C
12   return (D, P )


    Having defined weights and distances, we are now ready to discuss shortest path
algorithms for weighted graphs. The breadth-first search Algorithm 2.1 can be applied
where each edge has unit weight. Moving on to the general case of graphs with positive
edge weights, algorithms for determining shortest paths in such graphs can be classified
as weight-setting or weight-correcting [83]. A weight-setting method traverses a graph
and assigns weights that, once assigned, remain unchanged for the duration of the al-
gorithm. Weight-setting algorithms cannot deal with negative weights. On the other
hand, a weight-correcting method is able to change the value of a weight many times
while traversing a graph. In contrast to a weight-setting algorithm, a weight-correcting
algorithm is able to deal with negative weights, provided that the weight sum of any
cycle is nonnegative. The term negative cycle refers to the weight sum s of a cycle such
that s < 0. Some algorithms halt upon detecting a negative cycle; examples of such
algorithms include the Bellman-Ford and Johnson’s algorithms.
    Algorithm 2.4 is a general template for many shortest path algorithms. With a tweak
here and there, one could modify it to suit the problem at hand. Note that w(vu) is the
weight of the edge vu. If the input graph is undirected, line 6 considers all the neighbors
of v. For digraphs, we are interested in out-neighbors of v and accordingly we replace
“u ∈ adj(v)” in line 6 with “u ∈ oadj(v)”. The general flow of Algorithm 2.4 follows the
same pattern as depth-first and breadth-first searches.
2.4. Dijkstra’s algorithm                                                                 73

2.4      Dijkstra’s algorithm




      — Randall Munroe, xkcd, http://xkcd.com/342/

Dijkstra’s algorithm [61], discovered by E. W. Dijkstra in 1959, is a graph search algo-
rithm that solves the single-source shortest path problem for a graph with nonnegative
edge weights. The algorithm is a generalization of breadth-first search. Imagine that
the vertices of a weighted graph represent cities and edge weights represent distances
between pairs of cities connected by a direct road. Dijkstra’s algorithm can be used to
find a shortest route from a fixed city to any other city.
    Let G = (V, E) be a (di)graph with nonnegative edge weights. Fix a start or source
vertex s ∈ V . Dijkstra’s Algorithm 2.5 performs a number of steps, basically one step
for each vertex in V . First, we initialize a list D with n copies of ∞ and then assign 0 to
D[s]. The purpose of the symbol ∞ is to denote the largest possible value. The list D is
to store the distances of all shortest paths from s to any other vertices in G, where we
take the distance of s to itself to be zero. The list P of parent vertices is initially empty
and the queue Q is initialized to all vertices in G. We now consider each vertex in Q,
removing any vertex after we have visited it. The while loop starting on line 5 runs until
we have visited all vertices. Line 6 chooses which vertex to visit, preferring a vertex v
whose distance value D[v] from s is minimal. After we have determined such a vertex v,
we remove it from the queue Q to signify that we have visited v. The for loop starting
on line 8 adjusts the distance values of each neighbor u of v such that u is also in Q. If
G is directed, we only consider out-neighbors of v that are also in Q. The conditional
starting on line 9 is where the adjustment takes place. The expression D[v] + w(vu)
sums the distance from s to v and the distance from v to u. If this total sum is less than
the distance D[u] from s to u, we assign this lesser distance to D[u] and let v be the
parent vertex of u. In this way, we are choosing a neighbor vertex that results in minimal
distance from s. Each pass through the while loop decreases the number of elements in
Q by one without adding any elements to Q. Eventually, we would exit the while loop
and the algorithm returns the lists D and P .

Example 2.7. Apply Dijkstra’s algorithm to the graph in Figure 2.10(a), with starting
vertex v1 .

Solution. Dijkstra’s Algorithm 2.5 applied to the graph in Figure 2.10(a) yields the
sequence of intermediary graphs shown in Figure 2.10, culminating in the final shortest
paths graph of Figure 2.10(f) and Table 2.4. For any column vi in the table, each 2-tuple
represents the distance and parent vertex of vi . As we move along the graph, processing
vertices according to Dijkstra’s algorithm, the distance and parent vertex of a column
74                                                                       Chapter 2. Graph Algorithms

 Algorithm 2.5: A general template for Dijkstra’s algorithm.
  Input: An undirected or directed graph G = (V, E) that is weighted and has no
          self-loops. The order of G is n > 0. A vertex s ∈ V from which to start
          the search. Vertices are numbered from 1 to n, i.e. V = {1, 2, . . . , n}.
  Output: A list D of distances such that D[v] is the distance of a shortest path
            from s to v. A list P of vertex parents such that P [v] is the parent of v,
            i.e. v is adjacent from P [v].
 1   D ← [∞, ∞, . . . , ∞]                 /* n copies of ∞ */
 2   D[s] ← 0
 3   P ← []
 4   Q←V                        /* list of nodes to visit */
 5   while length(Q) > 0 do
 6      find v ∈ Q such that D[v] is minimal
 7      Q ← remove(Q, v)
 8      for each u ∈ adj(v) ∩ Q do
 9          if D[u] > D[v] + w(vu) then
10             D[u] ← D[v] + w(vu)
11             P [u] ← v
12   return (D, P )

                              2                                                       2
                 v2                    v4                                v2                    v4


          10              1                      7             10                 1                      7
                                   8                                                       8
                      4                     9                                 4                     9

     v1                       v3                     v5   v1                          v3                     v5

                  3                    2                                 3                     2

                  (a) Original digraph.                             (b) First iteration of while loop.

                              2                                                       2
                 v2                    v4                                v2                    v4


          10              1                      7             10                 1                      7
                                   8                                                       8
                      4                     9                                 4                     9

     v1                       v3                     v5   v1                          v3                     v5

                  3                    2                                 3                     2

           (c) Second iteration of while loop.                      (d) Third iteration of while loop.

                              2                                                       2
                 v2                    v4                                v2                    v4


          10              1                      7
                                   8
                      4                     9                                 4

     v1                       v3                     v5   v1                          v3                     v5

                  3                    2                                 3                     2

           (e) Fourth iteration of while loop.                       (f) Final shortest paths graph.

               Figure 2.10: Searching a weighted digraph using Dijkstra’s algorithm.
2.4. Dijkstra’s algorithm                                                                       75

                          v1         v2       v3               v4       v5
                        (0, −)    (∞, −) (∞, −)             (∞, −) (∞, −)
                                  (10, v1 ) (3, v1 )        (11, v3 ) (5, v3 )
                                   (7, v3 )                  (9, v2 )

                     Table 2.4: Stepping through Dijkstra’s algorithm.

are updated. The underlined 2-tuple represents the final distance and parent vertex
produced by Dijkstra’s algorithm. From Table 2.4, we have the following shortest paths
and distances:
                          v1 -v2 : v1 , v3 , v2 d(v1 , v2 ) = 7
                              v1 -v3 : v1 , v3              d(v1 , v3 ) = 3
                              v1 -v4 : v1 , v3 , v2 , v4    d(v1 , v4 ) = 9
                              v1 -v5 : v1 , v3 , v5         d(v1 , v5 ) = 5
Intermediary vertices for a u-v path are obtained by starting from v and work backward
using the parent of v, then the parent of the parent, and so on.
   Dijkstra’s algorithm is an example of a greedy algorithm. Whenever it tries to find the
next vertex, it chooses only that vertex that minimizes the total weight so far. Greedy
algorithms may not produce the best possible result. However, as the following theorem
shows, Dijkstra’s algorithm does indeed produce shortest paths.
Theorem 2.8. Correctness of Algorithm 2.5. Let G = (V, E) be a weighted
(di)graph with a nonnegative weight function w. When Dijkstra’s algorithm is applied to
G with source vertex s ∈ V , the algorithm terminates with D[u] = d(s, u) for all u ∈ V .
Furthermore, if D[v] 6= ∞ and v 6= s, then s = u1 , u2 , . . . , uk = v is a shortest s-v path
such that ui−1 = P [ui ] for i = 2, 3, . . . , k.
Proof. If G is disconnected, then any v ∈ V that cannot be reached from s has distance
D[v] = ∞ upon algorithm termination. Hence, it suffices to consider the case where G
is connected. Let V = {s = v1 , v2 , . . . , vn } and use induction on i to show that after
visiting vi we have
                     D[v] = d(s, v)           for all v ∈ Vi = {v1 , v2 , . . . , vi }.      (2.6)
For i = 1, equality holds. Assume for induction that (2.6) holds for some 1 ≤ i ≤ n − 1,
so that now our task is to show that (2.6) holds for i + 1. To verify D[vi+1 ] = d(s, vi+1 ),
note that by our inductive hypothesis,
            D[vi+1 ] = min {d(s, v) + w(vu) | v ∈ Vi and u ∈ adj(v) ∩ (Q\Vi )}
and respectively
            D[vi+1 ] = min {d(s, v) + w(vu) | v ∈ Vi and u ∈ oadj(v) ∩ (Q\Vi )}
if G is directed. Therefore, D[vi+1 ] = d(s, vi+1 ).
    Let v ∈ V such that D[v] 6= ∞ and v 6= s. We now construct an s-v path. When
Algorithm 2.5 terminates, we have D[v] = D[v1 ] + w(v1 v), where P [v] = v1 and d(s, v) =
d(s, v1 ) + w(v1 v). This means that v1 is the second-to-last vertex in a shortest s-v path.
Repeated application of this process using the parent list P , we eventually produce a
shortest s-v path s = vm , vm−1 , . . . , v1 , v, where P [vi ] = vi+1 for i = 1, 2, . . . , m − 1.
76                                                         Chapter 2. Graph Algorithms

    To analyze the worst case time complexity of Algorithm 2.5, note that initializing D
takes O(n + 1) and initializing Q takes O(n), for a total of O(n) devoted to initialization.
Each extraction of a vertex v with minimal D[v] requires O(n) since we search through
the entire list Q to determine the minimum value, for a total of O(n2 ). Each insertion
into D requires constant time and the same holds for insertion into P . Thus, insertion
into D and P takes O(|E| + |E|) = O(|E|), which require at most O(n) time. In the
worst case, Dijkstra’s Algorithm 2.5 has running time O(n2 + n) = O(n2 ).
    Can we improve the run time of Dijkstra’s algorithm? The time complexity of Dijk-
stra’s algorithm depends on its implementation. With a simple list implementation as
presented in Algorithm 2.5, we have a worst case time complexity of O(n2 ), where n is
the order of the graph under consideration. Let m be the size of the graph. Table 2.5
presents time complexities of Dijkstra’s algorithm for various implementations. Out of
all the four implementations in this table, the heap implementations are much more
efficient than the list implementation presented in Algorithm 2.5. A heap is a type of
tree, a topic which will be covered in Chapter 3. Of all the heap implementations in
Table 2.5, the Fibonacci heap implementation [82] yields the best runtime. Chapter 4
discusses how to use trees for efficient implementations of priority queues via heaps.

                           Implementation Time complexity
                           list           O(n2 )
                                                         
                           binary heap    O (n + m) ln n
                                                          
                           k-ary heap     O (kn + m) ln n
                                                     ln k
                           Fibonacci heap      O(n ln n + m)

Table 2.5: Implementation specific worst-case time complexity of Dijkstra’s algorithm.



2.5      Bellman-Ford algorithm




      — Randall Munroe, xkcd, http://xkcd.com/69/


A disadvantage of Dijkstra’s Algorithm 2.5 is that it cannot handle graphs with negative
edge weights. The Bellman-Ford algorithm computes single-source shortest paths in
a weighted graph or digraph, where some of the edge weights may be negative. This
algorithm is a modification of the one published in 1957 by Richard E. Bellman [21] and
that by Lester Randolph Ford, Jr. [79] in 1956. Shimbel [175] independently discovered
the same method in 1955, and Moore [152] in 1959. In contrast to the “greedy” approach
that Dijkstra’s algorithm takes, i.e. searching for the “cheapest” path, the Bellman-Ford
algorithm searches over all edges and keeps track of the shortest one found as it searches.
   The Bellman-Ford Algorithm 2.6 runs in time O(mn), where m and n are the size
and order of an input graph, respectively. To see this, note that the initialization on
2.6. Floyd-Roy-Warshall algorithm                                                      77

 Algorithm 2.6: The Bellman-Ford algorithm.
  Input: An undirected or directed graph G = (V, E) that is weighted and has no
          self-loops. Negative edge weights are allowed. The order of G is n > 0. A
          vertex s ∈ V from which to start the search. Vertices are numbered from
          1 to n, i.e. V = {1, 2, . . . , n}.
  Output: A list D of distances such that D[v] is the distance of a shortest path
            from s to v. A list P of vertex parents such that P [v] is the parent of v,
            i.e. v is adjacent from P [v]. If G has negative-weight cycles, then return
            False. Otherwise, return D and P .
 1   D ← [∞, ∞, . . . , ∞]                        /* n copies of ∞ */
 2   D[s] ← 0
 3   P ← []
 4   for i ← 1, 2, . . . , n − 1 do
 5      for each edge uv ∈ E do
 6          if D[v] > D[u] + w(uv) then
 7             D[v] ← D[u] + w(uv)
 8             P [v] ← u
 9   for each edge uv ∈ E do
10      if D[v] > D[u] + w(uv) then
11          return False
12   return (D, P )


lines 1 to 3 takes O(n). Each of the n − 1 rounds of the for loop starting on line 4 takes
O(m), for a total of O(mn) time. Finally, the for loop starting on line 9 takes O(m).
    The loop starting on line 4 performs at most n − 1 updates of the distance D[v] of
each head of an edge. Many graphs have sizes that are less then n − 1, resulting in
a number of redundant rounds of updates. To avoid such redundancy, we could add
an extra check in the outer loop spanning lines 4 to 8 to immediately terminate that
outer loop after any round that did not result in an update of any D[v]. Algorithm 2.7
presents a modification of the Bellman-Ford Algorithm 2.6 that avoids redundant rounds
of updates.


2.6       Floyd-Roy-Warshall algorithm
       The shortest distance between two points is not a very interesting journey.
       — R. Goldberg

Let D be a weighted digraph of order n and size m. Dijkstra’s Algorithm 2.5 and
the Bellman-Ford Algorithm 2.6 can be used to determine shortest paths from a single
source vertex to all other vertices of D. To determine a shortest path between each pair
of distinct vertices in D, we repeatedly apply either of these algorithms to each vertex
of D. Such repeated application of Dijkstra’s and the Bellman-Ford algorithms results
in algorithms that run in time O(n3 ) and O(n2 m), respectively.
    The Floyd-Roy-Warshall algorithm (FRW), or the Floyd-Warshall algorithm, is an
algorithm for finding shortest paths in a weighted, directed graph. Like the Bellman-
Ford algorithm, it allows for negative edge weights and detects a negative weight cycle
if one exists. Assuming that there are no negative weight cycles, a single execution of
78                                                       Chapter 2. Graph Algorithms




 Algorithm 2.7: The Bellman-Ford algorithm with checks for redundant updates.
  Input: An undirected or directed graph G = (V, E) that is weighted and has no
          self-loops. Negative edge weights are allowed. The order of G is n > 0. A
          vertex s ∈ V from which to start the search. Vertices are numbered from
          1 to n, i.e. V = {1, 2, . . . , n}.
  Output: A list D of distances such that D[v] is the distance of a shortest path
            from s to v. A list P of vertex parents such that P [v] is the parent of v,
            i.e. v is adjacent from P [v]. If G has negative-weight cycles, then return
            False. Otherwise, return D and P .
 1   D ← [∞, ∞, . . . , ∞]                /* n copies of ∞ */
 2   D[s] ← 0
 3   P ← []
 4   for i ← 1, 2, . . . , n − 1 do
 5      updated ← False
 6      for each edge uv ∈ E do
 7          if D[v] > D[u] + w(uv) then
 8              D[v] ← D[u] + w(uv)
 9              P [v] ← u
10              updated ← True
11      if updated = False then
12          exit the loop
13   for each edge uv ∈ E do
14      if D[v] > D[u] + w(uv) then
15          return False
16   return (D, P )
2.6. Floyd-Roy-Warshall algorithm                                                            79

the FRW algorithm will find the shortest paths between all pairs of vertices. It was
discovered independently by Bernard Roy [170] in 1959, Robert Floyd [78] in 1962, and
by Stephen Warshall [195] in 1962.
    In some sense, the FRW algorithm is an example of dynamic programming, which
allows one to break the computation into simpler steps using some sort of recursive
procedure. The rough idea is as follows. Temporarily label the vertices of a weighted
digraph G as V = {1, 2, . . . , n} with n = |V (G)|. Let W = [w(i, j)] be the weight matrix
of G where                              
                                        
                                         w(ij), if ij ∈ E(G),
                                        
                               w(i, j) = 0,        if i = j,                          (2.7)
                                        
                                        
                                        
                                          ∞,       otherwise.
Let Pk (i, j) be a shortest path from i to j such that its intermediate vertices are in
{1, 2, . . . , k}. Let Dk (i, j) be the weight (or distance) of Pk (i, j). If no shortest i-j
paths exist, define Pk (i, j) = ∞ and Dk (i, j) = ∞ for all k ∈ {1, 2, . . . , n}. If k = 0,
then P0 (i, j) : i, j since no intermediate vertices are allowed in the path and hence
D0 (i, j) = w(i, j). In other words, if i and j are adjacent, a shortest i-j path is the
edge ij itself and the weight of this path is simply the weight of ij. Now consider
Pk (i, j) for k > 0. Either Pk (i, j) passes through k or it does not. If k is not on the
path Pk (i, j), then the intermediate vertices of Pk (i, j) are in {1, 2, . . . , k − 1}, as are
the vertices of Pk−1 (i, j). In case Pk (i, j) contains the vertex k, then Pk (i, j) traverses
k exactly once by the definition of path. The i-k subpath in Pk (i, j) is a shortest i-k
path whose intermediate vertices are drawn from {1, 2, . . . , k − 1}, which is also the set
of intermediate vertices for the k-j subpath in Pk (i, j). That is, to obtain Pk (i, j), we
take the union of the paths Pk−1 (i, k) and Pk−1 (k, j). We compute the weight Dk (i, j)
of Pk (i, j) using the expression
                             (
                              w(i, j),                                     if k = 0,
                 Dk (i, j) =                                                               (2.8)
                              min{Dk−1 (i, j), Dk−1 (i, k) + Dk−1 (k, j)}, if k > 0.

    The key to the Floyd-Roy-Warshall algorithm lies in exploiting expression (2.8). If
n = |V |, then this is a O(n3 ) time algorithm. For comparison, the Bellman-Ford al-
gorithm has complexity O(|V | · |E|), which is O(n3 ) time for dense graphs. However,
Bellman-Ford only yields the shortest paths emanating from a single vertex. To achieve
comparable output, we would need to iterate Bellman-Ford over all vertices, which would
be an O(n4 ) time algorithm for dense graphs. Except possibly for sparse graphs, Floyd-
Roy-Warshall is better than an iterated implementation of Bellman-Ford. Note that
Pk (i, k) = Pk−1 (i, k) and Pk (k, i) = Pk−1 (k, i), consequently Dk (i, k) = Dk−1 (i, k) and
Dk (k, i) = Dk−1 (k, i). This observation allows us to replace Pk (i, j) with P (i, j) for
k = 1, 2, . . . , n. The final results of P (i, j) and D(i, k) are the same as Pn (i, j) and
Dn (i, j), respectively. Algorithm 2.8 summarizes the above discussion into an algorith-
mic presentation.
    Like the Bellman-Ford algorithm, the Floyd-Roy-Warshall algorithm can also detect
the presence of negative weight cycles. If G is a weighted digraph without self-loops,
by (2.7) we have D(i, i) = 0 for i = 1, 2, . . . , n. Any path p starting and ending at i
could only improve upon the initial weight of 0 if the weight sum of p is less than zero, i.e.
a negative weight cycle. Upon termination of Algorithm 2.8, if D(i, i) < 0, we conclude
that there is a path starting and ending at i whose weight sum is negative.
80                                                                         Chapter 2. Graph Algorithms

 Algorithm 2.8: The Floyd-Roy-Warshall algorithm for all-pairs shortest paths.
  Input: A weighted digraph G = (V, E) that has no self-loops. Negative edge
          weights are allowed. The order of G is n > 0. Vertices are numbered from
          1 to n, i.e. V = {1, 2, . . . , n}. The weight matrix W = [w(i, j)] of G as
          defined in (2.7).
  Output: A matrix P = [aij ] of shortest paths in G. A matrix D = [aij ] of
            distances where D[i, j] is the weight (or distance) of a shortest i-j path
            in G.
 1   n ← |V |
 2   P [aij ] ← an n × n zero matrix
 3   D[aij ] ← W [w(i, j)]
 4   for k ← 1, 2, . . . , n do
 5       for i ← 1, 2, . . . , n do
 6            for j ← 1, 2, . . . , n do
 7               if D[i, j] > D[i, k] + D[k, j] then
 8                   P [i, j] ← k
 9                   D[i, j] ← D[i, k] + D[k, j]
10   return (P, D)


     Here is an implementation in Sage.
def fl oy d_roy_warshall ( A ):
    """
    Shortest paths

      INPUT :

      - A -- weighted adjacency matrix
      OUTPUT :

      - dist -- a matrix of distances of shortest paths .
      - paths -- a matrix of shortest paths .
      """
      G = Graph (A , format = " w e i g h t e d _ a d j a c e n c y _ m a tr i x " )
      V = G . vertices ()
      E = [( e [0] , e [1]) for e in G . edges ()]
      n = len ( V )
      dist = [[0]* n for i in range ( n )]
      paths = [[ -1]* n for i in range ( n )]
      # initialization step
      for i in range ( n ):
          for j in range ( n ):
                if (i , j ) in E :
                       paths [ i ][ j ] = j
                if i == j :
                       dist [ i ][ j ] = 0
                elif A [ i ][ j ] < >0:
                       dist [ i ][ j ] = A [ i ][ j ]
                else :
                       dist [ i ][ j ] = infinity
      # iteratively finding the shortest path
      for j in range ( n ):
          for i in range ( n ):
                if i <> j :
                       for k in range ( n ):
                            if k <> j :
                                   if dist [ i ][ k ] > dist [ i ][ j ]+ dist [ j ][ k ]:
                                        paths [ i ][ k ] = V [ j ]
                                   dist [ i ][ k ] = min ( dist [ i ][ k ] , dist [ i ][ j ] + dist [ j ][ k ])
      for i in range ( n ):
          if dist [ i ][ i ] < 0:
                raise ValueError , " A negative edge weight cycle exists . "
2.6. Floyd-Roy-Warshall algorithm                                                            81

     return dist , matrix ( paths )

   Here are some examples.
sage : A = matrix ([[0 ,1 ,2 ,3] , [0 ,0 ,2 ,1] , [ -5 ,0 ,0 ,3] , [1 ,0 ,1 ,0]]); A
sage : f lo yd_roy_warshall ( A )
Traceback ( click to the left of this block for traceback )
...
ValueError : A negative edge weight cycle exists .

   The plot of this weighted digraph with four vertices appears in Figure 2.11.

                                                  1


                               3                  3                  2




                                             2


                          3    1                                          2


                                             1          5




                               0                                     1


                                                  1



               Figure 2.11: Demonstrating the Floyd-Roy-Warshall algorithm.

sage :   A = matrix ([[0 ,1 ,2 ,3] , [0 ,0 ,2 ,1] , [ -1/2 ,0 ,0 ,3] , [1 ,0 ,1 ,0]]); A
sage :   f lo yd_roy_warshall ( A )
([[0 ,   1 , 2 , 2] , [3/2 , 0 , 2 , 1] , [ -1/2 , 1/2 , 0 , 3/2] , [1/2 , 3/2 , 1 , 0]] ,
  [ -1     1 2 1]
  [ 2    -1 2 3]
  [ -1     0 -1 1]
  [ 2      2 -1 -1])

   The plot of this weighted digraph with four vertices appears in Figure 2.12.

Example 2.9. Section 1.6 briefly presented the concept of molecular graphs in chem-
istry. The Wiener number of a molecular graph was first published in 1947 by Harold
Wiener [202] who used it in chemistry to study properties of alkanes. Other applica-
tions [93] of the Wiener number to chemistry are now known. If G = (V, E) is a
connected graph with vertex set V = {v1 , v2 , . . . , vn }, then the Wiener number W of G is
defined by
                                            X
                                  W (G) =           d(vi , vj )                         (2.9)
                                                  i<j

where d(vi , vj ) is the distance from vi to vj . What is the Wiener number of the molecular
graph in Figure 2.13?

Solution. Consider the molecular graph in Figure 2.13 as directed with unit weight.
To compute the Wiener number of this graph, use the Floyd-Roy-Warshall algorithm to
obtain a distance matrix D = [di,j ], where di,j is the distance from vi to vj , and apply the
definition (2.9). The distance matrix resulting from the Floyd-Roy-Warshall algorithm
82                                                      Chapter 2. Graph Algorithms




                                        1



                          1                             2



                                        3



                   3              1     1                      2




                              1                  −0.5

                          3                             2



                                        0


     Figure 2.12: Another demonstration of the Floyd-Roy-Warshall algorithm.




           Figure 2.13: Molecular graph of 1,1,3-trimethylcyclobutane.
2.6. Floyd-Roy-Warshall algorithm                                                                 83

is                                                               
                                     0       2   1   2   3   2   4
                                    2       0   1   2   3   2   4
                                                                 
                                    1       1   0   1   2   1   3
                                                                 
                                 M =
                                    2       2   1   0   1   2   2
                                                                  .
                                    3       3   2   1   0   1   1
                                                                 
                                    2       2   1   2   1   0   2
                                     4       4   3   2   1   2   0
Sum all entries in the upper (or lower) triangular of M to obtain the Wiener number
W = 42. Using Sage, we have
sage :   G =   Graph ({1:[3] , 2:[3] , 3:[4 ,6] , 4:[5] , 6:[5] , 5:[7]})
sage :   D =   G . sh or t es t _p at h _a l l_ pa i rs ()[0]
sage :   M =   [ D [ i ][ j ] for i in D for j in D [ i ]]
sage :   M =   matrix (M , nrows =7 , ncols =7)
sage :   W =   0
sage :   for   i in range ( M . nrows () - 1):
...            for j in range ( i +1 , M . ncols ()):
...                    W += M [i , j ]
sage :   W
42

which verifies our computation above. See Gutman et al. [93] for a survey of some results
concerning the Wiener number.

2.6.1        Transitive closure
Consider a digraph G = (V, E) of order n = |V |. The transitive closure of G is defined
as the digraph G∗ = (V, E ∗ ) having the same vertex set as G. However, the edge set
E ∗ of G∗ consists of all edges uv such that there is a u-v path in G and uv ∈           / E. The
                      ∗
transitive closure G answers an important question about G: If u and v are two distinct
vertices of G, are they connected by a path with length ≥ 1?
    To compute the transitive closure of G, we let each edge of G be of unit weight and
apply the Floyd-Roy-Warshall Algorithm 2.8 on G. By Proposition 1.13, for any i-j path
in G we have D[i, j] < n, and if there are no paths from i to j in G, we have D[i, j] = ∞.
This procedure for computing transitive closure runs in time O(n3 ).
    Modifying the Floyd-Roy-Warshall algorithm slightly, we obtain an algorithm for
computing transitive closure that, in practice, is more efficient than Algorithm 2.8 in
terms of time and space. Instead of using the operations min and + as is the case in the
Floyd-Roy-Warshall algorithm, we replace these operations with the logical operations
∨ (logical OR) and ∧ (logical AND), respectively. For i, j, k = 1, 2, . . . , n, define Tk (i, j) = 1
if there is an i-j path in G with all intermediate vertices belonging to {1, 2, . . . , k}, and
Tk (i, j) = 0 otherwise. Thus, the edge ij belongs to the transitive closure G∗ if and only
if Tk (i, j) = 1. The definition of Tk (i, j) can be cast in the form of a recursive definition
as follows. For k = 0, we have
                                         (
                                           0, if i 6= j and ij ∈
                                                               / E,
                             T0 (i, j) =
                                           1, if i = j or ij ∈ E
and for k > 0, we have
                                                                           
                        Tk (i, j) = Tk−1 (i, j) ∨ Tk−1 (i, k) ∧ Tk−1 (k, j) .
We need not use the subscript k at all and instead let T be a boolean matrix such that
T [i, j] = 1 if and only if there is an i-j path in G, and T [i, j] = 0 otherwise. Using
84                                                                Chapter 2. Graph Algorithms

the above notations, the Floyd-Roy-Warshall algorithm is translated to Algorithm 2.9
for obtaining the boolean matrix T . We can then use T and the definition of transitive
closure to obtain the edge set E ∗ in the transitive closure G∗ = (V, E ∗ ) of G = (V, E).
    A more efficient transitive closure algorithm can be found in the PhD thesis of Esko
Nuutila [160]. See also the method of four Russians [2,8]. The transitive closure algorithm
as presented in Algorithm 2.9 is due to Stephen Warshall [195]. It is a special case of a
more general algorithm in automata theory due to Stephen Kleene [120], called Kleene’s
algorithm.

 Algorithm 2.9: Variant of the Floyd-Roy-Warshall algorithm for transitive closure.
  Input: A digraph G = (V, E) that has no self-loops. Vertices are numbered from
          1 to n, i.e. V = {1, 2, . . . , n}.
  Output: The boolean matrix T such that T [i, j] = 1 if and only if there is an i-j
            path in G, and T [i, j] = 0 otherwise.
 1   n ← |V |
 2   T ← adjacency matrix of G
 3   for k ← 1, 2, . . . , n do
 4      for i ← 1, 2, . . . , n do
 5         for j ← 1, 2, . . . , n do                   
 6             T [i, j] ← T [i, j] ∨ T [i, k] ∧ T [k, j]
 7   return T




2.7       Johnson’s algorithm
       The shortest distance between two points is under construction.
       — Noelie Altito

Let G = (V, E) be a sparse digraph with edge weights but no negative cycles. Johnson’s
algorithm [112] finds a shortest path between each pair of vertices in G. First published
in 1977 by Donald B. Johnson, the main insight of Johnson’s algorithm is to combine
the technique of edge reweighting with the Bellman-Ford and Dijkstra’s algorithms. The
Bellman-Ford algorithm is first used to ensure that G has no negative cycles. Next,
we reweight edges in such a manner as to preserve shortest paths. The final stage
makes use of Dijkstra’s algorithm for computing shortest paths between all vertex pairs.
Pseudocode for Johnson’s algorithm is presented in Algorithm 2.10. With a Fibonacci
heap implementation of the minimum-priority queue, the time complexity for sparse
graphs is O(|V |2 log |V | + |V | · |E|), where n = |V | is the number of vertices of the
original graph G.
    To prove the correctness of Algorithm 2.10, we need to show that the new set of edge
weights produced by ŵ must satisfy two properties:
     1. The reweighted edges preserve shortest paths. That is, let p be a u-v path for
        u, v ∈ V . Then p is a shortest weighted path using weight function w if and only
        if p is also a shortest weighted path using weight function ŵ.

     2. The reweight function ŵ produces nonnegative weights. In other words, if u, v ∈ V
        then ŵ(uv) ≥ 0.
2.7. Johnson’s algorithm                                                                  85

 Algorithm 2.10: Johnson’s algorithm for sparse graphs.
  Input: A sparse weighted digraph G = (V, E), where the vertex set is
          V = {1, 2, . . . , n}.
  Output: If G has negative-weight cycles, then return False. Otherwise, return an
            n × n matrix D of shortest-path weights and a list P such that P [v] is a
            parent list resulting from running Dijkstra’s algorithm on G with start
            vertex v.
 1   s ← vertex not in V
 2   V 0 ← V ∪ {s}
 3   E 0 ← E ∪ {sv | v ∈ V }
 4   G0 ← digraph (V 0 , E 0 ) with weight w(sv) = 0 for all v ∈ V
 5   if BellmanFord(G0 , w, s) = False then
 6       return False
 7   d ← distance list returned by BellmanFord(G0 , w, s)
 8   for each edge uv ∈ E 0 do
 9       ŵ(uv) ← w(uv) + d[u] − d[v]
10   for each u ∈ V do
11       (δ̂, P̂ ) ← distance and parent lists returned by Dijkstra(G, ŵ, u)
12       P [u] ← P̂
13       for each v ∈ V do
14             D[u, v] ← δ̂[v] + d[v] − d[u]
15   return (D, P )


Both of these properties are proved in Lemma 2.10.

Lemma 2.10. Reweighting preserves shortest paths. Let G = (V, E) be a weighted
digraph having weight function w : E −→ R and let h : V −→ R be a mapping of vertices
to real numbers. Let ŵ be another weight function for G such that

                                ŵ(uv) = w(uv) + h(u) − h(v)

for all uv ∈ E. Suppose p : v0 , v1 , . . . , vk is any path in G. Then we have the following
results.

     1. The path p is a shortest v0 -vk path with weight function w if and only if it is a
        shortest v0 -vk path with weight function ŵ.

     2. The graph G has a negative cycle using weight function w if and only if G has a
        negative cycle using ŵ.

     3. If G has no negative cycles, then ŵ(uv) ≥ 0 for all uv ∈ E.

Proof. Write δ and δ̂ for the shortest path weights derived from w and ŵ, respectively.
To prove part 1, we need to show that w(p) = δ(v0 , vk ) if and only if ŵ(p) = δ̂(v0 , vk ).
86                                                                     Chapter 2. Graph Algorithms

First, note that any v0 -vk path p satisfies ŵ(p) = w(p) + h(v0 ) − h(vk ) because
                                    k
                                    X
                         ŵ(p) =          ŵ(vi−1 vi )
                                    i=1
                                    Xk
                                                                          
                                =          w(vi−1 vi ) + h(vi−1 ) − h(vi )
                                    i=1
                                    k
                                    X                     k
                                                          X                      
                                =         w(vi−1 vi ) +         h(vi−1 ) − h(vi )
                                    i=1                   i=1
                                    Xk
                                =         w(vi−1 vi ) + h(v0 ) − h(vk )
                                    i=1
                                = w(p) + h(v0 ) − h(vk ).

Any v0 -vk path shorter than p and using weight function w is also shorter using ŵ.
Therefore, w(p) = δ(v0 , vk ) if and only if ŵ(p) = δ̂(v0 , vk ).
    To prove part 2, consider any cycle c : v0 , v1 , . . . , vk where v0 = vk . Using the proof
of part 1, we have

                                    ŵ(c) = w(c) + h(v0 ) − h(vk )
                                          = w(c)

thus showing that c is a negative cycle using w if and only if it is a negative cycle using
ŵ.
    To prove part 3, we construct a new graph G0 = (V 0 , E 0 ) as follows. Consider a vertex
s∈ / V and let V 0 = V ∪ {s} and E 0 = E ∪ {sv | v ∈ V }. Extend the weight function w
to include w(sv) = 0 for all v ∈ V . By construction, s has no incoming edges and any
path in G0 that contains s has s as the source vertex. Thus G0 has no negative cycles if
and only if G has no negative cycles. Define the function h : V −→ R by v 7→ δ(s, v)
with domain V 0 . By the triangle inequality (see Lemma 2.5),

                  δ(s, u) + w(uv) ≥ δ(s, v)              ⇐⇒      h(u) + w(uv) ≥ h(v)

thereby showing that ŵ(uv) = w(uv) + h(u) − h(v) ≥ 0.


2.8      Problems
      I believe that a scientist looking at nonscientific problems is just as dumb as the next guy.
      — Richard Feynman

 2.1. The Euclidean algorithm is one of the oldest known algorithms. Given two positive
      integers a and b with a ≥ b, let a mod b be the remainder obtained upon dividing
      a by b. The Euclidean algorithm determines the greatest common divisor gcd(a, b)
      of a and b. The procedure is summarized in Algorithm 2.11. Refer to Chabert [48]
      for a history of algorithms from ancient to modern times.

       (a) Implement Algorithm 2.11 in Sage and use your implementation to compute
           the greatest common divisors of various pairs of integers. Use the built-in
           Sage command gcd to verify your answer.
2.8. Problems                                                                             87

 Algorithm 2.11: The Euclidean algorithm.
  Input: Two integers a > 0 and b ≥ 0 with a ≥ b.
  Output: The greatest common divisor of a and b.
 1   x←a
 2   y←b
 3   while y 6= 0 do
 4      r ← x mod y
 5      x←y
 6      y←r
 7   return x


        (b) Modify Algorithm 2.11 to compute the greatest common divisor of any pair
            of integers.

2.2. Given a polynomial p(x) = an xn + an−1 xn−1 + · · · + a1 x + a0 of degree n, we can use
     Horner’s method [104] to efficiently evaluate p at a specific value x = x0 . Horner’s
     method evaluates p(x) by expressing the polynomial as
                                   n
                                   X
                          p(x) =         ai xi = (· · · (an x + an−1 )x + · · · )x + a0
                                   i=0

       to obtain Algorithm 2.12.

        (a) Compare the runtime of polynomial evaluation using equation (2.2) and Horner’s
            method.
        (b) Let v be a bit vector read using big-endian order. Write a Sage function that
            uses Horner’s method to compute the integer representation of v.
        (c) Modify Algorithm 2.12 to evaluate the integer representation of a bit vector
            v read using little-endian order. Hence, write a Sage function to convert v to
            its integer representation.

 Algorithm 2.12: Polynomial evaluation using Horner’s method.
                               P
  Input: A polynomial p(x) = ni=0 ai xi , where an 6= 0 and x0 ∈ R.
  Output: An evaluation of p at x = x0 .
 1   b ← an
 2   for i ← n − 1, n − 2, . . . , 0 do
 3      b ← bx0 + ai
 4   return b


2.3. Let G = (V, E) be an undirected graph, let s ∈ V , and D is the list of distances
     resulting from running Algorithm 2.1 with G and s as input. Show that G is
     connected if and only if D[v] is defined for each v ∈ V .

2.4. Show that the worst-case time complexity of depth-first search Algorithm 2.2 is
     O(|V | + |E|).
88                                                          Chapter 2. Graph Algorithms

 2.5. Let D be the list of distances returned by Algorithm 2.2, let s be a starting vertex,
      and let v be a vertex such that D[v] 6= ∞. Show that D[v] is the length of any
      shortest path from s to v.

 2.6. Consider the graph in Figure 2.10 as undirected. Run this undirected version
      through Dijkstra’s algorithm with starting vertex v1 .
                                       1

                           v3                    v4
                                                            2

                                   3       1
                                                        1
                       1   2                     3                v5

                                   3

                                                            6
                           v2                    v1

                                       1


       Figure 2.14: Searching a directed house graph using Dijkstra’s algorithm.

 2.7. Consider the graph in Figure 2.14. Choose any vertex as a starting vertex and run
      Dijkstra’s algorithm over it. Now consider the undirected version of that digraph
      and repeat the exercise.

 2.8. For each vertex v of the graph in Figure 2.14, run breadth-first search over that
      graph with v as the starting vertex. Repeat the exercise for depth-first search.
      Compare the graphs resulting from the above exercises.

 2.9. A list data structure can be used to manage vertices and edges. If L is a nonempty
      list of vertices of a graph, we may want to know whether the graph contains a
      particular vertex. We could search the list L, returning True if L contains the vertex
      in question and False otherwise. Linear search is a simple searching algorithm.
      Given an object E for which we want to search, we consider each element e of L in
      turn and compare E to e. If at any point during our search we found a match, we
      halt the algorithm and output an affirmative answer. Otherwise, we have scanned
      through all elements of L and each of those elements do not match E. In this
      case, linear search reports that E is not in L. Our discussion is summarized in
      Algorithm 2.13.

      (a) Implement Algorithm 2.13 in Sage and test your implementation using the
          graphs presented in the figures of this chapter.
      (b) What is the maximum number of comparisons during the running of Algo-
          rithm 2.13? What is the average number of comparisons?
       (c) Why must the input list L be nonempty?

2.10. Binary search is a much faster searching algorithm than linear search. The binary
      search algorithm assumes that its input list is ordered in some manner. For sim-
      plicity, we assume that the input list L consists of positive integers. The main idea
      of binary search is to partition L into two halves: the left half and the right half.
      Our task now is to determine whether the object E of interest is in the left half or
2.8. Problems                                                                   89




 Algorithm 2.13: Linear search for lists.
  Input: A nonempty list L of vertices or edges. An object E for which we want to
          search in L.
  Output: True if E is in L; False otherwise.
 1   for each e ∈ L do
 2      if E = e then
 3          return True
 4   return False




 Algorithm 2.14: Binary search for lists of positive integers.
  Input: A nonempty list L of positive integers. Elements of L are sorted in
          nondecreasing order. An integer i for which we want to search in L.
  Output: True if i is in L; False otherwise.
 1   low ← 0
 2   high ← |L| − 1
 3   while low ≤ high do
 4      mid ← b low +2 high c
 5      if i = L[mid] then
 6          return True
 7      if i < L[mid] then
 8          high ← mid − 1
 9      else
10          low ← mid + 1
11   return False
90                                                               Chapter 2. Graph Algorithms

      the right half, and apply binary search recursively to the half in which E is located.
      Algorithm 2.14 provides pseudocode of our discussion of binary search.
       (a) Implement Algorithm 2.14 in Sage and test your implementation using the
           graphs presented in the figures of this chapter.
       (b) What is the worst case runtime of Algorithm 2.14? How does this compare
           to the worst case runtime of linear search?
       (c) Why must the input list L be sorted in nondecreasing order? Would Algo-
           rithm 2.14 work if L is sorted in nonincreasing order? If not, modify Algo-
           rithm 2.14 so that it works with an input list that is sorted in nonincreasing
           order.
       (d) Line 4 of Algorithm 2.14 uses the floor function to compute the index of the
           middle value. Would binary search still work if we use the ceiling function
           instead of the floor function?
       (e) An improvement on the time complexity of binary search is to not blindly use
           the middle value of the interval of interest, but to guess more precisely where
           the target falls within this interval. Interpolation search uses this heuristic
           to improve on the runtime of binary search. Provide an algorithm for inter-
           polation search, analyze its worst-case runtime, and compare its theoretical
           runtime efficiency with that of binary search (see pages 419–420 in Knuth [124]
           and pages 201–202 in Sedgewick [172]).
2.11. Let G be a simple undirected graph having distance matrix D = [d(vi , vj )], where
      d(vi , vj ) ∈ R denotes the shortest distance from vi ∈ V (G) to vj ∈ V (G). If
      vi = vj , we set d(vi , vj ) = 0. For each pair of distinct vertices (vi , vj ), we have
      d(vi , vj ) = d(vj , vi ). The i-j entry of D is also written as di,j and denotes the entry
      in row i and column j.
       (a) The total distance td(u) of a fixed vertex u ∈ V (G) is the sum of distances
           from u to each vertex in G:
                                                X
                                       td(u) =       d(u, v).
                                                   v∈V (G)

           If G is connected, i is the row index of vertex u in the distance matrix D, and
           j is the column index of u in D, show that the total distance of u is
                                               X          X
                                       td(u) =     di,k =     dk,j .                 (2.10)
                                                  k          k

       (b) Let the vertices of G be labeled V = {v1 , v2 , . . . , vn }, where n = |V (G)| is
           the order of G. The total distance td(G) of G is obtained by summing all the
           d(vi , vj ) for i < j. If G is connected, show that the total distance of G is equal
           to the sum of all entries in the upper (or lower) triangular of D:
                                                                              !
                                       X          X          1 XX
                             td(G) =       di,j =     di,j =           d(u, v) .         (2.11)
                                       i<j        i>j
                                                             2 u∈V v∈V

           Hence show that the total distance of G is equal to its Wiener number:
                                             td(G) = W (G).
2.8. Problems                                                                             91

      (c) Would equations (2.10) and (2.11) hold if G is not connected or directed?

2.12. The following result is from Yeh and Gutman [208]. Let G1 and G2 be graphs with
      orders ni = |V (Gi )| and sizes mi = |E(Gi )|, respectively.

      (a) If each of G1 and G2 is connected, show that the Wiener number of the
          Cartesian product G1 G2 is

                              W (G1 G2 ) = n22 · W (G1 ) + n21 · W (G2 ).

      (b) If G1 and G2 are arbitrary graphs, show that the Wiener number of the join
          G1 + G2 is

                       W (G1 + G2 ) = n21 − n1 + n22 − n2 + n1 n2 − m1 − m2 .

2.13. The following results originally appeared in Entringer et al. [70] and independently
      rediscovered many times since.

      (a) If Pn is the path graph on n ≥ 0 vertices, show that the Wiener number of
          Pn is W (Pn ) = 61 n(n2 − 1).
      (b) If Cn is the cycle graph on n ≥ 0 vertices, show that the Wiener number of
          Cn is                         (1
                                         8
                                           n(n2 − 1), if n is odd,
                              W (Cn ) =
                                         1 3
                                         8
                                           n,           if n is even.

      (c) If Kn is the complete graph on n vertices, show that its Wiener number is
          W (Kn ) = 21 n(n − 1).
      (d) Show that the Wiener number of the complete bipartite graph Km,n is

                              W (Km,n ) = mn + m(m − 1) + n(n − 1).

2.14. Consider the world map of major capital cities in Figure 2.16.

      (a) Run breadth- and depth-first searches over the graph in Figure 2.16 and com-
          pare your results.
      (b) Convert the graph in Figure 2.16 to a digraph as follows. Let 0 ≤ α ≤ 1 be a
          fixed threshold probability and let V = {v1 , . . . , vn } be the vertex set of the
          graph. For each edge vi vj , let 0 ≤ p ≤ 1 be its orientation probability and
          define the directedness dir(vi , vj ) by
                                                     (
                                                      vi vj , if p ≤ α,
                                   dir(vi , vj ) =
                                                      vj vi , otherwise.

           That is, dir(vi , vj ) takes the endpoints of an undirected edge vi vj and returns
           a directed version of this edge. The result is either the directed edge vi vj
           or the directed edge vj vi . Use the above procedure to convert the graph of
           Figure 2.16 to a digraph, and run breadth- and depth-first searches over the
           resulting digraph.
92                                                       Chapter 2. Graph Algorithms

      (c) Table 2.6 lists distances in kilometers between the major capital cities shown
          in Figure 2.16. Let those distances be the weights of the edges shown in Fig-
          ure 2.16. Repeatedly run Dijkstra’s algorithm over this undirected, weighted
          graph with each city as the start vertex. Use the procedure from the previous
          exercise to obtain a directed version of the graph in Figure 2.16 and repeat
          the current exercise with the resulting weighted digraph.
      (d) Repeat the previous exercise, but use the Bellman-Ford algorithm instead of
          Dijkstra’s algorithm. Compare the results you obtain using these two different
          algorithms.
      (e) Consider a weighted digraph version of the graph in Figure 2.16. Run the
          Floyd-Roy-Warshall and Johnson’s algorithms over the weighted digraph.
          Compare the results output by these two algorithms to the results of the
          previous exercise.

2.15. Consider a finite square lattice Λ where points on Λ can connect to other points
      in their von Neumann or Moore neighborhoods, or other points in the lattice. See
      Figures 2.15(a) and 2.15(b) for illustrations of the von Neumann and Moore neigh-
      borhoods of a central node, respectively. We treat each point as a node and forbid
      each node from connecting to itself. The whole lattice can be considered as a sim-
      ple undirected graph Γ. Let n be the maximum number of nodes in any connected
      components. For each i ∈ {1, 2, . . . , n}, how many connected components have
      exactly n nodes? In other words, what is the density of connected components in
      Γ? For example, consider the lattice in Figure 2.15(c). Denote by κ(i) the number
      of connected components with i nodes. Then the maximum number of nodes of
      any connected components is n = 6, with κ(1) = 2, κ(2) = 2, κ(3) = 2, κ(4) = 1,
      κ(5) = 0, and κ(6) = 1.




  (a) Von Neumann neighbor-   (b) Moore neighborhood.   (c) Square lattice with compo-
  hood.                                                 nents.

                  Figure 2.15: Component density in a square lattice.
                                                    Moscow
                               London
                                                                                                       2.8. Problems




       Ottawa                             Berlin
                                                                                 Beijing
Washington DC                  Madrid                                                      Tokyo

                                                           New Delhi

                                                                       Bangkok


        Lima
                   Brasilia

                                                Pretoria                                      Sydney
                Buenos Aires




                 Figure 2.16: Major capital cities of the world.
                                                                                                       93
                Bangkok   Beijing   Berlin   Brasilia   Buenos Aires   Lima   London   Madrid   Moscow   New Delhi   Ottawa   Pretoria   Sydney   Tokyo   Washington DC
                                                                                                                                                                          94

Bangkok                   3282                                                                           2908                            7540
Beijing         3282                                                                            5807     3784                                     2103
Berlin                                                                        929      1866     1619     5796
Brasilia                                                2314           3154                                                   7906                        6764
Buenos Aires                                            2314
Lima                                         3154
London                              929                                                1261                          5379                                 5915
Madrid                              1866                                      1261                       7288                 8033
Moscow                    5807      1619
New Delhi       2908      3784      5796                                               7288
Ottawa                                                                        5379                                                                        734
Pretoria                                     7906                                      8033
Sydney          7540
Tokyo                     2103
Washington DC                                6764                             5915                                   734


                                    Table 2.6: Distances in kilometers between major world capital cities.
                                                                                                                                                                          Chapter 2. Graph Algorithms
2.8. Problems                                                                                   95

2.16. Various efficient search techniques exist that cater for special situations. Some of
      these are covered in chapter 6 in Knuth [124] and chapters 14–18 in Sedgewick [172].
      Investigate an algorithm for and time complexity of trie search. Hashing techniques
      can result in searches that run in O(1) time. Furthermore, hashing has important
      applications outside of the searching problem, a case in point being cryptology.
      Investigate how hashing can be used to speed up searches. For further information
      on hashing and its application to cryptology, see Menezes et al. [147], Stinson [180],
      or Trappe and Washington [186].
2.17. In addition to searching, there is the related problem of sorting a list according to
      an ordering relation. If the given list L = [e1 , e2 , . . . , en ] consists of real numbers,
      we want to order elements in nondecreasing order. Bubble sort is a basic sorting
      algorithm that can be used to sort a list of real numbers, indeed any collection of
      objects that can be ordered according to an ordering relation. During each pass
      through the list L from left to right, we consider ei and its right neighbor ei+1 . If
      ei ≤ ei+1 , then we move on to consider ei+1 and its right neighbor ei+2 . If ei > ei+1 ,
      then we swap these two values around in the list and then move on to consider ei+1
      and its right neighbor ei+2 . Each successive pass pushes to the right end an element
      that is the next largest in comparison to the previous largest element pushed to
      the right end. Hence the name bubble sort for the algorithm. Algorithm 2.15
      summarizes our discussion.

 Algorithm 2.15: Bubble sort.
  Input: A list L of n > 1 elements that can be ordered using the “less than or
          equal to” relation “≤”.
  Output: The same list as L, but sorted in nondecreasing order.
 1   for i ← n, n − 1, . . . , 2 do
 2      for j ← 2, 3, . . . , i do
 3          if L[j − 1] > L[j] then
 4              swap the values of L[j − 1] and L[j]
 5   return L


        (a) Analyze the worst-case runtime of Algorithm 2.15.
        (b) Modify Algorithm 2.15 so that it sorts elements in nonincreasing order.
        (c) Line 4 of Algorithm 2.15 is where elements are actually sorted. Swapping
            the values of two elements is such a common task that sometimes we want
            to perform the swap as efficiently as possible, i.e. using as few operations
            as possible. A common way to swap the values of two elements a and b
            is to create a temporary placeholder t and realize the swap as presented in
            Algorithm 2.16. Some programming languages allow for swapping the values
            of two elements without creating a temporary placeholder for an intermediary
            value. Investigate how to realize this swapping method using a programming
            language of your choice.
2.18. Selection sort is another simple sorting algorithm that works as follows. Let L =
      [e1 , e2 , . . . , en ] be a list of elements that can be ordered according to the relation
      “≤”, e.g. the ei can all be real numbers or integers. On the first scan of L
96                                                          Chapter 2. Graph Algorithms

 Algorithm 2.16: Swapping values using a temporary placeholder.
  Input: Two objects a and b.
  Output: The values of a and b swapped with each other.
 1   t←a
 2   a←b
 3   b←t


       from left to right, among the elements L[2], . . . , L[n] we find the smallest element
       and exchange it with L[1]. On the second scan, we find the smallest element
       among L[3], . . . , L[n] and exchange that smallest element with L[2]. In general,
       during the i-th scan we find the smallest element among L[i + 1], . . . , L[n] and
       exchange that with L[i]. At the end of the i-th scan, the element L[i] is in its final
       position and would not be processed again. When the index reaches i = n, the list
       would have been sorted in nondecreasing order. The procedure is summarized in
       Algorithm 2.17.

        (a) Analyze the worst-case runtime of Algorithm 2.17 and compare your result to
            the worst-case runtime of the bubble sort Algorithm 2.15.
        (b) Modify Algorithm 2.17 to sort elements in nonincreasing order.
        (c) Line 6 of Algorithm 2.17 assumes that among L[i+1], L[i+2], . . . , L[n] there is
            a smallest element L[k] such that L[i] > L[k], hence we perform the swap. It is
            possible that L[i] < L[k], obviating the need to carry out the value swapping.
            Modify Algorithm 2.17 to take account of our discussion.


 Algorithm 2.17: Selection sort.
  Input: A list L of n > 1 elements that can be ordered using the relation “≤”.
  Output: The same list as L, but sorted in nondecreasing order.
 1   for i ← 1, 2, . . . , n − 1 do
 2      min ← i
 3      for j ← i + 1, i + 2, . . . , n do
 4          if L[j] < L[min] then
 5              min ← j
 6      swap the values of L[min] and L[i]
 7   return L


2.19. In addition to bubble and selection sort, other algorithms exist whose runtime is
      more efficient than these two basic sorting algorithms. Chapter 5 in Knuth [124] de-
      scribes various efficient sorting techniques. See also chapters 8–13 in Sedgewick [172].

        (a) Investigate and provide pseudocode for insertion sort and compare its runtime
            efficiency with that of selection sort. Compare the similarities and differences
            between insertion and selection sort.
        (b) Shellsort is a variation on insertion sort that can speed up the runtime of
            insertion sort. Describe and provide pseudocode for shellsort. Compare the
2.8. Problems                                                                              97

          time complexity of shellsort with that of insertion sort. In what ways is
          shellsort different from or similar to insertion sort?
      (c) The quicksort algorithm due to C. A. R. Hoare [99] was published in 1962.
          Describe and provide pseudocode for quicksort and compare its runtime com-
          plexity with the other sorting algorithms covered in this chapter.
2.20. Algorithm 2.3 uses breadth-first search to determine the connectivity of an undi-
      rected graph. Modify this algorithm to use depth-first search. How can Algo-
      rithm 2.3 be used or modified to test the connectivity of a digraph?
2.21. The following problem is known as the river crossing problem. A man, a goat,
      a wolf, and a basket of cabbage are all on one side of a river. They have a boat
      that could be used to cross to the other side of the river. The boat can only hold
      at most two passengers, one of whom must be able to row the boat. One of the
      two passengers must be the man and the other passenger can be either the goat,
      the wolf, or the basket of cabbage. When crossing the river, if the man leaves the
      wolf with the goat, the wolf would prey on the goat. If he leaves the goat with the
      basket of cabbage, the goat would eat the cabbage. The objective is to cross the
      river in such a way that the wolf has no chance of preying on the goat, nor that
      the goat eat the cabbage.
      (a) Let M , G, W , and C denote the man, the goat, the wolf, and the basket of
          cabbage, respectively. Initially all four are on the left side of the river and none
          of them are on the right side. Denote this by the ordered pair (M GW C, w),
          which is called the initial state of the problem. When they have all crossed to
          the right side of the river, the final state of the problem is (w, M GW C). The
          underscore “w” means that neither M , G, W , nor C are on the corresponding
          side of the river. List a finite sequence of moves to get from (M GW C, w) to
          (w, M GW C). Draw your result as a digraph.
      (b) In the digraph Γ obtained from the previous exercise, let each edge of Γ be of
          unit weight. Find a shortest path from (M GW C, w) to (w, M GW C).
      (c) Rowing from one side of the river to the other side is called a crossing. What
          is the minimum number of crossings needed to get from (M GW C, w) to
          (w, M GW C)?
2.22. Symbolic computation systems such as Magma, Maple, Mathematica, Maxima,
      and Sage are able to read in a symbolic expression such as
                                   (a + b)^2 - (a - b)^2
     and determine whether or not the brackets match. A bracket is any of the following
     characters:
                                   ( ) { } [ ]
     A string S of characters is said to be balanced if any left bracket in S has a corre-
     sponding right bracket that is also in S. Furthermore, if there are k occurrences
     of one type of left bracket, then there must be k occurrences of the corresponding
     right bracket. The balanced bracket problem is concerned with determining whether
     or not the brackets in S are balanced. Algorithm 2.18 contains a procedure to de-
     termine if the brackets in S are balanced, and if so return a list of positive integers
     to indicate how the brackets match.
98                                                             Chapter 2. Graph Algorithms

        (a) Implement Algorithm 2.18 in Sage and test your implementation on various
            strings containing brackets. Test your implementation on nonempty strings
            without any brackets.
        (b) Modify Algorithm 2.18 so that it returns True if the brackets of an input
            string are balanced, and returns False otherwise.
        (c) What is the worst-case runtime of Algorithm 2.18?


 Algorithm 2.18: A brackets parser.
  Input: A nonempty string S of characters.
  Output: A list L of positive integers indicating how the brackets match. If the
            brackets are not balanced, return the empty string ε.
 1   L ← []
 2   T ← empty stack
 3   c←1
 4   n ← |S|
 5   for i ← 0, 1, . . . , n do
 6       if S[i + 1] is a left bracket then
 7           append(L, c)
 8           push (S[i + 1], c) onto T
 9           c←c+1
10       if S[i + 1] is a right bracket then
11           if T is empty then
12               return ε
13           (left, d) ← pop(T )
14           if left matches S[i + 1] then
15               append(L, d)
16           else
17               return ε
18   if T is empty then
19       return L
20   return ε


2.23. An arithmetic expression written in the form a + b is said to be in infix notation
      because the operator is in between the operands. The same expression can also be
      written in reverse Polish notation (or postfix notation) as

                                                 ab+

       with the operator following its two operands. Given an arithmetic expression A =
       e0 e1 · · · en written in reverse Polish notation, we can use the stack data structure
       to evaluate the expression. Let P = [e0 , e1 , . . . , en ] be the stack representation of
       A, where traversing P from left to right we are moving from the top of the stack
       to the bottom of the stack. We call P the Polish stack and the stack E containing
       intermediate results the evaluation stack. While P is not empty, pop the Polish
       stack and assign the extracted result to x. If x is an operator, we pop the evaluation
       stack twice: the result of the first pop is assigned to b and the result of the second
2.8. Problems                                                                          99

       pop is assigned to a. Compute the infix expression a x b and push the result onto
       E. However, if x is an operand, we push x onto E. Iterate the above process until
       P is empty, at which point the top of E contains the evaluation of A. Refer to
       Algorithm 2.19 for pseudocode of the above discussion.

        (a) Prove the correctness of Algorithm 2.19.
        (b) What is the worst-case runtime of Algorithm 2.19?
        (c) Modify Algorithm 2.19 to support the exponentiation operator.


 Algorithm 2.19: Evaluate arithmetic expressions in reverse Polish notation.
  Input: A Polish stack P containing an arithmetic expression in reverse Polish
          notation.
  Output: An evaluation of the arithmetic expression represented by P .
 1   E ← empty stack
 2   v ← NULL
 3   while P is not empty do
 4      x ← pop(P )
 5      if x is an operator then
 6          b ← pop(E)
 7          a ← pop(E)
 8          if x is addition operator then
 9              v ←a+b
10          else if x is subtraction operator then
11              v ←a−b
12          else if x is multiplication operator then
13              v ←a×b
14          else if x is division operator then
15              v ← a/b
16          else
17              exit algorithm with error
18          push(E, v)
19      else
20          push(E, x)
21   v ← pop(E)
22   return v


2.24. Figure 2.5 provides a knight’s tour for the knight piece with initial position as
      in Figure 2.5(a). By rotating the chessboard in Figure 2.5(b) by 90n degrees for
      positive integer values of n, we obtain another knight’s tour that, when represented
      as a graph, is isomorphic to the graph in Figure 2.5(c).

        (a) At the beginning of the 18th century, de Montmort and de Moivre provided
            the following strategy [12, p.176] to solve the knight’s tour problem on an
            8 × 8 chessboard. Divide the board into an inner 4 × 4 square and an outer
            shell of two squares deep, as shown in Figure 2.17(a). Place a knight on a
            square in the outer shell and move the knight piece around that shell, always
100                                                         Chapter 2. Graph Algorithms

          in the same direction, so as to visit each square in the outer shell. After that,
          move into the inner square and solve the knight’s tour problem for the 4 × 4
          case. Apply this strategy to solve the knight’s tour problem with the initial
          position as in Figure 2.17(b).
      (b) Use the Montmort-Moivre strategy to obtain a knight’s tour, starting at the
          position of the black-filled node in the outer shell in Figure 2.5(b).
      (c) A re-entrant or closed knight’s tour is a knight’s tour that starts and ends
          at the same square. Find re-entrant knight’s tours with initial positions as in
          Figure 2.18.
      (d) Devise a backtracking algorithm to solve the knight’s tour problem on an n×n
          chessboard for n > 3.


         0Z0Z0Z0Z                               0Z0Z0Z0m
         Z0Z0Z0Z0                               Z0Z0Z0Z0
         0Z0Z0Z0Z                               0Z0Z0Z0Z
         Z0Z0Z0Z0                               Z0Z0Z0Z0
         0Z0Z0Z0Z                               0Z0Z0Z0Z
         Z0Z0Z0Z0                               Z0Z0Z0Z0
         0Z0Z0Z0Z                               0Z0Z0Z0Z
         Z0Z0Z0Z0                               Z0Z0Z0Z0
              (a) A 4 × 4 inner square.        (b) Initial position in the outer shell.

Figure 2.17: De Montmort and de Moivre’s solution strategy for the 8 × 8 knight’s tour
problem.



                                           0Z0Z0Z0Z
                                           Z0Z0Z0Z0
             0Z0Z0Z                        0Z0Z0Z0Z
             Z0Z0Z0                        Z0m0Z0Z0
             0Z0Z0Z                        0Z0Z0Z0Z
             Z0Z0Z0                        Z0Z0Z0Z0
             0Z0Z0Z                        0Z0Z0Z0Z
             m0Z0Z0                        Z0Z0Z0Z0
              (a) A 6 × 6 chessboard.            (b) An 8 × 8 chessboard.

               Figure 2.18: Initial positions of re-entrant knight’s tours.

2.25. The n-queens problem is concerned with the placement of n queens on an n × n
      chessboard such that no two queens can attack each other. Two queens can attack
2.8. Problems                                                                         101



                                       0ZQZ0Z0Z
                                       Z0Z0Z0ZQ
                                       0Z0L0Z0Z
                                       Z0Z0Z0L0
                 0L0Z                  QZ0Z0Z0Z
                 Z0ZQ                  Z0Z0ZQZ0
                 QZ0Z                  0L0Z0Z0Z
                 Z0L0                  Z0Z0L0Z0
                     (a) n = 4                     (b) n = 8

             Figure 2.19: Solutions of the n-queens problem for n = 4, 8.

     each other if they are in the same row, column, diagonal, or antidiagonal of the
     chessboard. The trivial case n = 1 is easily solved by placing the one queen in the
     only given position. There are no solutions for the cases n = 2, 3. Solutions for the
     cases n = 4, 8 are shown in Figure 2.19. Devise a backtracking algorithm to solve
     the n-queens problem for the case where n > 3. See Bell and Stevens [20] for a
     survey of the n-queens problem and its solutions.

2.26. Hampton Court Palace in England is well-known for its maze of hedges. Figure 2.20
      shows a maze and its graph representation; the figure is adapted from page 434 in
      Sedgewick [172]. To obtain the graph representation, we use a vertex to represent
      an intersection in the maze. An edge joining two vertices represents a path from
      one intersection to another.

      (a) Suppose the entrance to the maze is represented by the lower-left black-filled
          vertex in Figure 2.20(b) and the exit is the upper-right black-filled vertex.
          Solve the maze by providing a path from the entrance to the exit.
      (b) Repeat the previous exercise for each pair of distinct vertices, letting one
          vertex of the pair be the entrance and the other vertex the exit.
      (c) What is the diameter of the graph in Figure 2.20(b)?
      (d) Investigate algorithms for generating and solving mazes.

2.27. For each of the algorithms below: (i) justify whether or not it can be applied
      to multigraphs or multidigraphs; (ii) if not, modify the algorithm so that it is
      applicable to multigraphs or multidigraphs.

      (a) Breadth-first search Algorithm 2.1.
      (b) Depth-first search Algorithm 2.2.
      (c) Graph connectivity test Algorithm 2.3.
      (d) General shortest path Algorithm 2.4.
      (e) Dijkstra’s Algorithm 2.5.
102                                                         Chapter 2. Graph Algorithms




                               (a)                            (b)

                   Figure 2.20: A maze and its graph representation.

       (f) The Bellman-Ford Algorithms 2.6 and 2.7.
       (g) The Floyd-Roy-Warshall Algorithm 2.8.
      (h) The transitive closure Algorithm 2.9.
       (i) Johnson’s Algorithm 2.10.




                   (a) 2 × 2         (b) 3 × 3              (c) 4 × 4

                          Figure 2.21: Grid graphs for n = 2, 3, 4.

2.28. Let n be a positive integer. An n × n grid graph is a graph on the Euclidean plane,
      where each vertex is an ordered pair from Z × Z. In particular, the vertices are
      ordered pairs (i, j) ∈ Z × Z such that

                                            0 ≤ i, j < n.                             (2.12)

      Each vertex (i, j) is adjacent to any of the following vertices provided that ex-
      pression (2.12) is satisfied: the vertex (i − 1, j) immediately to its left, the vertex
      (i + 1, j) immediately to its right, the vertex (i, j + 1) immediately above it, or
      the vertex (i, j − 1) immediately below it. Figure 2.21 illustrates some examples
      of grid graphs. The 1 × 1 grid graph is the trivial graph K1 .

       (a) Fix a positive integer n > 1. Describe and provide pseudocode of an algorithm
           to generate all nonisomorphic n × n grid graphs. What is the worst-case
           runtime of your algorithm?
      (b) How many n × n grid graphs are there? How many of those graphs are
          nonisomorphic to each other?
2.8. Problems                                                                           103

      (c) Describe and provide pseudocode of an algorithm to generate a random n × n
          grid graph. Analyze the worst-case runtime of your algorithm.
      (d) Extend the grid graph by allowing edges to be diagonals. That is, a vertex
          (i, j) can also be adjacent to any of the following vertices so long as expres-
          sion (2.12) holds: (i − 1, j − 1), (i − 1, j + 1), (i + 1, j + 1), (i + 1, j − 1).
          With this extension, repeat the previous exercises.

2.29. Let G = (V, E) be a digraph with integer weight function w : E −→ Z\{0},
      where either w(e) > 0 or w(e) < 0 for each e ∈ E. Yamada and Kinoshita [205]
      provide a divide-and-conquer algorithm to enumerate all the negative cycles in
      G. Investigate the divide and conquer technique for algorithm design. Describe
      and provide pseudocode of the Yamada-Kinoshita algorithm. Analyze its runtime
      complexity and prove the correctness of the algorithm.
Chapter 3

Trees and Forests




      — Randall Munroe, xkcd, http://xkcd.com/71/

In section 1.2.1, we briefly touched upon trees and provided examples of how trees could
be used to model hierarchical structures. This chapter provides an in-depth study of
trees, their properties, and various applications. After defining trees and related con-
cepts in section 3.1, we then present various basic properties of trees in section 3.2.
Each connected graph G has an underlying subgraph called a spanning tree that con-
tains all the vertices of G. Spanning trees are discussed in section 3.3 together with
various common algorithms for finding spanning trees. We then discuss binary trees in
section 3.4, followed by an application of binary trees to coding theory in section 3.5.
Whereas breadth- and depth-first searches are general methods for traversing a graph,
trees require specialized techniques in order to visit their vertices, a topic that is taken
up in section 3.6.


3.1      Definitions and examples
      I think that I shall never see
      A poem lovely as a tree.
      — Joyce Kilmer, Trees and Other Poems, 1914, “Trees”

Recall that a path in a graph G = (V, E) whose start and end vertices are the same is
called a cycle. We say G is acyclic, or a forest, if it has no cycles. In a forest, a vertex
of degree one is called an endpoint or a leaf . Any vertex that is not a leaf is called an

                                             104
3.1. Definitions and examples                                                                               105

internal vertex. A connected forest is a tree. In other words, a tree is a graph without
cycles and each edge is a bridge. A forest can also be considered as a collection of trees.
    A rooted tree T is a tree with a specified root vertex v0 , i.e. exactly one vertex has
been specially designated as the root of T . However, if G is a rooted tree with root
vertex v0 having degree one, then by convention we do not call v0 an endpoint or a leaf.
The depth depth(v) of a vertex v in T is its distance from the root. The height height(T )
of T is the length of a longest path starting from the root vertex, i.e. the height is the
maximum depth among all vertices of T . It follows by definition that depth(v) = 0 if and
only if v is the root of T , height(T ) = 0 if and only if T is the trivial graph, depth(v) ≥ 0
for all v ∈ V (T ), and height(T ) ≤ diam(T ).
    The Unix, in particular Linux, filesystem hierarchy can be viewed as a tree (see
Figure 3.1). As shown in Figure 3.1, the root vertex is designated with the forward
slash, which is also referred to as the root directory. Other examples of trees include the
organism classification tree in Figure 3.2, the family tree in Figure 3.3, and the expression
tree in Figure 3.4.
    A directed tree is a digraph which would be a tree if the directions on the edges
were ignored. A rooted tree can be regarded as a directed tree since we can imagine an
edge uv for u, v ∈ V being directed from u to v if and only if v is further away from v0
than u is. If uv is an edge in a rooted tree, then we call v a child vertex with parent u.
Directed trees are pervasive in theoretical computer science, as they are useful structures
for describing algorithms and relationships between objects in certain datasets.

                                        /




   bin      etc      home     lib      opt         proc           tmp           usr           ...




            anne     sam      ...            bin        include         local         share         src   ...




                   acyclic    diff     dot         gc         neato             ...


                        Figure 3.1: The Linux filesystem hierarchy.

    An ordered tree is a rooted tree for which an ordering is specified for the children of
each vertex. An n-ary tree is a rooted tree for which each vertex that is not a leaf has
at most n children. The case n = 2 are called binary trees. An n-ary tree is said to
be complete if each of its internal vertices has exactly n children and all leaves have the
same depth. A spanning tree of a connected, undirected graph G is a subgraph that is
a tree and containing all vertices of G.

Example 3.1. Consider the 4 × 4 grid graph with 16 vertices and 24 edges. Two
examples of a spanning tree are given in Figure 3.5 by using a darker line shading for its
edges.


Example 3.2. For n = 1, . . . , 6, how many distinct (nonisomorphic) trees are there of
order n? Construct all such trees for each n.
106                                                                                            Chapter 3. Trees and Forests



                                                   organism




                           plant                                                    animal




                  tree               flower                        invertebrate              vetebrate




      deciduous          evergreen                                       bird                                      mammal




                                                           finch      rosella         sparrow          dolphin     human    whale


                                   Figure 3.2: Classification tree of organisms.




                                          Nikolaus senior




          Jacob                               Nicolaus                                Johann




                                              Nicolaus I        Nicolaus II           Daniel           Johann II




                                                                                    Johann III         Daniel II      Jakob II


                           Figure 3.3: Bernoulli family tree of mathematicians.




                                                                     +



                                              ×                      ×                         ×



                                          a        a        2        a          b        b         b

                  Figure 3.4: Expression tree for the perfect square a2 + 2ab + b2 .
3.1. Definitions and examples                                                           107




                           (a)                                  (b)

                Figure 3.5: Two spanning trees for the 4 × 4 grid graph.

Solution. For n = 1, there is only one tree of order 1, i.e. K1 . The same is true for n = 2
and n = 3, where the required trees are P2 and P3 , respectively (see Figure 3.6). We
have two trees of order n = 4 (see Figure 3.7), three of order n = 5 (see Figure 3.8), and
six of order n = 6 (see Figure 3.9).




                             (a) n = 1    (b) n = 2     (c) n = 3

                    Figure 3.6: All distinct trees of order n = 1, 2, 3.




                                 (a)             (b)

                      Figure 3.7: All distinct trees of order n = 4.

Example 3.3. Let T = (V, E) be a tree with vertex set

                             V = {a, b, c, d, e, f, v, w, x, y, z}

edge set
                      E = {va, vw, wx, wy, xb, xc, yd, yz, ze, zf }
and root vertex v. Verify that T is a binary tree. Suppose that x is the root of the branch
we want to remove from T . Find all children of x and cut off the branch rooted at x from
T . Is the resulting graph also a binary tree?
108                                                      Chapter 3. Trees and Forests




            (a)            (b)                         (c)

                  Figure 3.8: All distinct trees of order n = 5.




      (a)   (b)                  (c)             (d)                  (e)




                                       (f)

                  Figure 3.9: All distinct trees of order n = 6.
3.1. Definitions and examples                                                            109

Solution. We construct the tree T in Sage as follows:
sage :     T = DiGraph ({
...        " v " :[ " a " ," w " ] , " w " :[ " x " ," y " ] ,
...        " x " :[ " c " ," b " ] , " y " :[ " z " ," d " ] ,
...        " z " :[ " f " ," e " ]})
sage :     for v in T . vertex_iterator ():
...               print ( v ) ,
a c b      e d f w v y x z
sage :     for e in T . edge_iterator ():
...               print ( " % s % s " % ( e [0] , e [1])) ,
wy wx      va vw yd yz xc xb ze zf

Each vertex in a binary tree has at most 2 children. Use this definition to test whether
or not a graph is a binary tree.
sage : T . is_tree ()
True
sage : def is_bintree1 ( G ):
...          for v in G . vertex_iterator ():
...              if len ( G . neighbors_out ( v )) > 2:
...                   return False
...          return True
sage : is_bintree1 ( T )
True

Here’s another way to test for binary trees. Let T be an undirected rooted tree. Each
vertex in a binary tree has a maximum degree of 3. If the root vertex is the only vertex
with degree 2, then T is a binary tree. (Problem 3.5 asks you to prove this result.) We
can use this test because the root vertex v of T is the only vertex with two children.
sage : def is_bintree2 ( G ):
...        if G . is_tree () and max ( G . degree ()) == 3 and G . degree (). count (2) == 1:
...             return True
...        return False
sage : is_bintree2 ( T . to_undirected ())
True

As x is the root vertex of the branch we want to cut off from T , we could use breadth-
or depth-first search to determine all the children of x. We then delete x and its children
from T .
sage :     T2 = copy ( T )
sage :     # using breadth - first search
sage :     V = list ( T . breadth_first_search ( " x " )); V
[ ’x ’ ,   ’c ’ , ’b ’]
sage :     T . delete_vertices ( V )
sage :     for v in T . vertex_iterator ():
...              print ( v ) ,
a e d      f w v y z
sage :     for e in T . edge_iterator ():
...              print ( " % s % s " % ( e [0] , e [1])) ,
wy va      vw yd yz ze zf
sage :     # using depth - first search
sage :     V = list ( T2 . depth_first_search ( " x " )); V
[ ’x ’ ,   ’b ’ , ’c ’]
sage :     T2 . delete_vertices ( V )
sage :     for v in T2 . vertex_iterator ():
...              print ( v ) ,
a e d      f w v y z
sage :     for e in T2 . edge_iterator ():
...              print ( " % s % s " % ( e [0] , e [1])) ,
wy va      vw yd yz ze zf

The resulting graph T is a binary tree because each vertex has at most two children.
sage : T
Digraph on 8 vertices
sage : is_bintree1 ( T )
True

Notice that the test defined in the function is_bintree2 can no longer be used to test
whether or not T is a binary tree, because T now has two vertices, i.e. v and w, each of
110                                                                Chapter 3. Trees and Forests

which has degree 2.
    Consider again the organism classification tree in Figure 3.2. We can view the vertex
“organism” as the root of the tree and having two children. The first branch of “or-
ganism” is the subtree rooted at “plant” and its second branch is the subtree rooted
at “animal”. We form the complete tree by joining an edge between “organism” and
“plant”, and an edge between “organism” and “animal”. The subtree rooted at “plant”
can be constructed in the same manner. The first branch of this subtree is the subtree
rooted at “tree” and the second branch is the subtree rooted at “flower”. To construct
the subtree rooted at “plant”, we join an edge between “plant” and “tree”, and an
edge between “plant” and “flower”. The other subtrees of the tree in Figure 3.2 can be
constructed using the above recursive procedure.
    In general, the recursive construction in Theorem 3.4 provides an alternative way
to define trees. We say construction because it provides an algorithm to construct a
tree, as opposed to the nonconstructive definition presented earlier in this section, where
we defined the conditions under which a graph qualifies as a tree without presenting a
procedure to construct a tree. Furthermore, we say recursive since a larger tree can be
viewed as being constructed from smaller trees, i.e. join up existing trees to obtain a
new tree. The recursive construction of trees as presented in Theorem 3.4 is illustrated
in Figure 3.10.
Theorem 3.4. Recursive construction of trees. An isolated vertex is a tree. That
single vertex is the root of the tree. Given a collection T1 , T2 , . . . , Tn of n > 0 trees,
construct a new tree as follows:
  1. Let T be a tree having exactly the one vertex v, which is the root of T .
  2. Let vi be the root of the tree Ti .
  3. For i = 1, 2, . . . , n, add the edge vvi to T and add Ti to T . That is, each vi is now
     a child of v.
The result is the tree T rooted at v with vertex set
                                                              !
                                                   [
                                V (T ) = {v} ∪          V (Ti )
                                                    i

and edge set                               [                  
                                E(T ) =        {vvi } ∪ E(Ti ) .
                                           i

   The following game is a variant of the Shannon switching game, due to Edmonds and
Lehman. We follow the description in Oxley’s survey [161]. Recall that a minimal edge
cut of a graph is also called a bond of the graph. The following two-person game is played
on a connected graph G = (V, E). Two players Alice and Bob alternately tag elements
of E. Alice’s goal is to tag the edges of a spanning tree, while Bob’s goal is to tag the
edges of a bond. If we think of this game in terms of a communication network, then
Bob’s goal is to separate the network into pieces that are no longer connected to each
other, while Alice is aiming to reinforce edges of the network to prevent their destruction.
Each move for Bob consists of destroying one edge, while each move for Alice involves
securing an edge against destruction. The next result characterizes winning strategies
on G. The full proof can be found in Oxley [161]. See Rasmussen [167] for optimization
algorithms for solving similar games.
3.2. Properties of trees                                                                         111

                                                    v




                                                             ...



                    T1                   T2                                       Tn


                         Figure 3.10: Recursive construction of a tree.

Theorem 3.5. The following statements are equivalent for a connected graph G =
(V, E).
  1. Bob plays first and Alice can win against all possible strategies of Bob.

  2. The graph G has 2 edge-disjoint spanning trees.

  3. For all partitions P of the vertex set V , the number of edges of G that join vertices
     in different classes of the partition is at least 2(|P | − 1).


3.2      Properties of trees
      All theory, dear friend, is grey, but the golden tree of actual life springs ever green.
      — Johann Wolfgang von Goethe, Faust, part 1, 1808

By Theorem 1.27, each edge of a tree is a bridge. Removing any edge of a tree partitions
the tree into two components, each of which is a subtree of the original tree. The following
results provide further basic characterizations of trees.
Theorem 3.6. Any tree T = (V, E) has size |E| = |V | − 1.
Proof. This follows by induction on the number of vertices. By definition, a tree has
no cycles. We need to show that any tree T = (V, E) has size |E| = |V | − 1. For the
base case |V | = 1, there are no edges. Assume for induction that the result holds for
all integers less than or equal to k ≥ 2. Let T = (V, E) be a tree having k + 1 vertices.
Remove an edge from T , but not the vertices it is incident to. This disconnects T into
two components T1 = (V1 , E1 ) and T2 = (V2 , E2 ), where |E| = |E1 | + |E2 | + 1 and
|V | = |V1 | + |V2 | (and possibly one of the Ei is empty). Each Ti is a tree satisfying the
conditions of the induction hypothesis. Therefore,

                                   |E| = |E1 | + |E2 | + 1
                                        = |V1 | − 1 + |V2 | − 1 + 1
                                        = |V | − 1.

as required.
112                                                                Chapter 3. Trees and Forests

Corollary 3.7. If T = (V, E) is a graph of order |V | = n, then the following are
equivalent:

     1. T is a tree.

     2. T contains no cycles and has n − 1 edges.

     3. T is connected and has n − 1 edges.

     4. Every edge of T is a cut set.

Proof. (1) =⇒ (2): This holds by definition of trees and Theorem 3.6.
    (2) =⇒ (3): If T = (V, E) has k connected components then it is a disjoint union
of trees Ti = (Vi , Ei ), i = 1, 2, . . . , k, for some k. By part (2), each of these satisfy

                                         |Ei | = |Vi | − 1

so
                                                k
                                                X
                                        |E| =         |Ei |
                                                i=1
                                                k
                                                X
                                           =          |Vi | − k
                                                i=1

                                           = |V | − k.

This contradicts part (2) unless k = 1. Therefore, T is connected.
     (3) =⇒ (4): If removing an edge e ∈ E leaves T = (V, E) connected then T 0 =
(V, E 0 ) is a tree, where E 0 = E−e. However, this means that |E 0 | = |E|−1 = |V |−1−1 =
|V | − 2, which contradicts part (3). Therefore e is a cut set.
     (4) =⇒ (1): From part (2) we know that T has no cycles and from part (3) we
know that T is connected. Conclude by the definition of trees that T is a tree.

Theorem 3.8. Let T = (V, E) be a tree and let u, v ∈ V be distinct vertices. Then T
has exactly one u-v path.

Proof. Suppose for contradiction that

                                P : v0 = u, v1 , v2 , . . . , vk = v

and
                               Q : w0 = u, w1 , w2 , . . . , w` = v
are two distinct u-v paths. Then P and Q has a common vertex x, which is possibly
x = u. For some i ≥ 0 and some j ≥ 0 we have vi = x = wj , but vi+1 6= wj+1 . Let
y be the first vertex after x such that y belongs to both P and Q. (It is possible that
y = v.) We now have two distinct x-y paths that have only x and y in common. Taken
together, these two x-y paths result in a cycle, contradicting our hypothesis that T is a
tree. Therefore T has only one u-v path.

Theorem 3.9. If T = (V, E) is a graph then the following are equivalent:
3.2. Properties of trees                                                                 113

  1. T is a tree.

  2. For any new edge e, the join T + e has exactly one cycle.

Proof. (1) =⇒ (2): Let e = uv be a new edge connecting u, v ∈ V . Suppose that

                              P : v0 = w, v1 , v2 , . . . , vk = w

and
                              P 0 : v00 = w, v10 , v20 , . . . , v`0 = w
are two cycles in T + e. If either P or P 0 does not contain e, say P does not contain e,
then P is a cycle in T . Let u = v0 and let v = v1 . The edge (v0 = w, v1 ) is a u-v path
and the sequence v = v1 , v2 , . . . , vk = w = u taken in reverse order is another u-v path.
This contradicts Theorem 3.8.
    We may now suppose that P and P 0 both contain e. Then P contains a subpath
P0 = P − e (which is not closed) that is the same as P except it lacks the edge from u
to v. Likewise, P 0 contains a subpath P00 = P 0 − e (which is not closed) that is the same
as P 0 except it lacks the edge from u to v. By Theorem 3.8, these u-v paths P0 and P00
must be the same. This forces P and P 0 to be the same, which proves part (2).
    (2) =⇒ (1): Part (2) implies that T is acyclic. (Otherwise, it is trivial to make
two cycles by adding an extra edge.) We must show T is connected. Suppose T is
disconnected. Let u be a vertex in one component, T1 say, of T and v a vertex in another
component, T2 say, of T . Adding the edge e = uv does not create a cycle (if it did then
T1 and T2 would not be disjoint), which contradicts part (2).
    Taking together the results in this section, we have the following characterizations of
trees.

Theorem 3.10. Basic characterizations of trees. If T = (V, E) is a graph with n
vertices, then the following statements are equivalent:

  1. T is a tree.

  2. T contains no cycles and has n − 1 edges.

  3. T is connected and has n − 1 edges.

  4. Every edge of T is a cut set.

  5. For any pair of distinct vertices u, v ∈ V , there is exactly one u-v path.

  6. For any new edge e, the join T + e has exactly one cycle.

   Let G = (V1 , E1 ) be a graph and T = (V2 , E2 ) a subgraph of G that is a tree. As in
part (6) of Theorem 3.10, we see that adding just one edge in E1 − E2 to T will create
a unique cycle in G. Such a cycle is called a fundamental cycle of G. The set of such
fundamental cycles of G depends on T .
   The following result essentially says that if a tree has at least one edge, then the tree
has at least two vertices each of which has degree one. In other words, each tree of order
≥ 2 has at least two pendants.

Theorem 3.11. Every nontrivial tree has at least two leaves.
114                                                           Chapter 3. Trees and Forests

Proof. Let T be a nontrivial tree of order m and size n. Consider the degree sequence
d1 , d2 , . . . , dm of T where d1 ≤ d2 ≤ · · · ≤ dm . As T is nontrivial and connected, then
m ≥ 2 and di ≥ 1 for i = 1, 2, . . . , m. If T has less than two leaves, then d1 ≥ 1 and
di ≥ 2 for 2 ≤ i ≤ m, hence
                              m
                              X
                                    di ≥ 1 + 2(m − 1) = 2m − 1.                          (3.1)
                              i=1

But by Theorems 1.9 and 3.6, we have
                             m
                             X
                                    di = 2n = 2(m − 1) = 2m − 2
                             i=1

which contradicts inequality (3.1). Conclude that T has at least two leaves.
Theorem 3.12. If T is a tree of order m and G is a graph with minimum degree
δ(G) ≥ m − 1, then T is isomorphic to a subgraph of G.
Proof. Use an inductive argument on the number of vertices. The result holds for m = 1
because K1 is a subgraph of every nontrivial graph. The result also holds for m = 2
since K2 is a subgraph of any graph with at least one edge.
    Let m ≥ 3, let T1 be a tree of order m − 1, and let H be a graph with δ(H) ≥ m − 2.
Assume for induction that T1 is isomorphic to a subgraph of H. We need to show that
if T is a tree of order m and G is a graph with δ(G) ≥ m − 1, then T is isomorphic to a
subgraph of G. Towards that end, consider a leaf v of T and let u be a vertex of T such
that u is adjacent to v. Then T − v is a tree of order m − 1 and δ(G) ≥ m − 1 > m − 2.
Apply the inductive hypothesis to see that T − v is isomorphic to a subgraph T 0 of G.
Let u0 be the vertex of T 0 that corresponds to the vertex u of T under an isomorphism.
Since deg(u0 ) ≥ m − 1 and T 0 has m − 2 vertices distinct from u0 , it follows that u0 is
adjacent to some w ∈ V (G) such that w ∈     / V (T 0 ). Therefore T is isomorphic to the
graph obtained by adding the edge u0 w to T 0 .
Example 3.13. Consider a positive integer n. The Euler phi function ϕ(n) counts the
number of integers a, with 1 ≤ a ≤ n, such that gcd(a, n) = 1. The Euler phi sequence
of n is obtained by repeatedly iterating ϕ(n) with initial iteration value n. Continue
on iterating and stop when the output of ϕ(αk ) is 1, for some positive integer αk . The
number of terms generated by the iteration, including the initial iteration value n and
the final value of 1, is the length of ϕ(n).
(a) Let s0 = n, s1 , s2 , . . . , sk = 1 be the Euler phi sequence of n and produce a digraph G
    of this sequence as follows. The vertex set of G is V = {s0 = n, s1 , s2 , . . . , sk = 1}
    and the edge set of G is E = {si si+1 | 0 ≤ i < k}. Produce the digraphs of the Euler
    phi sequences of 15, 22, 33, 35, 69, and 72. Construct the union of all such digraphs
    and describe the resulting graph structure.

(b) For each n = 1, 2, . . . , 1000, compute the length of ϕ(n) and plot the pairs (n, ϕ(n))
    on one set of axes.
Solution. The Euler phi sequence of 15 is

                   15,   ϕ(15) = 8,      ϕ(8) = 4,   ϕ(4) = 2,    ϕ(2) = 1.
3.3. Minimum spanning trees                                                                                    115

The Euler phi sequences of 22, 33, 35, 69, and 72 can be similarly computed to obtain
their respective digraph representations. The union of all such digraphs is a directed tree
rooted at 1, as shown in Figure 3.11(a). Figure 3.11(b) shows a scatterplot of n versus
the length of ϕ(n).


                            1




                            2


                                                                 12
                            4
                                                                 10

                                                                 8
                                                length of ϕ(n)
                 8                         10


                                                                 6
   15            20              24        22
                                                                 4


            33        44    35        72
                                                                 2

                                                                 0
                                                                      0   200    400       600   800   1,000
                      69                                                               n
                      (a)                                                       (b)

        Figure 3.11: Union of digraphs of Euler phi sequences and scatterplot.



3.3     Minimum spanning trees
Suppose we want to design an electronic circuit connecting several components. If these
components represent the vertices of a graph and a wire connecting two components
represents an edge of the graph, then for economical reasons we will want to connect the
components together using the least amount of wire. The problem essentially amounts
to finding a minimum spanning tree in the graph containing these vertices.
    But what is a spanning tree? We can characterize a spanning tree in several ways,
each leading to an algorithm for constructing a spanning tree. Let G be a connected
graph and let T be a subgraph of G. If T is a tree that contains all the vertices of
G, then T is called a spanning tree of G. We can think of T as a tree that is also an
edge-deletion subgraph of G. That is, we start with a connected graph G and delete an
edge from G such that the resulting edge-deletion subgraph T1 is still connected. If T1 is
a tree, then we have obtained a spanning tree of G. Otherwise, we delete an edge from
T1 to obtain an edge-deletion subgraph T2 that is still connected. If T2 is a tree, then
we are done. Otherwise, we repeat the above procedure until we obtain an edge-deletion
subgraph Tk of G such that Tk is connected, Tk is a tree, and it contains all vertices
of G. Each edge removal does not decrease the number of vertices and must also leave
116                                                                Chapter 3. Trees and Forests

the resulting edge-deletion subgraph connected. Thus eventually the above procedure
results in a spanning tree of G. Our discussion is summarized in Algorithm 3.1.

 Algorithm 3.1: Randomized spanning tree construction.
  Input: A connected graph G.
  Output: A spanning tree of G.
 1   T ←G
 2   while T is not a tree do
 3      e ← random edge of T
 4      if T − e is connected then
 5          T ←T −e
 6   return T

    Another characterization of a spanning tree T of a connected graph G is that T is a
maximal set of edges of G that contains no cycle. Kruskal’s algorithm (see section 3.3.1)
exploits this condition to construct a minimum spanning tree (MST). A minimum span-
ning tree is a spanning tree of a weighted graph having lowest total weight among all
possible spanning trees of the graph. A third characterization of a spanning tree is that
it is a minimal set of edges that connect all vertices, a characterization that results in
yet another algorithm called Prim’s algorithm (see section 3.3.2) for constructing mini-
mum spanning trees. The task of determining a minimum spanning tree in a connected
weighted graph is called the minimum spanning tree problem. As early as 1926, Otakar
Borůvka stated [33, 34] this problem and offered a solution now known as Borůvka’s
algorithm (see section 3.3.3). See [87, 142] for a history of the minimum spanning tree
problem.

3.3.1     Kruskal’s algorithm
In 1956, Joseph B. Kruskal published [127] a procedure for constructing a minimum span-
ning tree of a connected weighted graph G = (V, E). Now known as Kruskal’s          algorithm,
with a suitable implementation the procedure runs in O |E| · log |E| time. Variants
of Kruskal’s algorithm include the algorithm by Prim [166] and that by Loberman and
Weinberger [140].
    Kruskal’s algorithm belongs to the class of greedy algorithms. As will be explained
below, when constructing a minimum spanning tree Kruskal’s algorithm considers only
the edge having minimum weight among all available edges. Given a weighted nontrivial
graph G = (V, E) that is connected, let w : E −→ R be the weight function of G. The
first stage is creating a “skeleton” of the tree T that is initially set to be a graph without
edges, i.e. T = (V, ∅). The next stage involves sorting the edges of G by weights in
nondecreasing order. In other words, we label the edges of G as follows:

                                     E = {e1 , e2 , . . . , en }

where n = |E| and w(e1 ) ≤ w(e2 ) ≤ · · · ≤ w(en ). Now consider each edge ei for
i = 1, 2, . . . , n. We add ei to the edge set of T provided that ei does not result in T
having a cycle. The only way adding ei = ui vi to T would create a cycle is if both ui and
vi were endpoints of edges (not necessarily distinct) in the same connected component
of T . As long as the acyclic condition holds with the addition of a new edge to T , we
3.3. Minimum spanning trees                                                                   117

add that new edge. Following the acyclic test, we also test that the (updated) graph
T is a tree of G. As G is a graph of order |V |, apply Theorem 3.10 to see that if T
has size |V | − 1, then it is a spanning tree of G. Algorithm 3.2 provides pseudocode of
our discussion of Kruskal’s algorithm. When the algorithm halts, it returns a minimum
spanning tree of G. The correctness of Algorithm 3.2 is proven in Theorem 3.14.

 Algorithm 3.2: Kruskal’s algorithm.
  Input: A connected weighted graph G = (V, E) with weight function w.
  Output: A minimum spanning tree of G.
 1   m ← |V |
 2   T ←∅
 3   sort E = {e1 , e2 , . . . , en } by weights so that w(e1 ) ≤ w(w2 ) ≤ · · · ≤ w(en )
 4   for i ← 1, 2, . . . , n do
 5       if ei ∈/ E(T ) and T ∪ {ei } is acyclic then
 6           T ← T ∪ {ei }
 7       if |T | = m − 1 then
 8           return T


Theorem 3.14. Correctness of Algorithm 3.2. If G is a nontrivial connected
weighted graph, then Algorithm 3.2 outputs a minimum spanning tree of G.

Proof. Let G be a nontrivial connected graph of order m and having weight function w.
Let T be a subgraph of G produced by Kruskal’s algorithm 3.2. By construction, T is a
spanning tree of G with
                               E(T ) = {e1 , e2 , . . . , em−1 }
where w(e1 ) ≤ w(e2 ) ≤ · · · ≤ w(em−1 ) so that the total weight of T is
                                                   m−1
                                                   X
                                         w(T ) =         w(ei ).
                                                   i=1

Suppose for contradiction that T is not a minimum spanning tree of G. Among all the
minimum spanning trees of G, let H be a minimum spanning tree of G such that H has
the most number of edges in common with T . As T and H are distinct subgraphs of G,
then T has at least an edge not belonging to H. Let ei ∈ E(T ) be the first edge not in
H. Construct the graph G0 = H + ei obtained by adding the edge ei to H. Note that
G0 has exactly one cycle C. Since T is acyclic, there exists an edge e0 ∈ E(C) such that
e0 is not in T . Construct the graph T0 = G0 − e0 obtained by deleting the edge e0 from
G0 . Then T0 is a spanning tree of G with

                                 w(T0 ) = w(H) + w(ei ) − w(e0 )

and w(H) ≤ w(T0 ) and hence w(e0 ) ≤ w(ei ). By Kruskal’s algorithm 3.2, ei is an edge of
minimum weight such that {e1 , e2 , . . . , ei−1 } ∪ {ei } is acyclic. Furthermore, the subgraph
{e1 , e2 , . . . , ei−1 , e0 } of H is acyclic. Thus we have w(ei ) = w(e0 ) and w(T0 ) = w(H) and
so T is a minimum spanning tree of G. By construction, T0 has more edges in common
with T than H has with T , in contradiction of our hypothesis.
118                                                               Chapter 3. Trees and Forests

def kruskal ( G ):
    """
    Implements Kruskal ’s algorithm to compute a MST of a graph .

      INPUT :
          G - a connected edge - weighted graph or digraph
                 whose vertices are assumed to be 0 , 1 , .... , n -1.
      OUTPUT :
          T - a minimum weight spanning tree .

      If G is not explicitly edge - weighted then the algorithm
      assumes all edge weights are 1. The tree T returned is
      a weighted graph , even if G is not .
      EXAMPLES :
          sage : A = matrix ([[0 ,1 ,2 ,3] ,[0 ,0 ,2 ,1] ,[0 ,0 ,0 ,3] ,[0 ,0 ,0 ,0]])
          sage : G = DiGraph (A , format = " adjacency_matrix " , weighted = True )
          sage : TE = kruskal ( G ); TE . edges ()
          [(0 , 1 , 1) , (0 , 2 , 2) , (1 , 3 , 1)]
          sage : G . edges ()
          [(0 , 1 , 1) , (0 , 2 , 2) , (0 , 3 , 3) , (1 , 2 , 2) , (1 , 3 , 1) , (2 , 3 , 3)]
          sage : G = graphs . PetersenGraph ()
          sage : TE = kruskal ( G ); TE . edges ()
          [(0 , 1 , 1) , (0 , 4 , 1) , (0 , 5 , 1) , (1 , 2 , 1) , (1 , 6 , 1) , (2 , 3 , 1) ,
           (2 , 7 , 1) , (3 , 8 , 1) , (4 , 9 , 1)]

      TODO :
             Add ’’ verbose ’’ option to make steps more transparent .
           ( Useful for teachers and students .)
      """
      T_vertices = G . vertices () # a list of the form range ( n )
      T_edges = []
      E = G . edges () # a list of triples
      # start ugly hack
      Er = [ list ( x ) for x in E ]
      E0 = []
      for x in Er :
             x . reverse ()
             E0 . append ( x )
      E0 . sort ()
      E = []
      for x in E0 :
             x . reverse ()
             E . append ( tuple ( x ))
      # end ugly hack to get E is sorted by weight
      for x in E : # find edges of T
             TV = flatten ( T_edges )
             u = x [0]
             v = x [1]
             if not ( u in TV and v in TV ):
                   T_edges . append ([ u , v ])
      # find adj mat of T
      if G . weighted ():
             AG = G . w e i g h t e d _ a dj a c e n c y _ m a t r i x ()
      else :
             AG = G . adjacency_matrix ()
      GV = G . vertices ()
      n = len ( GV )
      AT = []
      for i in GV :
             rw = [0]* n
             for j in GV :
                   if [i , j ] in T_edges :
                        rw [ j ] = AG [ i ][ j ]
             AT . append ( rw )
      AT = matrix ( AT )
      return Graph ( AT , format = " adjacency_matrix " , weighted = True )

    Here is an example. We start with the grid graph. This is implemented in Sage such
that the vertices are given by the coordinates of the grid the graph lies on, as opposed
to 0, 1, . . . , n − 1. Since the above implementation of Kruskal’s algorithm assumes that
the vertices are V = {0, 1, . . . , n − 1}, we first redefine the graph suitable for running
Kruskal’s algorithm on it.
sage : G = graphs . GridGraph ([4 ,4])
3.3. Minimum spanning trees                                                                         119

sage : A = G . adjacency_matrix ()
sage : G = Graph (A , format = " adjacency_matrix " , weighted = True )
sage : T = kruskal ( G ); T . edges ()
[(0 , 1 , 1) , (0 , 4 , 1) , (1 , 2 , 1) , (1 , 5 , 1) , (2 , 3 , 1) , (2 , 6 , 1) , (3 ,7 , 1) ,
 (4 , 8 , 1) , (5 , 9 , 1) , (6 , 10 , 1) , (7 , 11 , 1) , (8 , 12 , 1) , (9 , 13 , 1) ,
 (10 , 14 , 1) , (11 , 15 , 1)]

An illustration of this graph is given in Figure 3.12.




                 Figure 3.12: Kruskal’s algorithm for the 4 × 4 grid graph.



3.3.2      Prim’s algorithm
Like Kruskal’s algorithm, Prim’s algorithm uses a greedy approach to computing a min-
imum spanning tree of a connected weighted graph G = (V, E), where n = |V | and
m = |E|. The algorithm was developed in 1930 by Czech mathematician V. Jarnı́k [108]
and later independently by R. C. Prim [166] and E. W. Dijkstra [61]. However, Prim
was the first to present an implementation that runs in time O(n2 ). Using 2-heaps, the
runtime can be reduced [119] to O(m log n). With a Fibonacci heap implementation [82],
the runtime can be reduced even further to O(m + n log n).
    Pseudocode of Prim’s algorithm is given in Algorithm 3.3. For each v ∈ V , cost[v]
denotes the minimum weight among all edges connecting v to a vertex in the tree T ,
and parent[v] denotes the parent of v in T . During the algorithm’s execution, vertices v
that are not in T are organized in the minimum-priority queue Q, prioritized according
to cost[v]. Lines 1 to 3 set each cost[v] to a number that is larger than any weight in
the graph G, usually written ∞. The parent of each vertex is set to NULL because we
have not yet started constructing the MST T . In lines 4 to 6, we choose an arbitrary
vertex r from V and mark that vertex as the root of T . The minimum-priority queue
is set to be all vertices from V . We set cost[r] to zero, making r the only vertex so far
with a cost that is < ∞. During the first execution of the while loop from lines 7 to 12,
r is the first vertex to be extracted from Q and processed. Line 8 extracts a vertex u
from Q based on the key cost, thus moving u to the vertex set of T . Line 9 considers all
vertices adjacent to u. In an undirected graph, these are the neighbors of u; in a digraph,
we replace adj(u) with the out-neighbors oadj(u). The while loop updates the cost and
parent fields of each vertex v adjacent to u that is not in T . If parent[v] 6= NULL, then
cost[v] < ∞ and cost[v] is the weight of an edge connecting v to some vertex already in T .
Lines 13 to 14 construct the edge set of the minimum spanning tree and return this edge
set. The proof of correctness of Algorithm 3.3 is similar to the proof of Theorem 3.14.
Figure 3.13 shows the minimum spanning tree rooted at vertex 1 as a result of running
120                                                                    Chapter 3. Trees and Forests

Prim’s algorithm over a digraph; Figure 3.14 shows the corresponding tree rooted at
vertex 5 of an undirected graph.

 Algorithm 3.3: Prim’s algorithm.
  Input: A weighted connected graph G = (V, E) with weight function w.
  Output: A minimum spanning tree T of G.
 1   for each v ∈ V do
 2      cost[v] ← ∞
 3      parent[v] ← NULL
 4   r ← arbitrary vertex of V
 5   cost[r] ← 0
 6   Q←V
 7   while Q 6= ∅ do
 8      u ← extractMin(Q)
 9      for each v ∈ adj(u) do
10           if v ∈ Q and w(u, v) < cost[v] then
11               parent[v] ← u
12
                cost[v] ← w(u, v)
13   T ← (v, parent[v]) | v ∈ V − {r}
14   return T

def prim ( G ):
    """
    Implements Prim ’s algorithm to compute a MST of a graph .

      INPUT :
          G - a connected graph .
      OUTPUT :
          T - a minimum weight spanning tree .

      REFERENCES :
            http :// en . wikipedia . org / wiki / Prim ’ s_algorithm
      """
      T_vertices = [0] # assumes G . vertices = range ( n )
      T_edges = []
      E = G . edges () # a list of triples
      V = G . vertices ()
      # start ugly hack to sort E
      Er = [ list ( x ) for x in E ]
      E0 = []
      for x in Er :
            x . reverse ()
            E0 . append ( x )
      E0 . sort ()
      E = []
      for x in E0 :
            x . reverse ()
            E . append ( tuple ( x ))
      # end ugly hack to get E is sorted by weight
      for x in E :
            u = x [0]
            v = x [1]
            if u in T_vertices and not ( v in T_vertices ):
                  T_edges . append ([ u , v ])
                  T_vertices . append ( v )
      # found T_vertices , T_edges
      # find adj mat of T
      if G . weighted ():
            AG = G . w e i g h t e d _ a dj a c e n c y _ m a t r i x ()
      else :
            AG = G . adjacency_matrix ()
      GV = G . vertices ()
      n = len ( GV )
3.3. Minimum spanning trees                                                                                 121

        AT = []
        for i in GV :
            rw = [0]* n
            for j in GV :
                  if [i , j ] in T_edges :
                      rw [ j ] = AG [ i ][ j ]
            AT . append ( rw )
        AT = matrix ( AT )
        return Graph ( AT , format = " adjacency_matrix " , weighted = True )

sage : A = matrix ([[0 ,1 ,2 ,3] , [3 ,0 ,2 ,1] , [2 ,1 ,0 ,3] , [1 ,1 ,1 ,0]])
sage : G = DiGraph (A , format = " adjacency_matrix " , weighted = True )
sage : E = G . edges (); E
[(0 , 1 , 1) , (0 , 2 , 2) , (0 , 3 , 3) , (1 , 0 , 3) , (1 , 2 , 2) , (1 , 3 , 1) , (2 , 0 , 2) ,
(2 , 1 , 1) , (2 , 3 , 3) , (3 , 0 , 1) , (3 , 1 , 1) , (3 , 2 , 1)]
sage : prim ( G )
Multi - graph on 4 vertices
sage : prim ( G ). edges ()
[(0 , 1 , 1) , (0 , 2 , 2) , (1 , 3 , 1)]


                           1                                                    1



             1                           2                       1                             2

                 3                   1                               3                     1

                           2                                                    2



    0                1           1             2          0              1            1                 2


                           2                                                    2

                 3                   1                               3                     1

             1                           3                       1                             3



                           3                                                    3

                 (a) Original digraph.                          (b) 1st iteration of while loop.

                           1                                                    1



             1                           2

                 3                   1

                           2



    0                1           1             2          0                           1                 2


                           2

                 3                   1                                                     1

             1                           3                       1



                           3                                                    3

           (c) 2nd iteration of while loop.                              (d) Final MST.

                     Figure 3.13: Running Prim’s algorithm over a digraph.

sage : A = matrix ([[0 ,7 ,0 ,5 ,0 ,0 ,0] , [0 ,0 ,8 ,9 ,7 ,0 ,0] , [0 ,0 ,0 ,0 ,5 ,0 ,0] , \
... [0 ,0 ,0 ,0 ,15 ,6 ,0] , [0 ,0 ,0 ,0 ,0 ,8 ,9] , [0 ,0 ,0 ,0 ,0 ,0 ,11] , [0 ,0 ,0 ,0 ,0 ,0 ,0]])
sage : G = Graph (A , format = " adjacency_matrix " , weighted = True )
122                                                               Chapter 3. Trees and Forests

sage : E = G . edges (); E
[(0 , 1 , 7) , (0 , 3 , 5) , (1 , 2 , 8) , (1 , 3 , 9) , (1 , 4 , 7) , (2 , 4 , 5) ,
(3 , 4 , 15) , (3 , 5 , 6) , (4 , 5 , 8) , (4 , 6 , 9) , (5 , 6 , 11)]
sage : prim ( G ). edges ()
[(0 , 1 , 7) , (0 , 3 , 5) , (1 , 2 , 8) , (1 , 4 , 7) , (3 , 5 , 6) , (4 , 6 , 9)]



3.3.3      Borůvka’s algorithm
Borůvka’s algorithm [33, 34] is a procedure for finding a minimum spanning tree in a
weighted connected graph G = (V, E) for which all edge weights are distinct. It was first
published in 1926 by Otakar Borůvka but subsequently rediscovered by many others,
including Choquet [53] and Florek et al. [77]. If G has order n = |V | and size m = |E|,
it can be shown that Borůvka’s algorithm runs in time O(m log n).

 Algorithm 3.4: Borůvka’s algorithm.
  Input: A weighted connected graph G = (V, E) with weight function w. All the
          edge weights of G are distinct.
  Output: A minimum spanning tree T of G.
 1   n ← |V |
 2   T ← Kn
 3   while |E(T )| < n − 1 do
 4      for each component T 0 of T do
 5         e0 ← edge of minimum weight that leaves T 0
 6         E(T ) ← E(T ) ∪ e0
 7   return T


    Algorithm 3.4 provides pseudocode of Borůvka’s algorithm. Given a weighted con-
nected graph G = (V, E) all of whose edge weights are distinct, the initialization steps
in lines 1 and 2 construct a spanning forest T of G, i.e. the subgraph of G containing
all of the latter’s vertices and no edges. The initial forest has n components, each being
the trivial graph K1 . The while loop from lines 3 to 6 constructs a spanning tree of
G via a recursive procedure similar to Theorem 3.4. For each component T 0 of T , we
consider all the out-going edges of T 0 and choose an edge e0 that has minimum weight
among all such edges. This edge is then added to the edge set of T . In this way, two
distinct components, each of which is a tree, are joined together by a bridge. At the
end of the while loop, our final graph is a minimum spanning tree of G. Note that the
forest-merging steps in the for loop from lines 4 to 6 are amenable to parallelization,
hence the alternative name to Borůvka’s algorithm: the parallel forest-merging method.

Example 3.15. Figure 3.15 illustrates the gradual construction of a minimum spanning
tree for the undirected graph given in Figure 3.15(a). In this case, we require two
iterations of the while loop in Borůvka’s algorithm in order to obtain the final minimum
spanning tree in Figure 3.15(d).

def which_index (x , L ):
    """
    L is a list of sublists ( or tuple of sets or list
    of tuples , etc ).
      Returns the index of the first sublist which x belongs
      to , or None if x is not in flatten ( L ).
3.3. Minimum spanning trees                                                      123



                          6                                  6

                 11                                 11

           5              9                   5              9

                  8                                  8

           6              4                   6              4

                 15               5                 15               5

           3              7               2   3              7               2

                  9               8                  9               8

           5              1                   5              1

                  7                                  7

           0                                  0

           (a) Original undirected graph.     (b) 1st iteration of while loop.

                          6                                  6

                 11                                 11

           5              9                   5              9

                  8                                  8

           6              4                   6              4

                 15               5                 15               5

           3              7               2   3              7               2

                  9               8                  9               8

           5              1                   5              1

                  7                                  7

           0                                  0

           (c) 2nd iteration of while loop.   (d) 3rd iteration of while loop.

                          6                                  6

                 11

           5              9                   5              9

                  8

           6              4                   6              4

                 15               5                                  5

           3              7               2   3              7               2

                  9               8

           5              1                   5              1

                  7                                  7

           0                                  0

           (e) 4th iteration of while loop.           (f) Final MST.

         Figure 3.14: Running Prim’s algorithm over an undirected graph.
124                                                                    Chapter 3. Trees and Forests




                                6                                                 6


                        8
                7                           10

                    3           4       2                          3                    2


          9.5
                            2

      4             5                   3             5   4                                      5

                            6
          9                                      11


                    0           1       1                          0                    1

            (a) Original undirected graph.                    (b) 0th iteration of while loop.

                                6                                                 6


                                                                          8
                7                           10                 7                            10

                    3           4       2                          3              4     2



                            2                                                 2

      4                                               5   4                                      5




                    0           1       1                          0              1     1

              (c) 1st iteration of while loop.                (d) 2nd iteration of while loop.

              Figure 3.15: Recursive construction of MST via Borůvka’s algorithm.
3.3. Minimum spanning trees                                                                                 125


     The 0 - th element in
     Lx = [ L . index ( S ) for S in L if x in S ]
     almost works , but if the list is empty then Lx [0]
     throws an exception .
     EXAMPLES :
         sage : L = [[1 ,2 ,3] ,[4 ,5] ,[6 ,7 ,8]]
         sage : which_index (3 , L )
         0
         sage : which_index (4 , L )
         1
         sage : which_index (7 , L )
         2
         sage : which_index (9 , L )
         sage : which_index (9 , L ) == None
         True
     """
     for S in L :
         if x in S :
              return L . index ( S )
     return None

def boruvka ( G ):
    """
    Implements Boruvka ’s algorithm to compute a MST of a graph .
     INPUT :
         G - a connected edge - weighted graph with distinct weights .
     OUTPUT :
         T - a minimum weight spanning tree .

     REFERENCES :
           http :// en . wikipedia . org / wiki / Boruvka ’ s_algorithm
     """
     T_vertices = [] # assumes G . vertices = range ( n )
     T_edges = []
     T = Graph ()
     E = G . edges () # a list of triples
     V = G . vertices ()
     # start ugly hack to sort E
     Er = [ list ( x ) for x in E ]
     E0 = []
     for x in Er :
           x . reverse ()
           E0 . append ( x )
     E0 . sort ()
     E = []
     for x in E0 :
           x . reverse ()
           E . append ( tuple ( x ))
     # end ugly hack to get E is sorted by weight
     for e in E :
           # create about | V |/2 edges of T " cheaply "
           TV = T . vertices ()
           if not ( e [0] in TV ) or not ( e [1] in TV ):
                T . add_edge ( e )
     for e in E :
           # connect the " cheapest " components to get T
           C = T . c o n n e c t e d _ c o m p o n e n t s _ s u b g r a p h s ()
           VC = [ S . vertices () for S in C ]
           if not ( e in T . edges ()) and ( which_index ( e [0] , VC ) != which_index ( e [1] , VC )):
                if T . is_connected ():
                        break
                  T . add_edge ( e )
     return T

    Some examples using Sage:
sage : A = matrix ([[0 ,1 ,2 ,3] , [4 ,0 ,5 ,6] , [7 ,8 ,0 ,9] , [10 ,11 ,12 ,0]])
sage : G = DiGraph (A , format = " adjacency_matrix " , weighted = True )
sage : boruvka ( G )
Multi - graph on 4 vertices
sage : boruvka ( G ). edges ()
[(0 , 1 , 1) , (0 , 2 , 2) , (0 , 3 , 3)]
sage : A = matrix ([[0 ,2 ,0 ,5 ,0 ,0 ,0] , [0 ,0 ,8 ,9 ,7 ,0 ,0] , [0 ,0 ,0 ,0 ,1 ,0 ,0] ,\
...     [0 ,0 ,0 ,0 ,15 ,6 ,0] , [0 ,0 ,0 ,0 ,0 ,3 ,4] , [0 ,0 ,0 ,0 ,0 ,0 ,11] , [0 ,0 ,0 ,0 ,0 ,0 ,0]])
126                                                                 Chapter 3. Trees and Forests

sage : G = Graph (A , format = " adjacency_matrix " , weighted = True )
sage : E = G . edges (); E
[(0 , 1 , 2) , (0 , 3 , 5) , (1 , 2 , 8) , (1 , 3 , 9) , (1 , 4 , 7) ,
(2 , 4 , 1) , (3 , 4 , 15) , (3 , 5 , 6) , (4 , 5 , 3) , (4 ,6 , 4) , (5 , 6 , 11)]
sage : boruvka ( G )
Multi - graph on 7 vertices
sage : boruvka ( G ). edges ()
[(0 , 1 , 2) , (0 , 3 , 5) , (2 , 4 , 1) , (3 , 5 , 6) , (4 , 5 , 3) , (4 , 6 , 4)]
sage : A = matrix ([[0 ,1 ,2 ,5] , [0 ,0 ,3 ,6] , [0 ,0 ,0 ,4] , [0 ,0 ,0 ,0]])
sage : G = Graph (A , format = " adjacency_matrix " , weighted = True )
sage : boruvka ( G ). edges ()
[(0 , 1 , 1) , (0 , 2 , 2) , (2 , 3 , 4)]
sage : A = matrix ([[0 ,1 ,5 ,0 ,4] , [0 ,0 ,0 ,0 ,3] , [0 ,0 ,0 ,2 ,0] , [0 ,0 ,0 ,0 ,0] , [0 ,0 ,0 ,0 ,0]])
sage : G = Graph (A , format = " adjacency_matrix " , weighted = True )
sage : boruvka ( G ). edges ()
[(0 , 1 , 1) , (0 , 2 , 5) , (1 , 4 , 3) , (2 , 3 , 2)]




3.4       Binary trees
A binary tree is a rooted tree with at most two children per parent. Each child is
designated as either a left-child or a right-child . Thus binary trees are also 2-ary trees.
Some examples of binary trees are illustrated in Figure 3.16. Given a vertex v in a
binary tree T of height h, the left subtree of v is comprised of the subtree that spans
the left-child of v and all of this child’s descendants. The notion of a right-subtree of a
binary tree is similarly defined. Each of the left and right subtrees of v is itself a binary
tree with height ≤ h − 1. If v is the root vertex, then each of its left and right subtrees
has height ≤ h − 1, and at least one of these subtrees has height equal to h − 1.




                     (a)                              (b)                     (c)       (d)

                             Figure 3.16: Examples of binary trees.


Theorem 3.16. If T is a complete binary tree of height h, then T has 2h+1 − 1 vertices.

Proof. Argue by induction on h. The assertion of the theorem is trivially true in the
base case h = 0. Let k ≥ 0 and assume for induction that any complete binary tree of
height k has order 2k+1 − 1. Suppose T is a complete binary tree of height k + 1 and
denote the left and right subtrees of T by T1 and T2 , respectively. Each Ti (for i = 1, 2)
is a complete binary tree of height k and by our induction hypothesis Ti has 2k+1 − 1
vertices. Thus T has order

                             1 + (2k+1 − 1) + (2k+1 − 1) = 2k+2 − 1

as required.
3.4. Binary trees                                                                         127

   Theorem 3.16 provides a useful upper bound on the order of a binary tree of a given
height. This upper bound is stated in the following corollary.
Corollary 3.17. A binary tree of height h has at most 2h+1 − 1 vertices.
    We now count the number of possible binary trees on n vertices. Let bn be the number
of binary trees of order n. For n = 0, we set b0 = 1. The trivial graph is the only binary
tree with one vertex, hence b1 = 1. Suppose n > 1 and let T be a binary tree on n
vertices. Then the left subtree of T has order 0 ≤ i ≤ n − 1 and the right subtree has
n − 1 − i vertices. As there are bi possible left subtrees and bn−1−i possible right subtrees,
T has a total of bi bn−1−i different combinations of left and right subtrees. Summing from
i = 0 to i = n − 1 and we have
                                              n−1
                                              X
                                       bn =          bi bn−1−i .                         (3.2)
                                              i=0

Expression (3.2) is known as the Catalan recursion and the number bn is the n-th Catalan
number, which we know from problem 1.15 can be expressed in the closed form
                                                
                                           1    2n
                                   bn =             .                              (3.3)
                                         n+1 n
Figures 3.17 to 3.19 enumerate all the different binary trees on 2, 3, and 4 vertices,
respectively.




                                       (a)                (b)

                    Figure 3.17: The b2 = 2 binary trees on 2 vertices.




             (a)            (b)                (c)                 (d)             (e)

                    Figure 3.18: The b3 = 5 binary trees on 3 vertices.

   The first few values of (3.3) are
                      b0 = 1,     b1 = 1,     b2 = 2,       b3 = 5,      b4 = 14
which are rather small and of manageable size if we want to explicitly enumerate all
different binary trees with the above orders. However, from n = 4 onwards the value
of bn increases very fast. Instead of enumerating all the bn different binary trees of a
specified order n, a related problem is generating a random binary tree of order n. That
is, we consider the set B as a sample space of bn different binary trees on n vertices,
and choose a random element from B. Such a random element can be generated using
Algorithm 3.5. The list parent holds all vertices with less than two children, each vertex
can be considered as a candidate parent to which we can add a child. An element of
parent is a two-tuple (v, k) where the vertex v currently has k children.
128                                                         Chapter 3. Trees and Forests




           (a)            (b)                 (c)               (d)          (e)




           (f)           (g)            (h)               (i)               (j)




                   (k)            (l)               (m)               (n)

                  Figure 3.19: The b4 = 14 binary trees on 4 vertices.




 Algorithm 3.5: Random binary tree.
  Input: Positive integer n.
  Output: A random binary tree on n vertices.
 1   if n = 1 then
 2       return K1
 3   v←0
 4   T ← null graph
 5   add v to T
 6   parent ← [(v, 0)]
 7   for i ← 1, 2, . . . , n − 1 do
 8       (v, k) ← remove random element from parent
 9       if k < 1 then
10           add (v, k + 1) to parent
11       add edge (v, i) to T
12       add (i, 0) to parent
13   return T
3.4. Binary trees                                                                                        129

3.4.1        Binary codes
What is a code?
A code is a rule for converting data in one format, or well-defined tangible representation,
into sequences of symbols in another format. The finite set of symbols used is called the
alphabet. We shall identify a code as a finite set of symbols which are the image of the
alphabet under this conversion rule. The elements of this set are referred to as codewords.
For example, using the ASCII code, the letters in the English alphabet get converted
into numbers in the set {0, 1, . . . , 255}. If these numbers are written in binary, then
each codeword of a letter has length 8, i.e. eight bits. In this way, we can reformat or
encode a “string” into a sequence of binary symbols, i.e. 0’s and 1’s. Encoding is the
conversion process one way. Decoding is the reverse process, converting these sequences
of code-symbols back into information in the original format.
    Codes are used for:
       ˆ Economy. Sometimes this is called entropy encoding since there is an entropy
         function which describes how much information a channel (with a given error rate)
         can carry and such codes are designed to maximize entropy as best as possible. In
         this case, in addition to simply being given an alphabet A, one might be given a
         weighted alphabet, i.e. an alphabet for which each symbol a ∈ A is associated with
         a nonnegative number wa ≥ 0 (in practice, this number represents the probability
         that the symbol a occurs in a typical word).
       ˆ Reliability. Such codes are called error-correcting codes, since such codes are de-
         signed to communicate information over a noisy channel in such a way that the
         errors in transmission are likely to be correctable.
       ˆ Security. Such codes are called cryptosystems. In this case, the inverse of the
         coding function c : A −→ B ∗ is designed to be computationally infeasible. In other
         words, the coding function c is designed to be a trapdoor function.
Other codes are merely simpler ways to communicate information (e.g. flag semaphores,
color codes, genetic codes, braille codes, musical scores, chess notation, football diagrams,
and so on) and have little or no mathematical structure. We shall not study them.

Basic definitions
If every word in the code has the same length, the code is called a block code. If a
code is not a block code, then it is called a variable-length code. A prefix-free code is a
code (typically one of variable-length) with the property that there is no valid codeword
in the code that is a prefix or start of any other codeword.1 This is the prefix-free
condition.
    One example of a prefix-free code is the ASCII code. Another example is
                                               00, 01, 100.
On the other hand, a non-example is the code
                                             00, 01, 010, 100
   1
     In other words, a codeword s = s1 · · · sm is a prefix of a codeword t = t1 · · · tn if and only if m ≤ n
and s1 = t1 , . . . , sm = tm . Codes that are prefix-free are easier to decode than codes that are not
prefix-free.
130                                                               Chapter 3. Trees and Forests

since the second codeword is a prefix of the third one. Another non-example is Morse
code recalled in Table 3.1, where we use 0 for “·” (“dit”) and 1 for “−” (“dah”). For
example, consider the Morse code for aand the Morse code for w. These codewords
violate the prefix-free condition.

                                       A    01     N    10
                                       B   1000    O    111
                                       C   1010    P   0110
                                       D   100     Q   1101
                                       E    0      R    010
                                       F   0010    S    000
                                       G   110     T     1
                                       H   0000    U    001
                                       I    00     V   0001
                                       J   0111    W    011
                                       K   101     X   1001
                                       L   0100    Y   1011
                                       M    11     Z   1100

                                     Table 3.1: Morse code


Gray codes
We begin with some history.2 Frank Gray (1887–1969) wrote about the so-called Gray
codes in a 1951 paper published in the Bell System Technical Journal and then in 1953
patented a device (used for television sets) based on his paper. However, the idea of
a binary Gray code appeared earlier. In fact, it appeared in an earlier patent (one by
Stibitz in 1943). It was also used in the French engineer E. Baudot’s telegraph machine
of 1878 and in a French booklet by L. Gros on the solution published in 1872 to the
Chinese ring puzzle.
    The term “Gray code” is ambiguous. It is actually a large family of sequences of
n-tuples. Let Zm = {0, 1, . . . , m − 1}. More precisely, an m-ary Gray code of length
n (called a binary Gray code when m = 2) is a sequence of all possible (i.e. N = mn )
n-tuples
                                       g1 , g2 , . . . , gN
where

       ˆ each gi ∈ Znm ,

       ˆ gi and gi+1 differ by 1 in exactly one coordinate.

In other words, an m-ary Gray code of length n is a particular way to order the set of
all mn n-tuples whose coordinates are taken from Zm . From the transmission/commu-
nication perspective, this sequence has two advantages:

       ˆ It is easy and fast to produce the sequence, since successive entries differ in only
         one coordinate.
   2
    This history comes from an unpublished section 7.2.1.1 (“Generating all n-tuples”) in volume 4 of
Donald Knuth’s The Art of Computer Programming.
3.4. Binary trees                                                                                   131

   ˆ An error is relatively easy to detect, since we can compare an n-tuple with the
     previous one. If they differ in more than one coordinate, we conclude that an error
     was made.
Example 3.18. Here is a 3-ary Gray code of length 2:
                  [0, 0], [1, 0], [2, 0], [2, 1], [1, 1], [0, 1], [0, 2], [1, 2], [2, 2]
and the sequence
           [0, 0, 0], [1, 0, 0], [1, 1, 0], [0, 1, 0], [0, 1, 1], [1, 1, 1], [1, 0, 1], [0, 0, 1]
is a binary Gray code of length 3.
    Gray codes have applications to engineering, recreational mathematics (solving the
Tower of Hanoi puzzle, The Brain puzzle, the Chinese ring puzzle, etc.), and to math-
ematics (e.g. aspects of combinatorics, computational group theory, and the computa-
tional aspects of linear codes).

Binary Gray codes
Consider the so-called n-hypercube graph Qn , whose first few instances are illustrated
in Figure 1.28. This can be envisioned as the graph whose vertices are the vertices of a
cube in n-space
                              {(x1 , . . . , xn ) | 0 ≤ xi ≤ 1}
and whose edges are those line segments in Rn connecting two neighboring vertices, i.e.
two vertices that differ in exactly one coordinate. A binary Gray code of length n can
be regarded as a path on the hypercube graph Qn that visits each vertex of the cube
exactly once. In other words, a binary Gray code of length n may be identified with a
Hamiltonian path on the graph Qn . For example, Figure 3.20 illustrates a Hamiltonian
path on Q3 .




                  Figure 3.20: Viewing Γ3 as a Hamiltonian path on Q3 .

   How do we efficiently compute a Gray code? Perhaps the simplest way to state the
idea of quickly constructing the reflected binary Gray code Γn of length n is as follows:
                                     Γ0 = [ ],
                                                                
                                     Γn = [0, Γn−1 ], [1, Γrev
                                                           n−1 ]
132                                                               Chapter 3. Trees and Forests

where Γrev
       m means the Gray code in reverse order. For instance, we have

                                Γ0 = [ ],
                                            
                                Γ1 = [0], [1] ,
                                                                  
                                Γ2 = [0, 0], [0, 1], [1, 1], [1, 0]

and so on. This is a nice procedure for creating the entire list at once, which gets very
long very fast. An implementation of the reflected Gray code using Python is given
below.
def graycode ( length , modulus ):
    """
    Returns the n - tuple reflected Gray code mod m .

      EXAMPLES :
          sage : graycode (2 ,4)

          [[0 ,   0] ,
           [1 ,   0] ,
           [2 ,   0] ,
           [3 ,   0] ,
           [3 ,   1] ,
           [2 ,   1] ,
           [1 ,   1] ,
           [0 ,   1] ,
           [0 ,   2] ,
           [1 ,   2] ,
           [2 ,   2] ,
           [3 ,   2] ,
           [3 ,   3] ,
           [2 ,   3] ,
           [1 ,   3] ,
           [0 ,   3]]
      """
      n , m = length , modulus
      F = range ( m )
      if n == 1:
            return [[ i ] for i in F ]
      L = graycode (n -1 , m )
      M = []
      for j in F :
            M = M +[ ll +[ j ] for ll in L ]
      k = len ( M )
      Mr = [0]* m
      for i in range (m -1):
            i1 = i * int ( k / m )         # this requires Python 3.0 or Sage
            i2 = ( i +1)* int ( k / m )
            Mr [ i ] = M [ i1 : i2 ]
      Mr [m -1] = M [( m -1)* int ( k / m ):]
      for i in range ( m ):
            if is_odd ( i ):
                   Mr [ i ]. reverse ()
      M0 = []
      for i in range ( m ):
            M0 = M0 + Mr [ i ]
      return M0


   Consider the reflected binary code of length 8, i.e. Γ8 . This has 28 = 256 codewords.
Sage can easily create the list plot of the coordinates (x, y), where x is an integer j ∈ Z256
that indexes the codewords in Γ8 and the corresponding y is the j-th codeword in Γ8
converted to decimal. This will give us some idea of how the Gray code “looks” in some
sense. The plot is given in Figure 3.21.
   What if we only want to compute the i-th Gray codeword in the Gray code of length
n? Can it be computed quickly without computing the entire list? At least in the case of
the reflected binary Gray code, there is a very simple way to do this. The k-th element in
3.5. Huffman codes                                                                    133




                          200




                          100




                            0

                                 0      50    100     150    200    250

                                Figure 3.21: Scatterplot of Γ8 .


the above-described reflected binary Gray code of length n is obtained by simply adding
the binary representation of k to the binary representation of the integer part of k/2.
An example using Sage is given below.
def int2binary (m , n ):
    ’’’
    returns GF (2) vector of length n obtained
    from the binary repr of m , padded by 0 ’ s
    ( on the left ) to length n .
    EXAMPLES :
        sage : for j in range (8):
        ....:           print int2binary (j ,3)+ int2binary ( int ( j /2) ,3)
        ....:
        (0 , 0 , 0)
        (0 , 0 , 1)
        (0 , 1 , 1)
        (0 , 1 , 0)
        (1 , 1 , 0)
        (1 , 1 , 1)
        (1 , 0 , 1)
        (1 , 0 , 0)
    ’’’
    s = bin ( m )
    k = len ( s )
    F = GF (2)
    b = [ F (0)]* n
    for i in range (2 , k ):
        b [n - k + i ] = F ( int ( s [ i ]))
    return vector ( b )

def graycodeword (m , n ):
    ’’’
    returns the k - th codeword in the reflected binary Gray code
    of length n .

    EXAMPLES :
        sage : graycodeword (3 ,3)
        (0 , 1 , 0)
    ’’’
    return map ( int , int2binary (m , n )+ int2binary ( int ( m /2) , n ))




3.5     Huffman codes
An alphabet A is a finite set whose elements are referred to as symbols. A word (or string
or message) over A is a finite sequence of symbols in A and the length of the word is
134                                                            Chapter 3. Trees and Forests

the number of symbols it contains. A word is usually written by concatenating symbols
together, e.g. a1 a2 · · · ak (ai ∈ A) is a word of length k.
   A commonly occurring alphabet in practice is the binary alphabet B = {0, 1}. A
word over the binary alphabet is a finite sequence of 0’s and 1’s. If A is an alphabet, let
A∗ denote the set of all words in A. The length of a word is denoted by vertical bars.
That is, if w = a1 · · · ak is a word over A, then define |w| : A∗ −→ Z by

                                   |w| = |a1 · · · ak | = k.

Let A and B be two alphabets. A code for A using B is an injection c : A −→ B ∗ . By
abuse of notation, we often denote the code simply by the set

                               C = c(A) = {c(a) | a ∈ A}.

The elements of C are called codewords. If B is the binary alphabet, then C is called a
binary code.

3.5.1     Tree representation
Any binary code can be represented by a tree, as Example 3.19 shows.

Example 3.19. Let B` be the binary code of length ≤ `. Represent codewords of B`
using trees.

Solution. Here is how to represent the code B` consisting of all binary strings of length
≤ `. Start with the root node ε being the empty string. The two children of this node,
v0 and v1 , correspond to the two strings of length 1. Label v0 with a “0” and v1 with
a “1”. The two children of v0 , i.e. v00 and v01 , correspond to the strings of length 2
which start with a 0. Similarly, the two children of v1 , i.e. v10 and v11 , correspond to
the strings of length 2 that each starts with a 1. Continue creating child nodes until we
reach length `, at which point we stop. There are a total of 2`+1 − 1 nodes in this tree
and 2` of them are leaves (vertices of a tree with degree 1, i.e. childless nodes). Note
that the parent of any node is a prefix to that node. Label each node vs with the string
“s”, where s is a binary sequence of length ≤ `. See Figure 3.22 for an example when
` = 2.

                                               ε




                           0                                     1




                  00                01                  10              11


                Figure 3.22: Tree representation of the binary code B2 .

   In general, if C is a code contained in B` , then to create the tree for C, start with
the tree for B` . First, remove all nodes associated to a binary string for which it and
3.5. Huffman codes                                                                                      135

all of its descendants are not in C. Next, remove all labels which do not correspond to
codewords in C. The resulting labeled graph is the tree associated to the binary code C.
    For visualizing the construction of Huffman codes later, it is important to see that
we can reverse this construction to start from such a binary tree and recover a binary
code from it. The codewords are determined by the following rules:

    ˆ The root node gets the empty codeword.

    ˆ Each left-ward branch gets a 0 appended to the end of its parent. Each right-ward
      branch gets a 1 appended to the end.


3.5.2      Uniquely decodable codes
If c : A −→ B ∗ is a code, then we can extend c to A∗ by concatenation:

                                c(a1 a2 · · · ak ) = c(a1 )c(a2 ) · · · c(ak ).

If the extension c : A∗ −→ T ∗ is also an injection, then c is called uniquely decodable.
The property of unique decodability or decipherability informally means that any given
sequence of symbols has at most one interpretation as a sequence of codewords.

Example 3.20. Is the Morse code in Table 3.1 uniquely decodable? Why or why not?

Solution. Note that these Morse codewords all have lengths less than or equal to 4.
Other commonly occurring symbols used (the digits 0 through 9, punctuation symbols,
and some others) are also encodable in Morse code, but they use longer codewords.
   Let A denote the English alphabet, B = {0, 1} the binary alphabet, and c : A −→ B∗
the Morse code. Since c(ET ) = 01 = c(A), it is clear that the Morse code is not uniquely
decodable.

    In fact, prefix-free implies uniquely decodable.

Theorem 3.21. If a code c : A −→ B ∗ is prefix-free, then it is uniquely decodable.

Proof. We use induction on the length of a message. We want to show that if x1 · · · xk
and y1 · · · y` are messages with c(x1 ) · · · c(xk ) = c(y1 ) · · · c(y` ), then x1 · · · xk = y1 · · · y` .
This in turn implies k = ` and xi = yi for all i.
    The case of length 1 follows from the fact that c : A −→ B ∗ is injective (by the
definition of code).
    Suppose that the statement of the theorem holds for all codes of length < m. We
must show that the length m case is true. Suppose c(x1 ) · · · c(xk ) = c(y1 ) · · · c(y` ), where
m = max(k, `). These strings are equal, so the substring c(x1 ) of the left-hand side
and the substring c(y1 ) of the right-hand side are either equal or one is contained in the
other. If, say, c(x1 ) is properly contained in c(y1 ), then c is not prefix-free. Likewise if
c(y1 ) is properly contained in c(x1 ). Therefore, c(x1 ) = c(y1 ), which implies x1 = y1 .
Now remove this codeword from both sides, so c(x2 ) · · · c(xk ) = c(y2 ) · · · c(y` ). By the
induction hypothesis, x2 · · · xk = y2 · · · y` . These facts together imply k = ` and xi = yi
for all i.
136                                                                 Chapter 3. Trees and Forests
                                                                             P
    Consider now a weighted alphabet (A, p), where p : A −→ [0, 1] satisfies a∈A p(a) =
1, and a code c : A −→ B ∗ . In other words, p is a probability distribution on A. Think
of p(a) as the probability that the symbol a arises in a typical message. The average
word length L(c) is3                    X
                                 L(c) =     p(a) · |c(a)|
                                               a∈A

where | · | is the length of a codeword. Given a weighted alphabet (A, p) as above, a
code c : A −→ B∗ is called optimal if there is no such code with a smaller average word
length. Optimal codes satisfy the following amazing property. For a proof, which is very
easy and highly recommended for anyone who is curious to see more, refer to section 3.6
of Biggs [26].

Lemma 3.22. Suppose c : A −→ B∗ is a binary optimal prefix-free code and let ` =
maxa∈A |c(a)| denote the maximum length of a codeword. The following statements
hold.

   1. If |c(a0 )| > |c(a)|, then p(a0 ) ≤ p(a).

   2. The subset of codewords of length `, i.e.

                                       C` = {c ∈ c(A) | ` = |c(a)|}

         contains two codewords of the form b0 and b1 for some b ∈ B∗ .

3.5.3        Huffman coding
The Huffman code construction is based on the second property in Lemma 3.22. Using
this property, in 1952 David Huffman [106] presented an optimal prefix-free binary code,
which has since been named Huffman code.
    Here is the recursive/inductive construction of a Huffman code. We shall regard the
binary Huffman code as a tree, as described above. Suppose that the weighted alphabet
(A, p) has n symbols. We assume inductively that there is an optimal prefix-free binary
code for any weighted alphabet (A0 , p0 ) having < n symbols.

Huffman’s rule 1 Let a, a0 ∈ A be symbols with the smallest weights. Construct a new
    weighted alphabet with a, a0 replaced by the single symbol a∗ = aa0 and having
    weight p(a∗ ) = p(a) + p(a0 ). All other symbols and weights remain unchanged.

Huffman’s rule 2 For the code (A0 , p0 ) above, if a∗ is encoded as the binary string s,
    then the encoded binary string for a is s0 and the encoded binary string for a0 is
    s1.

   The above two rules tell us how to inductively build the tree representation for the
Huffman code of (A, p) up from its leaves (associated to the low weight symbols).

       ˆ Find two different symbols of lowest weight, a and a0 . If two such symbols do not
         exist, stop. Replace the weighted alphabet with the new weighted alphabet as in
         Huffman’s rule 1.
   3
     In probability terminology, this is the expected value E(X) of the random variable X, which assigns
to a randomly selected symbol in A the length of the associated codeword in c.
3.5. Huffman codes                                                                      137

     ˆ Add two nodes (labeled with a and a0 , respectively) to the tree, with parent a∗ (see
       Huffman’s rule 1).

     ˆ If there are no remaining symbols in A, label the parent a∗ with the empty set and
       stop. Otherwise, go to the first step.

    These ideas are captured in Algorithm 3.6, which outlines steps to construct a binary
tree corresponding to the Huffman code of an alphabet. Line 2 initializes a minimum-
priority queue Q with the symbols in the alphabet A. Line 3 creates an empty binary
tree that will be used to represent the Huffman code corresponding to A. The for loop
from lines 4 to 10 repeatedly extracts from Q two elements a and b of minimum weights.
We then create a new vertex z for the tree T and also let a and b be vertices of T . The
weight W [z] of z is the sum of the weights of a and b. We let z be the parent of a and b,
and insert the new edges za and zb into T . The newly created vertex z is now inserted
into Q with priority W [z]. After n − 1 rounds of the for loop, the priority queue has only
one element in it, namely the root r of the binary tree T . We extract r from Q (line 11)
and return it together with T (line 12).

 Algorithm 3.6: Binary tree representation of Huffman codes.
  Input: An alphabet A of n symbols. A weight list W of size n such that W [i] is
          the weight of ai ∈ A.
  Output: A binary tree T representing the Huffman code of A and the root r of T .
 1   n ← |A|
 2   Q←A                            /* minimum priority queue */
 3   T ← empty tree
 4   for i ← 1, 2, . . . , n − 1 do
 5      a ← extractMin(Q)
 6      b ← extractMin(Q)
 7      z ← node with left child a and right child b
 8      add the edges za and zb to T
 9      W [z] ← W [a] + W [b]
10      insert z into priority queue Q
11   r ← extractMin(Q)
12   return (T, r)

    The runtime analysis of Algorithm 3.6 depends on the implementation of the priority
queue Q. Suppose Q is a simple unsorted list. The initialization on line 2 requires O(n)
time. The for loop from line 4 to 10 is executed exactly n − 1 times. Searching Q to
determine the element of minimum weight requires time at most O(n). Determining two
elements of minimum weights requires time O(2n). The for loop requires time O(2n2 ),
which is also the time requirement for the algorithm. An efficient implementation of
the priority queue Q, e.g. as a binary minimum heap, can lower the running time of
Algorithm 3.6 down to O(n log2 (n)).
    Algorithm 3.6 represents the Huffman code of an alphabet as a binary tree T rooted
at r. For an illustration of the process of constructing a Huffman tree, see Figure 3.23.
To determine the actual encoding of each symbol in the alphabet, we feed T and r to
Algorithm 3.7 to obtain the encoding of each symbol. Starting from the root r whose
designated label is the empty string ε, the algorithm traverses the vertices of T in a
138                                                                                                                                            Chapter 3. Trees and Forests




                                                                                                                     13           2             2         19              4               5           2       7   3


      13   2        1        19            4               5               2            7           1       3                               1       1

                                               (a)                                                                                                                    (b)

               13       4         19               4               5            2           7           3                 13               4         19           4               5               5       7


                    2        2                                                                                                    2             2                                             2       3


                        1         1                                                                                                         1        1

                                                   (c)                                                                                                        (d)

                             13            8               19              5            5           7           13                8                 19            10                      7


                                      4            4                                2       3                             4            4                      5               5


                                           2               2                                                                      2             2                     2           3


                                                       1           1                                                                       1        1

                                                               (e)                                                                              (f)

                        13                 15                          19                   10                                         23                      15                             19


                                      7                8                                5           5                         10               13         7               8


                                               4               4                                2       3                 5            5                          4               4


                                                       2               2                                                          2         3                             2               2


                                                                1          1                                                                                                      1           1

                                                           (g)                                                                                           (h)

                                                                                                                                                    57


                                      23                                       34                                                 23                              34


                             10            13                          15           19                                10                   13             15                  19


                        5             5                        7               8                                5                 5                 7                 8


                                  2        3                           4            4                                         2        3                  4                   4


                                                                               2            2                                                                         2                   2


                                                                                        1       1                                                                                     1       1

                                                       (i)                                                                                          (j)

                                                   Figure 3.23: Constructing a Huffman tree.
3.6. Tree traversals                                                                     139

breadth-first search fashion. If v is an internal vertex with label e, the label of its left-
child is the concatenation e0 and for the right-child of v we assign the label e1. If v
happens to be a leaf vertex, we take its label to be its Huffman encoding. Any Huffman
encoding assigned to a symbol of an alphabet is not unique. Either of the two children of
an internal vertex can be designated as the left- (respectively, right-) child. The runtime
of Algorithm 3.7 is O(|V |), where V is the vertex set of T .

 Algorithm 3.7: Huffman encoding of an alphabet.
  Input: A binary tree T representing the Huffman code of an alphabet A. The
          root r of T .
  Output: A list H representing a Huffman code of A, where H[ai ] corresponds to
            a Huffman encoding of ai ∈ A.
 1   H ← []                     /* list of Huffman encodings */
 2   Q ← [r]                         /* queue of vertices */
 3   while length(Q) > 0 do
 4      root ← dequeue(Q)
 5      if root is a leaf then
 6          H[root] ← label of root
 7      else
 8          a ← left child of root
 9          b ← right child of root
10          enqueue(Q, a)
11          enqueue(Q, b)
12          label of a ← label of root + 0
13          label of b ← label of root + 1
14   return H


Example 3.23. Consider the alphabet A = {a, b, c, d, e, f } with corresponding weights
w(a) = 19, w(b) = 2, w(c) = 40, w(d) = 25, w(e) = 31, and w(f ) = 3. Construct a
binary tree representation of the Huffman code of A and determine the encoding of each
symbol of A.
Solution. Use Algorithm 3.6 to construct a binary tree representation of the weighted
alphabet A. The resulting binary tree T is shown in Figure 3.24(a), where ai : wi is an
abbreviation for “vertex ai has weight wi ”. The binary tree is rooted at k. To encode
each alphabetic symbol, input T and k into Algorithm 3.7 to get the encodings shown
in Figure 3.24(b).



3.6      Tree traversals
In computer science, tree traversal refers to the process of examining each vertex in a tree
data structure. Starting at the root of an ordered tree T , we can traverse the vertices of
T in one of various ways.
    A level-order traversal of an ordered tree T examines the vertices in increasing order
of depth, with vertices of equal depth being examined according to their prescribed
order. One way to think about level-order traversal is to consider vertices of T having
140                                                                                          Chapter 3. Trees and Forests

                                          k : 120                                                          ε




                           i : 49                        j : 71                                0                    1




                  h : 24            d : 25      e : 31            c : 40                00            01       10       11




            g:5            a : 19                                                 000          001




      b:2         f :3                                                     0000         0001

                                    (a)                                                              (b)

  Figure 3.24: Binary tree representation of an alphabet and its Huffman encodings.

the same depth as being ordered from left to right in decreasing order of importance.
If [v1 , v2 , . . . , vn ] lists the vertices from left to right at depth k, a decreasing order of
importance can be realized by assigning each vertex a numeric label using a labelling
function L : V (T ) −→ R such that L(v1 ) < L(v2 ) < · · · < L(vn ). In this way, a vertex
with a lower numeric label is examined prior to a vertex with a higher numeric label. A
level-order traversal of T , whose vertices of equal depth are prioritized according to L,
is an examination of the vertices of T from top to bottom, left to right. As an example,
the level-order traversal of the tree in Figure 3.25 is

                                        42, 4, 15, 2, 3, 5, 7, 10, 11, 12, 13, 14.

Our discussion is formalized in Algorithm 3.8, whose general structure mimics that of
breadth-first search. For this reason, level-order traversal is also known as breadth-first
traversal. Each vertex is enqueued and dequeued exactly once. The while loop is executed
n times, hence we have a runtime of O(n). Another name for level-order traversal is top-
down traversal because we first visit the root node and then work our way down the
tree, increasing the depth as we move downward.
    Pre-order traversal is a traversal of an ordered tree using a general strategy similar
to depth-first search. For this reason, pre-order traversal is also referred to as depth-first
traversal. Parents are visited prior to their respective children and siblings are visited
according to their prescribed order. The pseudocode for pre-order traversal is presented
in Algorithm 3.9. Note the close resemblance to Algorithm 3.8; the only significant
change is to use a stack instead of a queue. Each vertex is pushed and popped exactly
once, so the while loop is executed n times, resulting in a runtime of O(n). Using
Algorithm 3.9, a pre-order traversal of the tree in Figure 3.25 is

                                        42, 4, 2, 3, 10, 11, 14, 5, 12, 13, 15, 7.

    Whereas pre-order traversal lists a vertex v the first time we visit it, post-order
traversal lists v the last time we visit it. In other words, children are visited prior to their
respective parents, with siblings being visited in their prescribed order. The prefix “pre”
in “pre-order traversal” means “before”, i.e. visit parents before visiting children. On the
3.6. Tree traversals                                                          141

                                                           42




                                                  4                      15




                                   2              3             5        7




                                             10       11   12       13




                                                      14



                                  Figure 3.25: Traversing a tree.

 Algorithm 3.8: Level-order traversal.
  Input: An ordered tree T on n > 0 vertices.
  Output: A list of the vertices of T in level-order.
 1   L ← []
 2   Q ← empty queue
 3   r ← root of T
 4   enqueue(Q, r)
 5   while length(Q) > 0 do
 6      v ← dequeue(Q)
 7      append(L, v)
 8      [u1 , u2 , . . . , uk ] ← ordering of children of v
 9      for i ← 1, 2, . . . , k do
10           enqueue(Q, ui )
11   return L


 Algorithm 3.9: Pre-order traversal.
  Input: An ordered tree T on n > 0 vertices.
  Output: A list of the vertices of T in pre-order.
 1   L ← []
 2   S ← empty stack
 3   r ← root of T
 4   push(S, r)
 5   while length(S) > 0 do
 6      v ← pop(S)
 7      append(L, v)
 8      [u1 , u2 , . . . , uk ] ← ordering of children of v
 9      for i ← k, k − 1, . . . , 1 do
10           push(S, ui )
11   return L
142                                                                Chapter 3. Trees and Forests

other hand, the prefix “post” in “post-order traversal” means “after”, i.e. visit parents
after having visited their children. The pseudocode for post-order traversal is presented
in Algorithm 3.10, whose general structure bears close resemblance to Algorithm 3.9.
The while loop of the former is executed n times because each vertex is pushed and
popped exactly once, resulting in a runtime of O(n). The post-order traversal of the tree
in Figure 3.25 is
                          2, 10, 14, 11, 3, 12, 13, 5, 4, 7, 15, 42.


 Algorithm 3.10: Post-order traversal.
  Input: An ordered tree T on n > 0 vertices.
  Output: A list of the vertices of T in post-order.
 1   L ← []
 2   S ← empty stack
 3   r ← root of T
 4   push(S, r)
 5   while length(S) > 0 do
 6      if top(S) is unmarked then
 7          mark top(S)
 8          [u1 , u2 , . . . , uk ] ← ordering of children of top(S)
 9          for i ← k, k − 1, . . . , 1 do
10               push(S, ui )
11      else
12          v ← pop(S)
13          append(L, v)
14   return L


    Instead of traversing a tree T from top to bottom as is the case with level-order
traversal, we can reverse the direction of our traversal by traversing a tree from bottom
to top. Called bottom-up traversal , we first visit all the leaves of T and consider the
subtree T1 obtained by vertex deletion of those leaves. We then recursively perform
bottom-up traversal of T1 by visiting all of its leaves and obtain the subtree T2 resulting
from vertex deletion of those leaves of T1 . Apply bottom-up traversal to T2 and its vertex
deletion subtrees until we have visited all vertices, including the root vertex. The result
is a procedure for bottom-up traversal as presented in Algorithm 3.11. In lines 3 to 5,
we initialize the list C to contain the number of children of vertex i. This takes O(m)
time, where m = |E(T )|. Lines 6 to 14 extract all the leaves of T and add them to the
queue Q. From lines 15 to 23, we repeatedly apply bottom-up traversal to subtrees of
T . As each vertex is enqueued and dequeued exactly once, the two loops together run
in time O(n) and therefore Algorithm 3.11 has a runtime of O(n + m). As an example,
a bottom-up traversal of the tree in Figure 3.25 is

                             2, 7, 10, 12, 13, 14, 15, 5, 11, 3, 4, 42.

    Yet another common tree traversal technique is called in-order traversal . However, in-
order traversal is only applicable to binary trees, whereas the other traversal techniques
we considered above can be applied to any tree with at least one vertex. Given a binary
tree T having at least one vertex, in-order traversal first visits the root of T and consider
3.6. Tree traversals                                           143


 Algorithm 3.11: Bottom-up traversal.
  Input: An ordered tree T on n > 0 vertices.
  Output: A list of the vertices of T in bottom-up order.
 1   Q ← empty queue
 2   r ← root of T
 3   C ← [0, 0, . . . , 0]               /* n copies of 0 */
 4   for each edge (u, v) ∈ E(T ) do
 5      C[u] ← C[u] + 1
 6   R ← empty queue
 7   enqueue(R, r)
 8   while length(R) > 0 do
 9      v ← dequeue(R)
10      for each w ∈ children(v) do
11          if C[w] = 0 then
12              enqueue(Q, w)
13          else
14              enqueue(R, w)
15   L ← []
16   while length(Q) > 0 do
17      v ← dequeue(Q)
18      append(L, v)
19      if v 6= r then
20          C[parent(v)] ← C[parent(v)] − 1
21          if C[parent(v)] = 0 then
22              u ← parent(v)
23              enqueue(Q, u)
24   return L


 Algorithm 3.12: In-order traversal.
  Input: A binary tree T on n > 0 vertices.
  Output: A list of the vertices of T in in-order.
 1   L ← []
 2   S ← empty stack
 3   v ← root of T
 4   while True do
 5      if v 6= NULL then
 6          push(S, v)
 7          v ← left-child of v
 8      else
 9          if length(S) = 0 then
10              exit the loop
11          v ← pop(S)
12          append(L, v)
13          v ← right-child of v
14   return L
144                                                                Chapter 3. Trees and Forests

its left- and right-children. We then recursively apply in-order traversal to the left and
right subtrees of the root vertex. Notice the symmetry in our description of in-order
traversal: start at the root, then traverse the left and right subtrees in in-order. For this
reason, in-order traversal is sometimes referred to as symmetric traversal. Our discussion
is summarized in Algorithm 3.12. In the latter algorithm, if a vertex does not have a
left-child, then the operation of finding its left-child returns NULL. The same holds when
the vertex does not have a right-child. Since each vertex is pushed and popped exactly
once, it follows that in-order traversal runs in time O(n). Using Algorithm 3.12, an
in-order traversal of the tree in Figure 3.24(b) is

                         0000, 000, 0001, 00, 001, 0, 01, ε, 10, 1, 11.


3.7      Problems
      When solving problems, dig at the roots instead of just hacking at the leaves.
      — Anthony J. D’Angelo, The College Blue Book

 3.1. Construct all nonisomorphic trees of order 7.

 3.2. Let G be a weighted connected graph and let T be a subgraph of G. Then T is a
      maximum spanning tree of G provided that the following conditions are satisfied:

       (a) T is a spanning tree of G.
      (b) The total weight of T is maximum among all spanning trees of G.

      Modify Kruskal’s, Prim’s, and Borůvka’s algorithms to return a maximum spanning
      tree of G.

 3.3. Describe and present pseudocode of an algorithm to construct all spanning trees
      of a connected graph. What is the worst-case runtime of your algorithm? How
      many of the constructed spanning trees are nonisomorphic to each other? Repeat
      the exercise for minimum and maximum spanning trees.

 3.4. Consider an undirected, connected simple graph G = (V, E) of order n and size
      m and having an integer weight function w : E −→ Z given by w(e) > 0 for
      all e ∈ E. Suppose that G has N minimum spanning trees. Yamada et al. [204]
      provide an O(N m ln n) algorithm to construct all the N minimum spanning trees of
      G. Describe and provide pseudocode of the Yamada-Kataoka-Watanabe algorithm.
      Provide runtime analysis and prove the correctness of this algorithm.

 3.5. The solution of Example 3.3 relied on the following result: Let T = (V, E) be a tree
      rooted at v0 and suppose v0 has exactly two children. If maxv∈V deg(v) = 3 and
      v0 is the only vertex with degree 2, then T is a binary tree. Prove this statement.
      Give examples of graphs that are binary trees but do not satisfy the conditions
      of the result. Under which conditions would the above test return an incorrect
      answer?

 3.6. What is the worst-case runtime of Algorithm 3.1?

 3.7. Figure 3.5 shows two nonisomorphic spanning trees of the 4 × 4 grid graph.
3.7. Problems                                                                            145

      (a) For each n = 1, 2, . . . , 7, construct all nonisomorphic spanning trees of the
          n × n grid graph.
      (b) Explain and provide pseudocode of an algorithm for constructing all spanning
          trees of the n × n grid graph, where n > 0.
      (c) In general, if n is a positive integer, how many nonisomorphic spanning trees
          are there in the n × n grid graph?
      (d) Describe and provide pseudocode of an algorithm to generate a random span-
          ning tree of the n × n grid graph. What is the worst-case runtime of your
          algorithm?

3.8. Theorem 3.4 shows how to recursively construct a new tree from a given collection
     of trees, hence it can be considered as a recursive definition of trees. To prove the-
     orems based upon recursive definitions, we use a proof technique called structural
     induction. Let S(C) be a statement about the collection of structures C, each of
     which is defined by a recursive definition. In the base case, prove S(C) for the
     basis structure(s) C. For the inductive case, let X be a structure formed using
     the recursive definition from the structures Y1 , Y2 , . . . , Yk . Assume for induction
     that the statements S(Y1 ), S(Y2 ), . . . , S(Yk ) hold and use the inductive hypotheses
     S(Yi ) to prove S(X). Hence conclude that S(X) is true for all X. Apply structural
     induction to show that any graph constructed using Theorem 3.4 is indeed a tree.

3.9. In Kruskal’s Algorithm 3.2, line 5 requires that the addition of a new edge to T
     does not result in T having a cycle. A tree by definition has no cycles. Suppose
     line 5 is changed to:

                           if ei ∈
                                 / E(T ) and T ∪ {ei } is a tree then

     With this change, explain why Algorithm 3.2 would return a minimum spanning
     tree or why the algorithm would fail to do so.

3.10. This problem is concerned with improving the runtime of Kruskal’s Algorithm 3.2.
      Explain how to use a priority queue to obviate the need for sorting the edges by
      weight. Investigate the union-find data structure. Explain how to use union-find
      to ensure that the addition of each edge results in an acyclic graph.

3.11. Figure 3.26 shows a weighted version of the Chvátal graph, which has 12 ver-
      tices and 24 edges. Use this graph as input to Kruskal’s, Prim’s, and Borůvka’s
      algorithms and compare the resulting minimum spanning trees.

3.12. Algorithm 3.1 presents a randomized procedure to construct a spanning tree of a
      given connected graph via repeated edge deletion.

      (a) Describe and present pseudocode of a randomized algorithm to grow a span-
          ning tree via edge addition.
      (b) Would Algorithm 3.1 still work if the input graph G has self-loops or multiple
          edges? Explain why or why not. If not, modify Algorithm 3.1 to handle the
          case where G has self-loops and multiple edges.
      (c) Repeat the previous exercise for Kruskal’s, Prim’s, and Borůvka’s algorithms.
146                                                                                              Chapter 3. Trees and Forests



                                                                   0



                             11.4                                                                     40.7


                                          17.1                                            14.4

                                    5.6                                                           35.4
                                                                   5



             1                                                                                                         4
                                                     14.5                       15

                                      6                                                           9


                                          11.8              8.5            48             3.7


                                                     11                          10
                    0.2                                                                                         9.1

                                                 27.1                                17
             6.9      43.2                                                                                   10.2     42.7

                                                 7                22.1                8




                                                             22          36.6
                              2                                                                          3



                                                                  44.2



                                  Figure 3.26: Weighted Chvátal graph.




 Algorithm 3.13: Random spanning tree of Kn .
  Input: A positive integer n representing the order of Kn , with vertex set
          V = {0, 1, . . . , n − 1}.
  Output: A random spanning tree of Kn .
 1   if n = 1 then
 2       return K1
 3   P ← random permutation of V
 4   T ← null tree
 5   for i ← 1, 2, . . . , n − 1 do
 6       j ← random element from {0, 1, . . . , i − 1}
 7       add edge (P [j], P [i]) to T
 8   return T
3.7. Problems                                                                                          147

3.13. Algorithm 3.13 constructs a random spanning tree of the complete graph Kn on
      n > 0 vertices. Its runtime is dependent on efficient algorithms for obtaining a
      random permutation of a set of objects, and choosing a random element from a
      given set.

        (a) Describe and analyze the runtime of a procedure to construct a random per-
            mutation of a set of nonnegative integers.
        (b) Describe an algorithm for randomly choosing an element of a set of nonnega-
            tive integers. Analyze the runtime of this algorithm.
        (c) Taking into consideration the previous two algorithms, what is the runtime of
            Algorithm 3.13?

3.14. We want to generate a random undirected, connected simple graph on n vertices
      and having m edges. Start by generating a random spanning tree T of Kn . Then
      add random edges to T until the requirements are satisfied.

        (a) Present pseudocode to realize the above procedure. What is the worst-case
            runtime of your algorithm?
        (b) Modify your algorithm to handle the case where m < n − 1. Why must
            m ≥ n − 1?
        (c) Modify your algorithm to handle the case where each edge has a weight within
            the closed interval [α, β].

3.15. Enumerate all the different binary trees on 5 vertices.

3.16. Algorithm 3.5 generates a random binary tree on n > 0 vertices. Modify this
      algorithm so that it generates a random k-ary tree of order n > 0, where k ≥ 3.

3.17. Show by giving an example that the Morse code is not prefix-free.

3.18. Consider the alphabet A = {a, b, c} with corresponding probabilities (or weights)
      p(a) = 0.5, p(b) = 0.3, and p(c) = 0.2. Generate two different Huffman codes for
      A and illustrate the tree representations of those codes.

3.19. Find the Huffman code for the letters of the English alphabet weighted by the
      frequency of common American usage.4

3.20. Let G = (V1 , E2 ) be a graph and T = (V2 , E2 ) a spanning tree of G. Show that
      there is a one-to-one correspondence between fundamental cycles in G and edges
      not in T .

3.21. Let G = (V, E) be the 3 × 3 grid graph and T1 = (V1 , E1 ), T2 = (V2 , E2 ) be
      spanning trees of G in Example 3.1. Find a fundamental cycle in G for T1 that is
      not a fundamental cycle in G for T2 .

3.22. Usually there exist many spanning trees of a graph. Classify those graphs for
      which there is only one spanning tree. In other words, find necessary and sufficient
      conditions for a graph G such that if T is a spanning tree of G then T is unique.
   4
     You can find this on the Internet or in the literature. Part of this exercise is finding this frequency
distribution yourself.
148                                                              Chapter 3. Trees and Forests

3.23. Convert the function graycodeword into a pure Python function.

3.24. Example 3.13 verifies that for any positive integer n > 1, repeated iteration of
      the Euler phi function ϕ(n) eventually produces 1. Show that this is the case or
      provide an explanation why it is in general false.

3.25. The Collatz conjecture [129] asserts that for any integer n > 0, repeated iteration
      of the function                    ( 3n+1
                                              2
                                                , if n is odd,
                                T (n) =
                                           n
                                           2
                                             ,     if n is even
      eventually produces the value 1. For example, repeated iteration of T (n) starting
      from n = 22 results in the sequence

                               22, 11, 17, 26, 13, 20, 10, 5, 8, 4, 2, 1.                     (3.4)

      One way to think about the Collatz conjecture is to consider the digraph G
      produced by considering (ai , T (ai )) as a directed edge of G. Then the Collatz
      conjecture can be rephrased to say that there is some integer k > 0 such that
      (ak , T (ak )) = (2, 1) is a directed edge of G. The graph obtained in this man-
      ner is called the Collatz graph of T (n). Given a collection of positive integers
      α1 , α2 , . . . , αk , let Gαi be the Collatz graph of the function T (αi ) with initial iter-
      ation value αi . Then the union of the Gαi is the directed tree
                                                 [
                                                      Gαi
                                                  i


      rooted at 1, called the Collatz tree of (α1 , α2 , . . . , αk ). Figure 3.27 shows such a
      tree for the collection of initial iteration values 1024, 336, 340, 320, 106, 104, and
      96. See Lagarias [130, 131] for a comprehensive survey of the Collatz conjecture.

       (a) The Collatz sequence of a positive integer n > 1 is the integer sequence pro-
           duced by repeated iteration of T (n) with initial iteration value n. For example,
           the Collatz sequence of n = 22 is the sequence (3.4). Write a Sage function
           to produce the Collatz sequence of an integer n > 1.
      (b) The Collatz length of n > 1 is the number of terms in the Collatz sequence of
          n, inclusive of the starting iteration value and the final integer 1. For instance,
          the Collatz length of 22 is 12, that of 106 is 11, and that of 51 is 18. Write
          a Sage function to compute the Collatz length of a positive integer n > 1. If
          n > 1 is a vertex in a Collatz tree, verify that the Collatz length of n is the
          distance d(n, 1).
       (c) Describe the Collatz graph produced by the function T (n) with initial iteration
           value n = 1.
      (d) Fix a positive integer n > 1 and let Li be the Collatz length of the integer
          1 ≤ i ≤ n. Plot the pairs (i, Li ) on one set of axes.

3.26. The following result was first published in Wiener [202]. Let T = (V, E) be a tree
      of order n > 0. For each edge e ∈ E, let n1 (e) and n2 (e) = n − n1 (e) be the orders
3.7. Problems                                                               149




                                     1




                                     2




                                     4




                                     8




                16                                5




                32                         3             10




           21          64                  6             20




           42          128                 12     13            40




           84   85            256          24     26            80




          168   170           512          48     52     53           160




          336   340           1024         96     104    106          320


                Figure 3.27: The union of Collatz graphs is a tree.
150                                                              Chapter 3. Trees and Forests

      of the two components of the edge-deletion subgraph T − e. Show that the Wiener
      number of T is                      X
                                 W (T ) =      n1 (e) · n2 (e).
                                                 e∈E

3.27. The following result [151] was independently discovered in the late 1980s by Merris
      and McKay, and is known as the Merris-McKay theorem. Let T be a tree of order
      n and let L be its Laplacian matrix having eigenvalues λ1 , λ2 , . . . , λn . Show that
      the Wiener number of T is
                                                  n−1
                                                  X   1
                                       W (T ) = n         .
                                                  i=1
                                                      λ i


3.28. For each of the algorithms below: (i) justify whether or not it can be applied
      to multigraphs or multidigraphs; (ii) if not, modify the algorithm so that it is
      applicable to multigraphs or multidigraphs.

       (a) Randomized spanning tree construction Algorithm 3.1.
       (b) Kruskal’s Algorithm 3.2.
       (c) Prim’s Algorithm 3.3.
       (d) Borůvka’s Algorithm 3.4.

3.29. Section 3.6 provides iterative algorithms for the following tree traversal techniques:

       (a) Level-order traversal: Algorithm 3.8.
       (b) Pre-order traversal: Algorithm 3.9.
       (c) Post-order traversal: Algorithm 3.10.
       (d) Bottom-up traversal: Algorithm 3.11.
       (e) In-order traversal: Algorithm 3.12.

      Rewrite each of the above as recursive algorithms.

3.30. In cryptography, the Merkle signature scheme [149] was introduced in 1987 as an
      alternative to traditional digital signature schemes such as the Digital Signature
      Algorithm or RSA. Buchmann et al. [42] and Szydlo [181] provide efficient algo-
      rithms for speeding up the Merkle signature scheme. Investigate this scheme and
      how it uses binary trees to generate digital signatures.

3.31. Consider the finite alphabet A = {a1 , a2 , . . . , ar }. If C is a subset of A∗ , then we say
      that C is an r-ary code and call r the radix of the code. McMillan’s theorem [146],
      first published in 1956, relates codeword lengths to unique decipherability. In
      particular, let C = {c1 , c2 , . . . , cn } be an r-ary code where each ci has length `i . If
      C is uniquely decipherable, McMillan’s theorem states that the codeword lengths
      `i must satisfy Kraft’s inequality
                                              Xn
                                                   1
                                                    `i
                                                       ≤ 1.
                                              i=1
                                                  r

      Prove McMillan’s theorem.
3.7. Problems                                                                              151

3.32. A code C = {c1 , c2 , . . . , cn } is said to be instantaneous if each codeword ci can be
      interpreted as soon as it is received. For example, given the the code {01, 010} and
      the string 01010, upon receiving the first 0 we are unable to decide whether that
      element belong to 01 or 010. However, the code {1, 01} is instantaneous because
      given the string 1101 and the first 1, we can interpret the latter as the codeword
      1. Prove that a code is instantaneous if and only if it is prefix-free.

3.33. Kraft’s inequality and the accompanying Kraft’s theorem were first published [126]
      in 1949 in the Master’s thesis of Leon Gordon Kraft. Kraft’s theorem relates the
      inequality to instantaneous codes. Let C = {c1 , c2 , . . . , cn } be an r-ary code where
      each codeword ci has length `i . Kraft’s theorem states that C is an instantaneous
      code if and only if the codeword lengths satisfy
                                            Xn
                                                 1
                                                  `i
                                                     ≤ 1.
                                            i=1
                                                r

      Prove Kraft’s theorem.

3.34. Let T be a nontrivial tree and P
                                     let ni count the number of vertices of T that have
      degree i. Show that T has 2 + ∞  i=3 (i − 2)ni leaves.

3.35. If a forest F has k trees totalling n vertices altogether, how many edges does F
      contain?

3.36. The Lucas number Ln , named after Édouard Lucas, has the following recursive
      definition:                   
                                    
                                     2,             if n = 0,
                                    
                              Ln = 1,                if n = 1,
                                    
                                    
                                    
                                      Ln−1 + Ln−2 , if n > 1.
                      √
       (a) If ϕ = (1 + 5)/2 is the golden ratio, show that

                                          Ln = ϕn + (−ϕ)−n .

       (b) Let τ (Wn ) be the number of spanning trees of the wheel graph. Benjamin
           and Yerger [22] provide a combinatorial proof that τ (Wn ) = L2n − 2. Present
           the Benjamin-Yerger combinatorial proof.
Chapter 4

Tree Data Structures




      — Randall Munroe, xkcd, http://xkcd.com/835/




In Chapters 2 and 3, we discussed various algorithms that rely on priority queues as
one of their fundamental data structures. Such algorithms include Dijkstra’s algorithm,
Prim’s algorithm, and the algorithm for constructing Huffman trees. The runtime of
any algorithm that uses priority queues crucially depends on an efficient implementation
of the priority queue data structure. This chapter discusses the general priority queue
data structure and various efficient implementations based on trees. Section 4.1 provides
some theoretical underpinning of priority queues and considers a simple implementation
of priority queues as sorted lists. Section 4.2 discusses how to use binary trees to realize
an efficient implementation of priority queues called a binary heap. Although very useful
in practice, binary heaps do not lend themselves to being merged in an efficient manner,
a setback rectified in section 4.3 by a priority queue implementation called binomial
heaps. As a further application of binary trees, section 4.4 discusses binary search trees
as a general data structure for managing data in a sorted order.

                                            152
4.1. Priority queues                                                                    153

4.1      Priority queues
A priority queue is essentially a queue data structure with various accompanying rules
regarding how to access and manage elements of the queue. Recall from section 2.2.1
that an ordinary queue Q has the following basic accompanying functions for accessing
and managing its elements:

   ˆ dequeue(Q) — Remove the front of Q.

   ˆ enqueue(Q, e) — Append the element e to the end of Q.

    If Q is now a priority queue, each element is associated with a key or priority p ∈ X
from a totally ordered set X. A binary relation denoted by an infix operator, say “≤”,
is defined on all elements of X such that the following properties hold for all a, b, c ∈ X:

   ˆ Totality: We have a ≤ b or b ≤ a.

   ˆ Antisymmetry: If a ≤ b and b ≤ a, then a = b.

   ˆ Transitivity: If a ≤ b and b ≤ c, then a ≤ c.

If the above three properties hold for the relation “≤”, then we say that “≤” is a total
order on X and that X is a totally ordered set. In all, if the key of each element of
Q belongs to the same totally ordered set X, we use the total order defined on X to
compare the keys of the queue elements. For example, the set Z of integers is totally
ordered by the “less than or equal to” relation. If the key of each e ∈ Q is an element
of Z, we use the latter relation to compare the keys of elements of Q. In the case of an
ordinary queue, the key of each queue element is its position index.
    To extract from a priority queue Q an element of lowest priority, we need to define
the notion of smallest priority or key. Let pi be the priority or key assigned to element
ei of Q. Then pmin is the lowest key if pmin ≤ p for any element key p. The element with
corresponding key pmin is the minimum priority element. Based upon the notion of key
comparison, we define two operations on a priority queue:

   ˆ insert(Q, e, p) — Insert into Q the element e with key p.

   ˆ extractMin(Q) — Extract from Q an element having the smallest priority.

   An immediate application of priority queues is sorting a finite sequence of items.
Suppose L is a finite list of n > 0 items on which a total order is defined. Let Q be
an empty priority queue. In the first phase of the priority queue sorting algorithm,
we extract each element e ∈ L from L and insert e into Q with key e itself. In other
words, each element e is its own key. This first phase of the sorting algorithm requires
n element extractions from L and n element insertions into Q. The second phase of
the algorithm involves extracting elements from Q via the extractMin operation. Queue
elements are extracted via extractMin and inserted back into L in the order in which
they are extracted from Q. Algorithm 4.1 presents pseudocode of our discussion. The
runtime of Algorithm 4.1 depends on how the priority queue Q is implemented.
154                                                           Chapter 4. Tree Data Structures

 Algorithm 4.1: Sorting a sequence via priority queue.
  Input: A finite list L of n > 0 elements on which a total order is defined.
  Output: The same list L sorted by the total order relation defined on its
            elements.
 1   Q ← []
 2   for i ← 1, 2, . . . , n do
 3      e ← dequeue(L)
 4      insert(Q, e, e)
 5   for i ← 1, 2, . . . , n do
 6      e ← extractMin(Q)
 7      enqueue(L, e)


4.1.1       Sequence implementation
A simple way to implement a priority queue is to maintain a sorted sequence. Let
e0 , e1 , . . . , en be a sequence of n + 1 elements with corresponding keys κ0 , κ1 , . . . , κn and
suppose that the κi all belong to the same totally ordered set X having total order ≤.
Using the total order, we assume that the κi are sorted as
                                       κ0 ≤ κ1 ≤ · · · ≤ κn
and ei ≤ ej if and only if κi ≤ κj . Then we consider the queue Q = [e0 , e1 , . . . , en ] as a
priority queue in which the head is always the minimum element and the tail is always
the maximum element. Extracting the minimum element is simply a dequeue operation
that can be accomplished in constant time O(1). However, inserting a new element into
Q takes linear time.
    Let e be an element with corresponding key κ ∈ X. Inserting e into Q requires that
we maintain elements of Q sorted according to the total order ≤. If Q is empty, we
simply enqueue e into Q. Suppose now that Q is a nonempty priority queue. If κ ≤ κ0 ,
then e becomes the new head of Q. If κn ≤ κ, then e becomes the new tail of Q. Inserting
a new head or tail into Q each requires constant time O(1). However, if κ1 ≤ κ ≤ κn−1
then we need to traverse Q starting from e1 , searching for a position at which to insert e.
Let ei be the queue element at position i within Q. If κ ≤ κi then we insert e into Q at
position i, thus moving ei to position i + 1. Otherwise we next consider ei+1 and repeat
the above comparison process. By hypothesis, κ1 ≤ κ ≤ κn−1 and therefore inserting e
into Q takes a worst-case runtime of O(n).


4.2       Binary heaps
A sequence implementation of priority queues has the advantage of being simple to
understand. Inserting an element into a sequence-based priority queue requires linear
time, which can quickly become infeasible for queues containing hundreds of thousands
or even millions of elements. Can we do any better? Rather than using a sorted sequence,
we can use a binary tree to realize an implementation of priority queues that is much more
efficient than a sequence-based implementation. In particular, we use a data structure
called a binary heap, which allows for element insertion in logarithmic time.
    In [203], Williams introduced the heapsort algorithm and described how to implement
a priority queue using a binary heap. A basic idea is to consider queue elements as
4.2. Binary heaps                                                                           155

internal vertices in a binary tree T , with external vertices or leaves being “place-holders”.
The tree T satisfies two further properties:
   1. A relational property specifying the relative ordering and placement of queue ele-
      ments.
   2. A structural property that specifies the structure of T .
The relational property of T can be expressed as follows:
Definition 4.1. Heap-order property. Let T be a binary tree and let v be a vertex of
T other than the root. If p is the parent of v and these vertices have corresponding keys
κp and κv , respectively, then κp ≤ κv .
    The heap-order property is defined in terms of the total order used to compare the
keys of the internal vertices. Taking the total order to be the ordinary “less than or
equal to” relation, it follows from the heap-order property that the root of T is always
the vertex with a minimum key. Similarly, if the total order is the usual “greater than
or equal to” relation, then the root of T is always the vertex with a maximum key. In
general, if ≤ is a total order defined on the keys of T and u and v are vertices of T , we
say that u is less than or equal to v if and only if u ≤ v. Furthermore, u is said to be
a minimum vertex of T if and only if u ≤ v for all vertices of T . From our discussion
above, the root is always a minimum vertex of T and is said to be “at the top of the
heap”, from which we derive the name “heap” for this data structure.
    Another consequence of the heap-order property becomes apparent when we trace
out a path from the root of T to any internal vertex. Let r be the root of T and let v be
any internal vertex of T . If r, v0 , v1 , . . . , vn , v is an r-v path with corresponding keys
                                   κr , κv0 , κv1 , . . . , κvn , κv
then we have
                              κr ≤ κv0 ≤ κv1 ≤ · · · ≤ κvn ≤ κv .
In other words, the keys encountered on the path from r to v are arranged in nonde-
creasing order.
    The structural property of T is used to enforce that T be of as small a height as
possible. Before stating the structural property, we first define the level of a binary tree.
Recall that the depth of a vertex in T is its distance from the root. Level i of a binary
tree T refers to all vertices of T that have the same depth i. We are now ready to state
the heap-structure property.
Definition 4.2. Heap-structure property. Let T be a binary tree with height h.
Then T satisfies the heap-structure property if T is nearly a complete binary tree. That
is, level 0 ≤ i ≤ h − 1 has 2i vertices, whereas level h has ≤ 2h vertices. The vertices at
level h are filled from left to right.
    If a binary tree T satisfies both the heap-order and heap-structure properties, then
T is referred to as a binary heap. By insisting that T satisfy the heap-order property,
we are able to determine the minimum vertex of T in constant time O(1). Requiring
that T also satisfy the heap-structure property allows us to determine the last vertex
of T . The last vertex of T is identified as the right-most internal vertex of T having
the greatest depth. Figure 4.1 illustrates various examples of binary heaps. The heap-
structure property together with Theorem 3.16 result in the following corollary on the
height of a binary heap.
156                                                                     Chapter 4. Tree Data Structures




                                                  0



                                 2                                  3



                        4                6                 8                10




                                                 (a)

                                                       0



                    2                                                            3



           6                         4                                  8               10



      17       13           19               24                23




                                                 (b)

                                                       1



                                 3                                          2



                    6                        5                 8                 10



               13           17




                                                 (c)

       Figure 4.1: Examples of binary heaps with integer keys.
4.2. Binary heaps                                                                                                    157

Corollary 4.3. A binary heap T with n internal vertices has height
                                              
                                h = lg(n + 1) .

Proof. Level h − 1 has at least one internal vertex. Apply Theorem 3.16 to see that T
has at least
                                 2h−2+1 − 1 + 1 = 2h−1
internal vertices. On the other hand, level h − 1 has at most 2h−1 internal vertices.
Another application of Theorem 3.16 shows that T has at most

                                                 2h−1+1 − 1 = 2h − 1

internal vertices. Thus n is bounded by

                                                 2h−1 ≤ n ≤ 2h − 1.

Taking logarithms of each side in the latter bound results in

                                             lg(n + 1) ≤ h ≤ lg n + 1

and the corollary follows.




                                                         0   2     3   6    4    8    10    17   13   19   24   23


              0   2   3   4     6   8   10



                          (a)                                                         (b)



                                             1   3   2   6   5     8   10   13       17




                                                             (c)

             Figure 4.2: Sequence representations of various binary heaps.


4.2.1    Sequence representation
Any binary heap can be represented as a binary tree. Each vertex in the tree must know
about its parent and its two children. However, a more common approach is to represent
a binary heap as a sequence such as a list, array, or vector. Let T be a binary heap
consisting of n internal vertices and let L be a list of n elements. The root vertex is
represented as the list element L[0]. For each index i, the children of L[i] are L[2i + 1]
and L[2i + 2] and the parent of L[i] is
                                             
                                           i−1
                                      L           .
                                            2
158                                                          Chapter 4. Tree Data Structures

With a sequence representation of a binary heap, each vertex needs not know about
its parent and children. Such information can be obtained via simple arithmetic on
sequence indices. For example, the binary heaps in Figure 4.1 can be represented as the
corresponding lists in Figure 4.2. Note that it is not necessary to store the leaves of T
in the sequence representation.


4.2.2     Insertion and sift-up
We now consider the problem of inserting a vertex v into a binary heap T . If T is empty,
inserting a vertex simply involves the creation of a new internal vertex. We let that
new internal vertex be v and let its two children be leaves. The resulting binary heap
augmented with v has exactly one internal vertex and satisfies both the heap-order and
heap-structure properties, as shown in Figure 4.3. In other words, any binary heap with
one internal vertex trivially satisfies the heap-order property.

                                                     v




                                        (a)         (b)

                Figure 4.3: Inserting a vertex into an empty binary heap.

    Let T now be a nonempty binary heap, i.e. T has at least one internal vertex, and
suppose we want to insert into T an internal vertex v. We must identify the correct leaf
of T at which to insert v. If the n internal vertices of T are r = v0 , v1 , . . . , vn−1 , then by
the sequence representation of T we can identify the last internal vertex vn−1 in constant
time. The correct leaf at which to insert v is the sequence element immediately following
vn−1 , i.e. the element at position n in the sequence representation of T . We replace with
v the leaf at position n in the sequence so that v now becomes the last vertex of T .
    The binary heap T augmented with the new last vertex v satisfies the heap-structure
property, but may violate the heap-order property. To ensure that T satisfies the heap-
order property, we perform an operation on T called sift-up that involves possibly moving
v up through various levels of T . Let κv be the key of v and let κp(v) be the key of
v’s parent. If the relation κp(v) ≤ κv holds, then T satisfies the heap-order property.
Otherwise we swap v with its parent, effectively moving v up one level to be at the
position previously occupied by its parent. The parent of v is moved down one level
and now occupies the position where v was previously. With v in its new position, we
perform the same key comparison process with v’s new parent. The key comparison and
swapping continue until the heap-order property holds for T . In the worst case, v would
become the new root of T after undergoing a number of swaps that is proportional to the
height of T . Therefore, inserting a new internal vertex into T can be achieved in time
O(lg n). Figure 4.4 illustrates the insertion of a new internal vertex into a nonempty
binary heap and the resulting sift-up operation to maintain the heap-order property.
Algorithm 4.2 presents pseudocode of our discussion for inserting a new internal vertex
into a nonempty binary heap. The pseudocode is adapted from Howard [105], which
provides a C implementation of binary heaps.
4.2. Binary heaps                                                                                                  159




                                   1                                                          1


                2                                   3                      2                                   3


       6                 4                  8           10        6                 4                  8           10


  17       13       19       24        23                    17       13       19       24        23       0




                             (a)                                                        (b)

                                   1                                                          1


                2                                   3                      2                                   3


       6                 4                  8           10        6                 4                  0           10


  17       13       19       24        23       0            17       13       19       24        23       8




                             (c)                                                        (d)

                                   1                                                          1


                2                                   3                      2                                   0


       6                 4                  0           10        6                 4                  3           10


  17       13       19       24        23       8            17       13       19       24        23       8




                             (e)                                                        (f)

                                   1                                                          0


                2                                   0                      2                                   1


       6                 4                  3           10        6                 4                  3           10


  17       13       19       24        23       8            17       13       19       24        23       8




                             (g)                                                        (h)

                              Figure 4.4: Insert and sift-up in a binary heap.
160                                                       Chapter 4. Tree Data Structures

 Algorithm 4.2: Inserting a new internal vertex into a binary heap.
  Input: A nonempty binary heap T , in sequence representation, having n internal
          vertices. An element v that is to be inserted as a new internal vertex of T .
  Output: The binary heap T augmented with the new internal vertex v.
 1   i←n
 2   while i > 0 do
 3        p ← b(i − 1)/2c
 4        if κT [p] ≤ κv then
 5            exit the loop
 6        else
 7            T [i] ← T [p]
 8            i←p
 9   T [i] ← v
10   return T


4.2.3      Deletion and sift-down
The process for deleting the minimum vertex of a binary heap bears some resemblance
to that of inserting a new internal vertex into the heap. Having removed the minimum
vertex, we must then ensure that the resulting binary heap satisfies the heap-order
property. Let T be a binary heap. By the heap-order property, the root of T has a
key that is minimum among all keys of internal vertices in T . If the root r of T is the
only internal vertex of T , i.e. T is the trivial binary heap, we simply remove r and T now
becomes the empty binary heap or the trivial tree, for which the heap-order property
vacuously holds. Figure 4.5 illustrates the case of removing the root of a binary heap
having one internal vertex.

                                          r




                                         (a)        (b)

                    Figure 4.5: Deleting the root of a trivial binary heap.

    We now turn to the case where T has n > 1 internal vertices. Let r be the root
of T and let v be the last internal vertex of T . Deleting r would disconnect T . So we
instead replace the key and information at r with the key and other relevant information
pertaining to v. The root r now has the key of the last internal vertex, and v becomes
a leaf.
    At this point, T satisfies the heap-structure property but may violate the heap-order
property. To restore the heap-order property, we perform an operation on T called sift-
down that may possibly move r down through various levels of T . Let c(r) be the child of
r with key that is minimum among all the children of r, and let κr and κc(r) be the keys of
r and c(r), respectively. If κr ≤ κc(r) , then the heap-order property is satisfied. Otherwise
we swap r with c(r), moving r down one level to the position previously occupied by
c(r). Furthermore, c(r) is moved up one level to the position previously occupied by r.
With r in its new position, we perform the same key comparison process with a child of
4.2. Binary heaps                                                                                  161

r that has minimum key among all of r’s children. The key comparison and swapping
continue until the heap-order property holds for T . In the worst case, r would percolate
all the way down to the level that is immediately above the last level after undergoing a
number of swaps that is proportional to the height of T . Therefore, deleting the minimum
vertex of T can be achieved in time O(lg n). Figure 4.6 illustrates the deletion of the
minimum vertex of a binary heap with at least two internal vertices and the resulting
sift-down process that percolates vertices down through various levels of the heap in order
to maintain the heap-order property. Algorithm 4.3 summarizes our discussion of the
process for extracting the minimum vertex of T while also ensuring that T satisfies the
heap-order property. The pseudocode is adapted from the C implementation of binary
heaps in Howard [105]. With some minor changes, Algorithm 4.3 can be used to change
the key of the root vertex and maintain the heap-order property for the resulting binary
tree.

  Algorithm 4.3: Extract the minimum vertex of a binary heap.
   Input: A binary heap T , given in sequence representation, having n > 1 internal
           vertices.
   Output: Extract the minimum vertex of T . With one vertex removed, T must
             satisfy the heap-order property.
 1   root ← T [0]
 2   n←n−1
 3   v ← T [n]
 4   i←0
 5   j←0
 6   while True do
 7      left ← 2i + 1
 8      right ← 2i + 2
 9      if left < n and κT [left] ≤ κv then
10           if right < n and κT [right] ≤ κT [left] then
11                j ← right
12           else
13                j ← left
14      else if right < n and κT [right] ≤ κv then
15           j ← right
16      else
17           T [i] ← v
18           exit the loop
19      T [i] ← T [j]
20      i←j
21   return root




4.2.4       Constructing a binary heap
Given a collection of n vertices v0 , v1 , . . . , vn−1 with corresponding keys κ0 , κ1 , . . . , κn−1 ,
we want to construct a binary heap containing exactly those vertices. A basic approach
is to start with a trivial tree and build up a binary heap via successive insertions. As each
162                                                                   Chapter 4. Tree Data Structures




                                      1                                                       23


                2                                  3                      2                            3


       6                  4                    8       10        6                  4              8       10


  17       13        19        24         23                17       13        19        24




                                (a)                                                      (b)

                                    23                                                         2


                2                                  3                      23                           3


       6                  4                    8       10        6                  4              8       10


  17       13        19        24                           17       13        19        24




                                (c)                                                      (d)

                                      2                                                        2


                23                                 3                      4                            3


       6                  4                    8       10        6                  23             8       10


  17       13        19        24                           17       13        19        24




                                (e)                                                      (f)

                                      2                                                        2


                4                                  3                      4                            3


       6                  23                   8       10        6                  19             8       10


  17       13        19        24                           17       13        23        24




                                (g)                                                      (h)

                               Figure 4.6: Delete and sift-down in a binary heap.
4.2. Binary heaps                                                                              163

insertion requires O(lg n) time, the method of binary heap construction via successive
insertion of each of the n vertices requires O(n · lg n) time. It turns out we could do a
bit better and achieve the same result in linear time.

 Algorithm 4.4: Heapify a binary tree.
  Input: A binary tree T , given in sequence representation, having n > 1 internal
          vertices.
  Output: The binary tree T heapified so that it satisfies the heap-order property.
 1   for i ← bn/2c − 1, . . . , 0 do
 2      v ← T [i]
 3      j←0
 4      while True do
 5          left ← 2i + 1
 6          right ← 2i + 2
 7          if left < n and κT [left] ≤ κv then
 8               if right < n and κT [right] ≤ κT [left] then
 9                    j ← right
10               else
11                    j ← left
12          else if right < n and κT [right] ≤ κv then
13               j ← right
14          else
15               T [i] ← v
16               exit the while loop
17          T [i] ← T [j]
18          i←j
19   return T


    A better approach starts by letting v0 , v1 , . . . , vn−1 be the internal vertices of a binary
tree T . The tree T need not satisfy the heap-order property, but it must satisfy the heap-
structure property. Suppose T is given in sequence representation so that we have the
correspondence vi = T [i] and the last internal vertex of T has index n − 1. The parent
of T [n − 1] has index                                  
                                              n−1
                                       j=                  .
                                                  2
Any vertex of T with sequence index beyond n − 1 is a leaf. In other words, if an internal
vertex has index > j, then the children of that vertex are leaves and have indices ≥ n.
Thus any internal vertex with index ≥ bn/2c has leaves for its children. Conclude that
internal vertices with indices
                            jnk jnk       jnk
                                ,    + 1,      + 2, . . . , n − 1                    (4.1)
                              2   2         2
have only leaves for their children.
    Our next task is to ensure that the heap-order property holds for T . If v is an
internal vertex with index in (4.1), then the subtree rooted at v is trivially a binary
heap. Consider the indices from bn/2c − 1 all the way down to 0 and let i be such an
index, i.e. let 0 ≤ i ≤ bn/2c − 1. We heapify the subtree of T rooted at T [i], effectively
164                                                          Chapter 4. Tree Data Structures

performing a sift-down on this subtree. Once we have heapified all subtrees rooted at
T [i] for 0 ≤ i ≤ bn/2c − 1, the resulting tree T is a binary heap. Our discussion is
summarized in Algorithm 4.4.
     Earlier in this section, we claimed that Algorithm 4.4 can be used to construct a
binary heap in worst-case linear time. To prove this, let T be a binary tree satisfying the
heap-structure property and having n internal vertices. By Corollary 4.3, T has height
h = dlg(n + 1)e. We perform a sift-down for at most 2i vertices of depth i, where each
sift-down for a subtree rooted at a vertex of depth i takes O(h − i) time. Then the total
time for Algorithm 4.4 is
                                              !                   !
                               X                        X 2−i
                         O          2i (h − i) = O 2h
                              0≤i<h                    0≤i<h
                                                             2h−i
                                                              !
                                                       X k
                                                = O 2h
                                                       k>0
                                                           2k
                                                         
                                                = O 2h+1
                                                  = O(n)
                                     P
where we used the closed form          k>0   k/2k = 2 for a geometric series and Theorem 3.16.


4.3     Binomial heaps
We are given two binary heaps T1 and T2 and we want to merge them into a single heap.
We could start by choosing to insert each element of T2 into T1 , successively extracting
the minimum element from T2 and insert that minimum element into T1 . If T1 and T2
have m and n elements, respectively, we would perform n extractions from T2 totalling
                                                  !
                                         X
                                    O        lg k
                                               0<k≤n

time and inserting all of the extracted elements from T2 into T1 requires a total runtime
of                                                  !
                                          X
                                    O           lg k .                               (4.2)
                                              n≤k<n+m

We approximate the addition of the two sums by
                         Z     n+m                             k=n+m
                                               k ln k − k
                                     lg k dk =            +C
                           0                       ln 2        k=0

for some constant C. The above method of successive extraction and insertion therefore
has a total runtime of                                  
                              (n + m) ln(n + m) − n − m
                          O
                                          ln 2
for merging two binary heaps.
    Alternatively, we could slightly improve the latter runtime for merging T1 and T2 by
successively extracting the last internal vertex of T2 . The whole process of extracting
4.3. Binomial heaps                                                                      165

all elements from T2 in this way takes O(n) time and inserting each of the extracted
elements into T1 still requires the runtime in expression (4.2). We approximate the sum
in (4.2) by
                         Z k=n+m                            k=n+m
                                            k ln k − k
                                  lg k dk =            +C
                          k=n                   ln 2        k=n

for some constant C. Therefore the improved extraction and insertion method requires
                                                            
                          (n + m) ln(n + m) − n ln n − m
                      O                                  −n
                                        ln 2

time in order to merge T1 and T2 .
   Can we improve on the latter runtime for merging two binary heaps? It turns out we
can by using a type of mergeable heap called binomial heap that supports merging two
heaps in logarithmic time.


4.3.1     Binomial trees
A binomial heap can be considered as a collection of binomial trees. The binomial tree
of order k is denoted Bk and defined recursively as follows:

  1. The binomial tree of order 0 is the trivial tree.

  2. The binomial tree of order k > 0 is a rooted tree, where from left to right the
     children of the root of Bk are roots of Bk−1 , Bk−2 , . . . , B0 .

Various examples of binomial trees are shown in Figure 4.7. The binomial tree Bk can
also be defined as follows. Let T1 and T2 be two copies of Bk−1 with root vertices r1
and r2 , respectively. Then Bk is obtained by letting, say, r1 be the left-most child of r2 .
Lemma 4.4 lists various basic properties of binomial trees. Property (3) of Lemma 4.4
uses the binomial coefficient, from whence Bk derives its name.

Lemma 4.4. Basic properties of binomial trees. Let Bk be a binomial tree of
order k ≥ 0. Then the following properties hold:

  1. The order of Bk is 2k .

  2. The height of Bk is k.
                                k
                                    
  3. For 0 ≤ i ≤ k, we have     i
                                        vertices at depth i.

  4. The root of Bk is the only vertex with maximum degree ∆(Bk ) = k. If the children
     of the root are numbered k − 1, k − 2, . . . , 0 from left to right, then child i is the
     root of the subtree Bi .

Proof. We use induction on k. The base case for each of the above properties is B0 ,
which trivially holds.
   (1) By our inductive hypothesis, Bk−1 has order 2k−1 . Since Bk is comprised of two
copies of Bk−1 , conclude that Bk has order

                                         2k−1 + 2k−1 = 2k .
166                                            Chapter 4. Tree Data Structures




      (a) B0     (b) B1        (c) B2                (d) B3




                                 (e) B4




                                 (f) B5

         Figure 4.7: Binomial trees Bk for k = 0, 1, 2, 3, 4, 5.
4.3. Binomial heaps                                                                          167

    (2) The binomial tree Bk is comprised of two copies of Bk−1 , the root of one copy
being the left-most child of the root of the other copy. Then the height of Bk is one
greater than the height of Bk−1 . By our inductive hypothesis, Bk−1 has height k − 1 and
therefore Bk has height (k − 1) + 1 = k.
    (3) Denote by D(k, i) the number of vertices of depth i in Bk . As Bk is comprised
of two copies of Bk−1 , a vertex at depth i in Bk−1 appears once in Bk at depth i and a
second time at depth i + 1. By our inductive hypothesis,

                           D(k, i) = D(k − 1, i) + D(k − 1, i − 1)
                                                    
                                       k−1        k−1
                                   =          +
                                         i         i−1
                                      
                                       k
                                   =
                                       i
where we used Pascal’s formula which states that
                                              
                              n+1           n      n
                                      =          +
                                r         r−1      r
for any positive integers n and r with r ≤ n.
    (4) This property follows from the definition of Bk .
Corollary 4.5. If a binomial tree has order n ≥ 0, then the degree of any vertex i is
bounded by deg(i) ≤ lg n.
Proof. Apply properties (1) and (4) of Lemma 4.4.

4.3.2     Binomial heaps
In 1978, Jean Vuillemin [193] introduced binomial heaps as a data structure for im-
plementing priority queues. Mark R. Brown [40, 41] subsequently extended Vuillemin’s
work, providing detailed analysis of binomial heaps and introducing an efficient imple-
mentation.
   A binomial heap H can be considered as a collection of binomial trees. Each vertex
in H has a corresponding key and all vertex keys of H belong to a totally ordered set
having total order ≤. The heap also satisfies the following binomial heap properties:
   ˆ Heap-order property. Let Bk be a binomial tree in H. If v is a vertex of Bk
     other than the root and p is the parent of v and having corresponding keys κv and
     κp , respectively, then κp ≤ κv .
   ˆ Root-degree property. For any integer k ≥ 0, H contains at most one binomial
     tree whose root has degree k.
    If H is comprised of the binomial trees Bk0 , Bk1 , . . . , Bkn for nonnegative integers ki ,
we can consider H as a forest made up of the trees Bki . We can also represent H as a tree
in the following way. List the binomial trees of H as Bk0 , Bk1 , . . . , Bkn in nondecreasing
order of root degrees, i.e. the root of Bki has order less than or equal to the root of Bkj
if and only if ki ≤ kj . The root of H is the root of Bk0 and the root of each Bki has
for its child the root of Bki+1 . Both the forest and tree representations are illustrated in
Figure 4.8 for the binomial heap comprised of the binomial trees B0 , B1 , B3 .
168                                                           Chapter 4. Tree Data Structures




            (a) Binomial heap as a forest.                  (b) Binomial heap as a tree.

             Figure 4.8: Forest and tree representations of a binomial heap.


    The heap-order property for binomial heaps is analogous to the heap-order property
for binary heaps. In the case of binomial heaps, the heap-order property implies that
the root of a binomial tree has a key that is minimum among all vertices in that tree.
However, the similarity more or less ends there. In a tree representation of a binomial
heap, the root of the heap may not necessarily have the minimum key among all vertices
of the heap.
    The root-degree property can be used to derive an upper bound on the number of
binomial trees in a binomial heap. If H is a binomial heap with n vertices, then H has
at most 1 + blg nc binomial trees. To prove this result, note that (see Theorem 2.1 and
Corollary 2.1.1 in [169, pp.40–42]) n can be uniquely written in binary representation as
the polynomial
                           n = ak 2k + ak−1 2k−1 + · · · + a1 21 + a0 20 .
                                                                      Pblg nc i
The binary representation of n requires 1 + blg nc bits, hence n = i=0       ai 2 . Apply
property (1) of Lemma 4.4 to see that the binomial tree Bi is in H if and only if the i-th
bit is bi = 1. Conclude that H has at most 1 + blg nc binomial trees.


4.3.3     Construction and management
Let H be a binomial heap comprised of the binomial trees Bk0 , Bk1 , . . . , Bkn where the
root of Bki has order less than or equal to the root of Bkj if and only if ki ≤ kj .
Denote by rki the root of the binomial tree Bki . If v is a vertex of H, denote by
child[v] the left-most child of v and by sibling[v] we mean the sibling immediately to
the right of v. Furthermore, let parent[v] be the parent of v and let degree[v] denote
the degree of v. If v has no children, we set child[v] = NULL. If v is one of the roots
rki , we set parent[v] = NULL. And if v is the right-most child of its parent, then we set
sibling[v] = NULL.
     The roots rk0 , rk1 , . . . , rkn can be organized as a linked list, called a root list, with
two functions for accessing the next root and the previous root. The root immediately
following rki is denoted next[rki ] = sibling[v] = rki+1 and the root immediately before rki
is written prev[rki ] = rki−1 . For rk0 and rkn , we set next[rkn ] = sibling[v] = NULL and
prev[rk0 ] = NULL. We also define the function head[H] that simply returns rk0 whenever
H has at least one element, and head[H] = NULL otherwise.
4.3. Binomial heaps                                                                      169

Minimum vertex
To find the minimum vertex, we find the minimum among rk0 , rk1 , . . . , rkm because by
definition the root rki is the minimum vertex of the binomial tree Bki . If H has n vertices,
we need to check at most 1 + blg nc vertices to find the minimum vertex of H. Therefore
determining the minimum vertex of H takes O(lg n) time. Algorithm 4.5 summarizes
our discussion.

 Algorithm 4.5: Determine the minimum vertex of a binomial heap.
  Input: A binomial heap H of order n > 0.
  Output: The minimum vertex of H.
 1   u ← NULL
 2   v ← head[H]
 3   min ← ∞
 4   while v 6= NULL do
 5      if κv < min then
 6          min ← κv
 7          u←v
 8      v ← sibling[v]
 9   return u



Merging heaps
Recall that Bk is constructed by linking the root of one copy of Bk−1 with the root of
another copy of Bk−1 . When merging two binomial heaps whose roots have the same
degree, we need to repeatedly link the respective roots. The root linking procedure runs
in constant time O(1) and is rather straightforward, as presented in Algorithm 4.6.

 Algorithm 4.6: Linking the roots of binomial heaps.
  Input: Two copies of Bk−1 , one rooted at u and the other at v.
  Output: The respective roots of two copies of Bk−1 linked, with one root
            becoming the parent of the other.
 1   parent[u] ← v
 2   sibling[u] ← child[v]
 3   child[v] ← u
 4   degree[v] ← degree[v] + 1

    Besides linking the roots of two copies of Bk−1 , we also need to merge the root lists
of two binomial heaps H1 and H2 . The resulting merged list is sorted in nondecreasing
order of degree. Let L1 be the root list of H1 and let L2 be the root list of H2 . First
we create an empty list L. As the lists Li are already sorted in nondecreasing order of
vertex degree, we use merge sort to merge the Li into a single sorted list. The whole
procedure for merging the Li takes linear time O(n), where n = |L1 | + |L2 | − 1. Refer to
Algorithm 4.7 for pseudocode of the procedure just described.
    Having clarified the root linking and root lists merging procedures, we are now ready
to describe a procedure for merging two nonempty binomial heaps H1 and H2 into a
170                                                      Chapter 4. Tree Data Structures

 Algorithm 4.7: Merging two root lists.
  Input: Two root lists L1 and L2 , each containing the roots of binomial trees in
          the binomial heaps H1 and H2 , respectively. Each root list Li is sorted in
          increasing order of vertex degree.
  Output: A single list L that merges the root lists Li and sorted in nondecreasing
            order of degree.
 1   i←1
 2   j←1
 3   L ← []
 4   n ← |L1 | + |L2 | − 1
 5   append(L1 , ∞)
 6   append(L2 , ∞)
 7   for k ← 0, 1, . . . , n do
 8      if deg(L1 [i]) ≤ deg(L2 [j]) then
 9          append(L, L1 [i])
10          i←i+1
11      else
12          append(L, L2 [j])
13          j ←j+1
14   return L


single binomial heap H. Initially there are at most two copies of B0 , one from each of
the Hi . If two copies of B0 are present, we let the root of one be the parent of the other
as per Algorithm 4.6, producing B1 as a result. From thereon, we generally have at most
three copies of Bk for some integer k > 0: one from H1 , one from H2 , and the third from
a previous merge of two copies of Bk−1 . In the presence of two or more copies of Bk , we
merge two copies as per Algorithm 4.6 to produce Bk+1 . If Hi has ni vertices, then Hi
has at most 1 + blg ni c binomial trees, from which it is clear that merging H1 and H2
requires
                               max(1 + blg n1 c, 1 + blg n2 c)

steps. Letting N = max(n1 , n2 ), we see that merging H1 and H2 takes logarithmic time
O(lg N ). The operation of merging two binomial heaps is presented in pseudocode as
Algorithm 4.8, which is adapted from Cormen et al. [57, p.463] and the C implementation
of binomial queues in [105]. A word of warning is order here. Algorithm 4.8 is destructive
in the sense that it modifies the input heaps Hi in-place without making copies of those
heaps.


Vertex insertion

Let v be a vertex with corresponding key κv and let H1 be a binomial heap of n vertices.
The single vertex v can be considered as a binomial heap H2 comprised of exactly the
binomial tree B0 . Then inserting v into H1 is equivalent to merging the heaps Hi and
can be accomplished in O(lg n) time. Refer to Algorithm 4.9 for pseudocode of this
straightforward procedure.
4.3. Binomial heaps                                                     171




 Algorithm 4.8: Merging two binomial heaps.
  Input: Two binomial heaps H1 and H2 .
  Output: A binomial heap H that results from merging the Hi .
 1   H ← empty binomial heap
 2   head[H] ← merge sort the root lists of H1 and H2
 3   if head[H] = NULL then
 4       return H
 5   prevv ← NULL
 6   v ← head[H]
 7   nextv ← sibling[v]
 8   while nextv 6= NULL do
 9       if degree[v] 6= degree[nextv] or (sibling[nextv] 6= NULL and
         degree[sibling[nextv]] = degree[v]) then
10           prevv ← v
11           v ← nextv
12       else if κv ≤ κnextv then
13           sibling[v] ← sibling[nextv]
14           link the roots nextv and v as per Algorithm 4.6
15       else
16           if prevv = NULL then
17               head[H] ← nextv
18           else
19               sibling[prevv] ← nextv
20           link the roots v and nextv as per Algorithm 4.6
21           v ← nextv
22       nextv ← sibling[v]
23   return H




 Algorithm 4.9: Insert a vertex into a binomial heap.
  Input: A binomial heap H and a vertex v.
  Output: The heap H with v inserted into it.
 1   H1 ← empty binomial heap
 2   head[H1 ] ← v
 3   parent[v] ← NULL
 4   child[v] ← NULL
 5   sibling[v] ← NULL
 6   degree[v] ← 0
 7   H ← merge H and H1 as per Algorithm 4.8
172                                                        Chapter 4. Tree Data Structures

Delete minimum vertex
Extracting the minimum vertex from a binomial heap H consists of several phases.
Let H be comprised of the binomial trees Bk0 , Bk1 , . . . , Bkm with corresponding roots
rk0 , rk1 , . . . , rkm and let n be the number of vertices in H. In the first phase, from among
the rki we identify the root v with minimum key and remove v from H, an operation
that runs in O(lg n) time because we need to process at most 1 + blg nc roots. With the
binomial tree Bk rooted at v thus severed from H, we now have a forest consisting of the
heap without Bk (denote this heap by H1 ) and the binomial tree Bk . By construction,
v is the root of Bk and the children of v from left to right can be considered as roots
of binomial trees as well, say B`s , B`s−1 , . . . , B`0 where `s > `s−1 > · · · > `0 . Now
sever the root v from its children. The B`j together can be viewed as a binomial heap
H2 with, from left to right, binomial trees B`0 , B`1 , . . . , B`s . Finally the binomial heap
resulting from removing v can be obtained by merging H1 and H2 in O(lg n) time as per
Algorithm 4.8. In total we can extract the minimum vertex of H in O(lg n) time. Our
discussion is summarized in Algorithm 4.10 and an illustration of the extraction process
is presented in Figure 4.9.

 Algorithm 4.10: Extract the minimum vertex from a binomial heap.
  Input: A binomial heap H.
  Output: The minimum vertex of H removed.
 1   v ← extract minimum vertex from root list of H
 2   H2 ← empty binomial heap
 3   L ← list of v’s children reversed
 4   head[H2 ] ← L[0]
 5   H ← merge H and H2 as per Algorithm 4.8
 6   return v




4.4        Binary search trees
A binary search tree (BST) is a rooted binary tree T = (V, E) having vertex weight
function κ : V −→ R. The weight of each vertex v is referred to as its key, denoted κv .
Each vertex v of T satisfies the following properties:
      ˆ Left subtree property. The left subtree of v contains only vertices whose keys
        are at most κv . That is, if u is a vertex in the left subtree of v, then κu ≤ κv .
      ˆ Right subtree property. The right subtree of v contains only vertices whose
        keys are at least κv . In other words, any vertex u in the right subtree of v satisfies
        κv ≤ κu .
      ˆ Recursion property. Both the left and right subtrees of v must also be binary
        search trees.
The above are collectively called the binary search tree property. See Figure 4.10 for
an example of a binary search tree. Based on the binary search tree property, we can
use in-order traversal (see Algorithm 3.12) to obtain a listing of the vertices of a binary
search tree sorted in nondecreasing order of keys.
4.4. Binary search trees                                                                                                                                                      173




        70          65              60                              40                                                                  1



                    67         66        68              41         43            44               2                      3                      5                    7



                               69                   45        48    49                 3           6          9       8       12                 15



                                                    47                        4                8   11                 9



                                                                              10

                                                                              (a)

        70          65              60                              40                                                                  1



                    67         66        68              41         43            44               2                      3                      5                    7



                               69                   45        48    49                 3           6          9       8       12                 15



                                                    47                        4                8   11                 9



                                                                              10

                                                                              (b)

   70         65              60                              40                           7             5                    3                               2



              67         66         68             41         43         44                              15               8        12                 3       6           9



                         69                   45        48    49                                                          9                      4        8   11



                                              47                                                                                                10

                                                                              (c)

         7           5                                  3                                                                     2



         70    65             15         60             8          12                  40                         3                         6                     9



               67                   66         68       9                41            43           44   4                8                 11



                                    69                              45        48       49                10



                                                                    47

                                                                              (d)

              Figure 4.9: Extracting the minimum vertex from a binomial heap.
174                                                                            Chapter 4. Tree Data Structures

                                                           10



                                           5                              15



                                   4               7                 13         20



                               3       5       5       8        11



                           Figure 4.10: A binary search tree.

4.4.1     Searching
Given a BST T and a key k, we want to locate a vertex (if one exists) in T whose key is k.
The search procedure for a BST is reminiscent of the binary search algorithm discussed
in problem 2.10. We begin by examining the root v0 of T . If κv0 = k, the search is
successful. However, if κv0 6= k then we have two cases to consider. In the first case, if
k < κv0 then we search the left subtree of v0 . The second case occurs when k > κv0 , in
which case we search the right subtree of v0 . Repeat the process until a vertex v in T
is found for which k = κv or the indicated subtree is empty. Whenever the target key
is different from the key of the vertex we are currently considering, we move down one
level of T . Thus if h is the height of T , it follows that searching T takes a worst-case
runtime of O(h). The above procedure is presented in pseudocode as Algorithm 4.11.
Note that if a vertex v does not have a left subtree, the operation of locating the root
of v’s left subtree should return NULL. A similar comment applies when v does not have
a right subtree. Furthermore, from the structure of Algorithm 4.11, if the input BST is
empty then NULL is returned. See Figure 4.11 for an illustration of locating vertices with
given keys in a BST.

 Algorithm 4.11: Locate a key in a binary search tree.
  Input: A binary search tree T and a target key k.
  Output: A vertex in T with key k. If no such vertex exists, return NULL.
 1   v ← root[T ]
 2   while v 6= NULL and k 6= κv do
 3      if k < κv then
 4          v ← leftchild[v]
 5      else
 6          v ← rightchild[v]
 7   return v


   From the binary search tree property, deduce that a vertex of a BST T with minimum
key can be found by starting from the root of T and repeatedly traversing left subtrees.
When we have reached the left-most vertex v of T , querying for the left subtree of v
should return NULL. At this point, we conclude that v is a vertex with minimum key.
Each query for the left subtree moves us one level down T , resulting in a worst-case
runtime of O(h) with h being the height of T . See Algorithm 4.12 for pseudocode of the
procedure.
   The procedure for finding a vertex with maximum key is analogous to that for finding
4.4. Binary search trees                                                                                                                             175



                                     10                                                                      10



                     5                              15                                       5                              15



             4               7                 13        20                          4               7                 13        20



         3       5       5       8        11        19             23            3       5       5       8        11        19             23



     2       3                       9                        22        26   2       3                       9                        22        26

         (a) Vertex with key 6: search fail.                                 (b) Vertex with key 22: search success.

                          Figure 4.11: Finding vertices with given keys in a BST.




                                     10                                                                      10



                     5                              15                                       5                              15



             4               7                 13        20                          4               7                 13        20



         3       5       5       8        11        19             23            3       5       5       8        11        19             23



     2       3                       9                        22        26   2       3                       9                        22        26

                     (a) Minimum vertex.                                                     (b) Maximum vertex.

                 Figure 4.12: Locating minimum and maximum vertices in a BST.




                                     10                                                                      10



                     5                              15                                       5                              15



             4               7                 13        20                          4               7                 13        20



         3       5       5       8        11        19             23            3       5       5       8        11        19             23



     2       3                       9                        22        26   2       3                       9                        22        26

                         (a) Successor of 9.                                                 (b) Predecessor of 11.

                             Figure 4.13: Searching for successor and predecessor.
176                                                      Chapter 4. Tree Data Structures

one with minimum key. Starting from the root of T , we repeatedly traverse right subtrees
until we encounter the right-most vertex, which by the binary search tree property has
maximum key. This procedure has the same worst-case runtime of O(h). Figure 4.12
illustrates the process of locating the minimum and maximum vertices of a BST.

 Algorithm 4.12: Finding a vertex with minimum key in a BST.
  Input: A nonempty binary search tree T .
  Output: A vertex of T with minimum key.
 1   v ← root of T
 2   while leftchild[v] 6= NULL do
 3      v ← leftchild[v]
 4   return v


    Corresponding to the notions of left- and right-children, we can also define successors
and predecessors as follows. Suppose v is not a maximum vertex of a nonempty BST
T . The successor of v is a vertex in T distinct from v with the smallest key greater
than or equal to κv . Similarly, for a vertex v that is not a minimum vertex of T , the
predecessor of v is a vertex in T distinct from v with the greatest key less than or equal
to κv . The notions of successors and predecessors are concerned with relative key order,
not a vertex’s position within the hierarchical structure of a BST. For instance, from
Figure 4.10 we see that the successor of the vertex u with key 8 is the vertex v with key
10, i.e. the root, even though v is an ancestor of u. The predecessor of the vertex a with
key 4 is the vertex b with key 3, i.e. the minimum vertex, even though b is a descendant
of a.
    We now describe a method to systematically locate the successor of a given vertex.
Let T be a nonempty BST and v ∈ V (T ) not a maximum vertex of T . If v has a right
subtree, then we find a minimum vertex of v’s right subtree. In case v does not have
a right subtree, we backtrack up one level to v’s parent u = parent(v). If v is the root
of the right subtree of u, we backtrack up one level again to u’s parent, making the
assignments v ← u and u ← parent(u). Otherwise we return v’s parent. Repeat the
above backtracking procedure until the required successor is found. Our discussion is
summarized in Algorithm 4.13. Each time we backtrack to a vertex’s parent, we move
up one level, hence the worst-case runtime of Algorithm 4.13 is O(h) with h being the
height of T . The procedure for finding predecessors is similar. Refer to Figure 4.13 for
an illustration of locating successors and predecessors.


4.4.2      Insertion
Inserting a vertex v into a BST T is rather straightforward. If T is empty, we let v be the
root of T . Otherwise T has at least one vertex. In that case, we need to locate a vertex
in T that can act as a parent and “adopt” v as a child. To find a candidate parent, let
u be the root of T . If κv < κu then we assign the root of the left subtree of u to u itself.
Otherwise we assign the root of the right subtree of u to u. We then carry on the above
key comparison process until the operation of locating the root of a left or right subtree
returns NULL. At this point, a candidate parent for v is the last non-NULL value of u. If
κv < κu then we let v be u’s left-child. Otherwise v is the right-child of u. After each key
comparison, we move down at most one level so that in the worst-case inserting a vertex
4.4. Binary search trees                                                             177

 Algorithm 4.13: Finding successors in a binary search tree.
  Input: A nonempty binary search tree T and a vertex v that is not a maximum
          of T .
  Output: The successor of v.
 1   if rightchild[v] 6= NULL then
 2       return minimum vertex of v’s right subtree as per Algorithm 4.12
 3   u ← parent(v)
 4   while u 6= NULL and v = rightchild[u] do
 5       v←u
 6       u ← parent(u)
 7   return u


into T takes O(h) time, where h is the height of T . Algorithm 4.14 presents pseudocode
of our discussion and Figure 4.14 illustrates how to insert a vertex into a BST.

 Algorithm 4.14: Inserting a vertex into a binary search tree.
  Input: A binary search tree T and a vertex x to be inserted into T .
  Output: The same BST T but augmeneted with x.
 1   u ← NULL
 2   v ← root of T
 3   while v 6= NULL do
 4       u←v
 5       if κx < κv then
 6           v ← leftchild[v]
 7       else
 8           v ← rightchild[v]
 9   parent[x] ← u
10   if u = NULL then
11       root[T ] ← x
12   else
13       if κx < κu then
14           leftchild[u] ← x
15       else
16           rightchild[u] ← x




4.4.3      Deletion
Whereas insertion into a BST is straightforward, removing a vertex requires much more
work. Let T be a nonempty binary search tree and suppose we want to remove v ∈ V (T )
from T . Having located the position that v occupies within T , we need to consider three
separate cases: (1) v is a leaf; (2) v has one child; (3) v has two children.

     1. If v is a leaf, we simply remove v from T and the procedure is complete. The
        resulting tree without v satisfies the binary search tree property.
178                                                                                        Chapter 4. Tree Data Structures




                                       10                                                                      10



                       5                              15                                       5                              15



               4               7                 13        20                          4               7                 13        20



           3       5       5       8        11        19             23            3       5       5       8        11        19             23



       2       3                       9                        22        26   2       3                       9         12             22        26

                                       (a)                                                                     (b)

                                   Figure 4.14: Inserting into a binary search tree.




 Algorithm 4.15: Deleting a vertex from a binary search tree.
  Input: A nonempty binary search tree T and a vertex x ∈ V (T ) to be removed
          from T .
  Output: The same BST T but without x.
 1   u ← NULL
 2   v ← NULL
 3   if leftchild[x] 6= NULL or rightchild[x] 6= NULL then
 4       v←x
 5   else
 6       v ← successor of x
 7   if leftchild[v] 6= NULL then
 8       u ← leftchild[v]
 9   else
10       u ← rightchild[v]
11   if u 6= NULL then
12       parent[u] ← parent[v]
13   if parent[v] = NULL then
14       root[T ] ← u
15   else
16       if v = leftchild[parent[v]] then
17           leftchild[parent[v]] ← u
18       else
19           rightchild[parent[v]] ← u
20   if v 6= x then
21       κx ← κv
22       copy v’s auxilary data into x
4.5. AVL trees                                                                              179

   2. Suppose v has the single child u. Removing v would disconnect T , a situation that
      can be prevented by splicing out u and letting u occupy the position previously
      held by v. The resulting tree with v removed as described satisfies the binary
      search tree property.

   3. Finally suppose v has two children and let s and p be the successor and predecessor
      of v, respectively. It can be shown that s has no left-child and p has no right-child.
      We can choose to either splice out s or p. Say we choose to splice out s. Then we
      remove v and let s hold the position previously occupied by v. The resulting tree
      with v thus removed satisfies the binary search tree property.

The above procedure is summarized in Algorithm 4.15, which is adapted from [57, p.262].
Figure 4.15 illustrates the various cases to be considered when removing a vertex from
a BST. Note that in Algorithm 4.15, the process of finding the successor dominates the
runtime of the entire algorithm. Other operations in the algorithm take at most constant
time. Therefore deleting a vertex from a binary search tree can be accomplished in worst-
case O(h) time, where h is the height of the BST under consideration.


4.5      AVL trees
To motivate the need for AVL trees, note the lack of a structural property for binary
search trees similar to the structural property for binary heaps. Unlike binary heaps,
a BST is not required to have as small a height as possible. As a consequence, any
given nonempty collection C = {v0 , v1 , . . . , vk } of weighted vertices can be represented by
various BSTs with different heights; see Figure 4.16. Some BST representations of C have
heights smaller than other BST representations of C. Those BST representations with
smaller heights can result in reduced time for basic operations such as search, insertion,
and deletion and out-perform BST representations having larger heights. To achieve
logarithmic or near-logarithmic time complexity for basic operations, it is desirable to
maintain a BST with as small a height as possible.
    Adelson-Velskiı̆ and Landis [1] introduced in 1962 a criterion for constructing and
maintaining binary search trees having logarithmic heights. Recall that the height of a
tree is the maximum depth of the tree. Then the Adelson-Velskiı̆-Landis criterion can
be expressed as follows.

Definition 4.6. Height-balance property. Let T be a binary tree and suppose v is
an internal vertex of T . Let h` be the height of the left subtree of v and let hr be the
height of v’s right subtree. Then v is said to be height-balanced if |h` − hr | ≤ 1. For each
internal vertex u of T , if u is height-balanced then the whole tree T is height-balanced.

    Binary trees having the height-balance property are called AVL trees. The structure
of such trees is such that given any internal vertex v of an AVL tree, the heights of the
left and right subtrees of v differ by at most 1. Complete binary trees are trivial examples
of AVL trees, as are nearly complete binary trees. A less trivial example of AVL trees
are what is known as Fibonacci trees, so named because the construction of Fibonacci
trees bears some resemblance to how Fibonacci numbers are produced. Fibonacci trees
can be constructed recursively in the following manner. The Fibonacci tree F0 of height
0 is the trivial tree. The Fibonacci tree F1 of height 1 is a binary tree whose left and
right subtrees are both F0 . For n > 1, the Fibonacci tree Fn of height n is a binary
180                                                                                                   Chapter 4. Tree Data Structures




                                        10                                                                                10



                        5                                   15                                            5                                   15



               4                7                 13                  20                          4               7                 13                  20



           3        5       5       8        11             19                  23            3       5       5       8        11             19                  23



      2        3                        9                                  22        26   2       3                                                          22        26

                   (a) Target vertex 9 is a leaf.                                                              (b) Leaf deleted.

                                        10                                                                                10



                        5                                   15                                            5                                   15



               4                7                 13                  20                          4               7                 12                  20



           3        5       5       8        12             19                  23            3       5       5       8        11             19                  23



      2        3                        11                                 22        26   2       3                                                          22        26

           (c) Target vertex 13 has one child.                                                                (d) Vertex deleted.

                                        10



                        5                                   15                                                            10



               4                7                 13                  20                                  5                                   16



           3        5       5       8        12             18                  23                4               7                 13                  20



      2        3                        11             17        19        22        26       3       5       5       8        12             18                  23



                                                  16                                      2       3                       11             17        19        22        26

          (e) Target vertex 15 has two children.                                                              (f) Vertex deleted.

                            Figure 4.15: Deleting a vertex from a binary search tree.
4.5. AVL trees                                                                                                                             181

                                                                                                         20    4


                                                                                                    15             5


                                                                                               13                      7

                                                        13
                                                                                         10                                10

              10                                   7          15
                                                                                     7                                           13


      5                  15                    5       10          20
                                                                                 5                                                    15


  4       7         13        20           4                                4                                                              20

              (a)                                      (b)                               (c)                               (d)

                               Figure 4.16: Different structural representations of a BST.

tree whose left and right subtrees are Fn−2 and Fn−1 , respectively. Refer to Figure 4.17
for examples of Fibonacci trees; Figure 4.18 shows F6 together with subtree heights for
vertex labels.




          (a) F0                     (b) F1                 (c) F2              (d) F3                        (e) F4




                                                                        (f) F5

                                   Figure 4.17: Fibonacci trees of heights n = 0, 1, 2, 3, 4, 5.


Theorem 4.7. Logarithmic height. The height h of an AVL tree with n internal
vertices is bounded by
                        lg(n + 1) ≤ h < 2 · lg n + 1.

Proof. Any binary tree of height h has at most 2i leaves. From the proof of Corollary 4.3,
we see that n is bounded by 2h−1 ≤ n ≤ 2h − 1 and in particular n + 1 ≤ 2h . Take the
logarithm of both sides to get h ≥ lg(n + 1).
182                                                                                            Chapter 4. Tree Data Structures

                                                           6



                      4                                                                        5



          2                           3                                    3                                       4



      0       1               1               2                    1               2                   2                           3



          0       0       0       0       0       1            0       0       0       1           0       1               1               2



                                              0       0                            0       0           0       0       0       0       0       1



                                                                                                                                           0       0


              Figure 4.18: Fibonacci tree F6 with subtree heights for vertex labels.

    Now instead of deriving an upper bound for h, we find the minimum order of an AVL
tree and from there derive the required upper bound for h. Let T be an AVL tree of
minimum order. One subtree of T has height h−1. The other subtree has height h−1 or
h − 2. Our objective is to construct T to have as small a number of vertices as possible.
Without loss of generality, let the left and right subtrees of T have heights h − 2 and
h − 1, respectively. The Fibonacci tree Fh of height h fits the above requirements for T .
If N (h) denote the number of internal vertices of Fh , then N (h) = 1+N (h−1)+N (h−2)
is strictly increasing so

                                  N (h) > N (h − 2) + N (h − 2) = 2 · N (h − 2).                                                                       (4.3)

Repeated application of (4.3) shows that

                                                          N (h) > 2i · N (h − 2i)                                                                      (4.4)

for any integer i such that h − 2i ≥ 1. Choose i so that h − 2i = 1 or h − 2i = 2, say the
former. Substitute i = (h − 1)/2 into (4.4) yields N (h) > 2(h−1)/2 . That is, n > 2(h−1)/2
and taking logarithm of both sides yields h < 2 · lg n + 1.

    An immediate consequence of Theorem 4.7 is that any binary search tree implemented
as an AVL tree should have at most logarithmic height. Contrast this with a general BST
of order N1 , whose height can be as low as logarithmic in N1 or as high as linear in N1 .
Translating to search time, we see that searching a general BST using Algorithm 4.11
is in the worst case O(N1 ), which is no better than searching a sorted list. However,
if N2 is the order of an AVL tree endowed with the binary search tree property, then
searching the AVL tree using Algorithm 4.11 has worst-case O(lg N2 ) runtime. While the
worst-case runtime of searching a general BST can vary between O(lg N1 ) and O(N1 ),
that for an AVL tree with the binary search tree property is at most O(lg N2 ).

4.5.1         Insertion
The algorithm for insertion into a BST can be modified and extended to support insertion
into an AVL tree. Let T be an AVL tree having the binary search tree property, and v
4.5. AVL trees                                                                                                                                                    183

a vertex to be inserted into T . In the trivial case, T is the null tree so inserting v into T
is equivalent to letting T be the trivial tree rooted at v. Consider now the case where T
has at least one vertex. Apply Algorithm 4.14 to insert v into T and call the resulting
augmented tree Tv . But our problem is not yet over; Tv may violate the height-balance
property. To complete the insertion procedure, we require a technique to restore, if
necessary, the height-balance property to Tv .
    To see why the augmented tree Tv may not necessarily be height-balanced, let u be
the parent of v in Tv , where previously u was a vertex T (and possibly a leaf). In the
original AVL tree T , let Pu : r = u0 , u1 , . . . , uk = u be the path from the root r of T
to u with corresponding subtree heights H(ui ) = hi for i = 0, 1, . . . , k. An effect of the
insertion is to extend the path Pu to the longer path Pv : r = u0 , u1 , . . . , uk = u, v and
possibly increase subtree heights by one. One of two cases can occur with respect to Tv .
  1. Height-balanced: Tv is height-balanced so no need to do anything further. A simple
     way to detect this is to consider the subtree S rooted at u, the parent of v. If S
     has two children, then no height adjustment need to take place for vertices in Pu ,
     hence Tv is an AVL tree (see Figure 4.19). Otherwise we perform any necessary
     height adjustment for vertices in Pu , starting from uk = u and working our way
     up to the root r = u0 . After adjusting the height of ui , we test to see whether
     ui (with its new height) is height-balanced. If each of the ui with their new heights
     are height-balanced, then Tv is height-balanced.

  2. Height-unbalanced: During the height adjustment phase, it may happen that some
     uj with its new height is not height-balanced. Among all such height-unbalanced
     vertices, let u` be the first height-unbalanced vertex detected during the process of
     height adjustment starting from uk = u and going up towards r = u0 . We need to
     rebalance the subtree rooted at u` . Then we continue on adjusting heights of the
     remaining vertices in Pu , also performing height-rebalancing where necessary.
Case 1 is relatively straightforward, but it is case 2 that involves much intricate work.

                4                                                            4                                                4


        2                       3                            2                               3                        2                       3


    0       1           1           2                    0           1               1           2               0        1           1               2


        0           0       0               1                    0       0       0       0               1            0           0       0       0       1


                                        0       0                                                    0       0                                        0       0

        (a) Insert a vertex.                                 (b) Vertex inserted.                                    (c) Vertex inserted.

   Figure 4.19: Augmented tree is balanced after insertion; vertex labels are heights.

    We now turn to the case where inserting a vertex v into a nonempty AVL tree T
results in an augmented tree Tv that is not height-balanced. A general idea for rebal-
ancing (and hence restoring the height-balance property to) Tv is to determine where in
Tv the height-balance property is first violated (the search phase), and then to locally
rebalance subtrees at and around the point of violation (the repair phase). A description
of the search phase follows. Let

                                                    Pv : r = u0 , u1 , . . . , uk = u, v
184                                                                                            Chapter 4. Tree Data Structures

be the path from the root r of Tv (and hence of T ) to v. Traversing upward from v to r,
let z be the first height-unbalanced vertex. Among the children of z, let y be the child of
higher height and hence an ancestor of v. Similarly, among the children of y let x be the
child of higher height. In case a tie occurs, let x be the child of y that is also an ancestor
of v. As each vertex is an ancestor of itself, it is possible that x = v. Furthermore, x is
a grandchild of z because x is a child of y, which in turn is a child of z. The vertex z
is not height-balanced due to inserting v into the subtree rooted at y, hence the height
of y is 2 greater than its sibling (see Figure 4.20, where height-unbalanced vertices are
colored red). We have determined the location at which the height-balance property is
first violated.

                                                                                                                  5


                4                                              4                                          2                       4 z


       2                        3                       3 z                    3                      0       1           1         3 y


   0       1            1           2               0      2 y         1           2                      0           0       0             2 x


       0            0       0               1           1 x        0       0               1                                            1    0


                                        0       0          0 v                         0       0                                    0 v

       (a) Insert a vertex.                             (b) Vertex inserted.                              (c) Vertex inserted.

 Figure 4.20: Augmented tree is unbalanced after insertion; vertex labels are heights.

    We now turn to the repair phase. The central question is: How are we to re-
store the height-balance property to the subtree rooted at z? By trinode restructur-
ing is meant the process whereby the height-balance property is restored; the prefix
“tri” refers to the three vertices x, y, z that are central to this process. A common
name for the trinode restructuring is rotation in view of the geometric interpretation
of the process. Figure 4.21 distinguishes four rotation possibilities, two of which are
symmetrical to the other two. The single left rotation in Figure 4.21(a) occurs when
height(x) = height(root(T0 )) + 1 and detailed in Algorithm 4.16. The single right rota-
tion in Figure 4.21(b) occurs when height(x) = height(root(T3 )) + 1; see Algorithm 4.17
for pseudocode. Figure 4.21(c) illustrates the case of a right-left double rotation and
occurs when height(root(T3 )) = height(root(T0 )); see Algorithm 4.18 for pseudocode to
handle the rotation. The fourth case is illustrated in Figure 4.21(d) and occurs when
height(root(T0 )) = height(root(T3 )); refer to Algorithm 4.19 for pseudocode to handle
this left-right double rotation. Each of the four algorithms mentioned above run in con-
stant time O(1) and preserves the in-order traversal ordering of all vertices in Tv . In all,
the insertion procedure is summarized in Algorithm 4.20. If h is the height T , locat-
ing and inserting the vertex v takes worst-case O(h) time, which is also the worst-case
runtime for the search-and-repair phase. Thus letting n be the number of vertices in T ,
insertion takes worst-case O(lg n) time.


4.5.2          Deletion
The process of removing a vertex from an AVL tree is similar to the insertion proce-
dure. However, instead of using the insertion algorithm for BST, we use the deletion
4.5. AVL trees                                                                                                                                          185




                      z

                                             y                                                                               y


                                                                    x                             z                                            x
        T0


                          T1


                                                 T2                      T3                  T0                T1                T2                T3

                                                                (a) Left rotation of y over z.


                                                           z

                                   y                                                                                y


             x                                                                                    x                                            z
                                                                         T3


                                                      T2


       T0                      T1                                                            T0                T1                T2                T3

                                                               (b) Right rotation of y over z.


                                   z

                                                       y                                                            x

                               x                                                         z                                            y

             T0



                                                                    T3

                 T1                     T2                                          T0                T1                T2                T3

             (c) Double rotation: right rotation of x over y, then left rotation over z.


                                             z

                      y                                                                                    x

                                                 x                                       y                                        z
                                                                T3


             T0

                                   T1                          T2                  T0             T1                    T2                T3

             (d) Double rotation: left rotation of x over y, then right rotation over z.

                 Figure 4.21: Rotations in the trinode restructuring process.
186                                                       Chapter 4. Tree Data Structures




 Algorithm 4.16: Single left rotation in the trinode restructure process.
  Input: Three vertices x, y, z of an augmented AVL tree Tv , where z is the first
          height-unbalanced vertex in the path from v up to the root of Tv . The left
          subtree of z is denoted T0 and the left subtree of y is T1 . The left and
          right subtrees of x are T2 and T3 , respectively.
  Output: A single left rotation to height-balance the subtree rooted at z.
 1   rightchild[parent[z]] ← y
 2   parent[y] ← parent[z]
 3   parent[z] ← y
 4   leftchild[y] ← z
 5   parent[root[T1 ]] ← z
 6   rightchild[z] ← root[T1 ]
 7   height[z] ← 1 + max(height[root[T0 ]], height[root[T1 ]])
 8   height[x] ← 1 + max(height[root[T2 ]], height[root[T3 ]])
 9   height[y] ← 1 + max(height[x], height[z])




 Algorithm 4.17: Single right rotation in the trinode restructure process.
  Input: Three vertices x, y, z of an augmented AVL tree Tv , where z is the first
          height-unbalanced vertex in the path from v up to the root of Tv . The left
          subtree of z is T3 and the right subtree of y is T2 . The left and right
          subtrees of x are T0 and T1 , respectively.
  Output: A single right rotation to height-balance the subtree rooted at z.
 1   leftchild[parent[z]] ← y
 2   parent[y] ← parent[z]
 3   parent[z] ← y
 4   rightchild[y] ← z
 5   parent[root[T2 ]] ← z
 6   leftchild[z] ← root[T2 ]
 7   height[x] ← 1 + max(height[root[T0 ]], height[root[T1 ]])
 8   height[z] ← 1 + max(height[root[T2 ]], height[root[T3 ]])
 9   height[y] ← 1 + max(height[x], height[z])
4.5. AVL trees                                                                     187




 Algorithm 4.18: Double rotation: right rotation followed by left rotation.
  Input: Three vertices x, y, z of an augmented AVL tree Tv , where z is the first
          height-unbalanced vertex in the path from v up to the root of Tv . The left
          subtree of z is T0 and the right subtree of y is T3 . The roots of the left
          and right subtrees of x are denoted T1 and T2 , respectively.
  Output: A right-left double rotation to height-balance the subtree rooted at z.
 1   rightchild[parent[z]] ← x
 2   parent[x] ← parent[z]
 3   parent[z] ← x
 4   leftchild[x] ← z
 5   rightchild[x] ← y
 6   rightchild[z] ← root[T1 ]
 7   parent[root[T1 ]] ← z
 8   parent[y] ← x
 9   leftchild[y] ← root[T2 ]
10   parent[root[T2 ]] ← y
11   height[z] ← 1 + max(height[root[T0 ]], height[root[T1 ]])
12   height[y] ← 1 + max(height[root[T2 ]], height[root[T3 ]])
13   height[x] ← 1 + max(height[y], height[z])




 Algorithm 4.19: Double rotation: left rotation followed by right rotation.
  Input: Three vertices x, y, z of an augmented AVL tree Tv , where z is the first
          height-unbalanced vertex in the path from v up to the root of Tv . The left
          subtree of y is T0 and the right subtree of z is T3 . The roots of the left
          and right subtrees of x are denoted T1 and T2 , respectively.
  Output: A left-right double rotation to height-balance the subtree rooted at z.
 1   leftchild[parent[z]] ← x
 2   parent[x] ← parent[z]
 3   parent[z] ← x
 4   rightchild[x] ← z
 5   leftchild[z] ← root[T2 ]
 6   parent[T2 ] ← z
 7   leftchild[x] ← y
 8   parent[y] ← x
 9   rightchild[y] ← root[T1 ]
10   parent[root[T1 ]] ← y
11   height[z] ← 1 + max(height[root[T2 ]], height[root[T3 ]])
12   height[y] ← 1 + max(height[root[T0 ]], height[root[T1 ]])
13   height[x] ← 1 + max(height[y], height[z])
188                                                        Chapter 4. Tree Data Structures


 Algorithm 4.20: Insert a vertex into an AVL tree.
  Input: An AVL tree T and a vertex v.
  Output: The AVL tree T with v inserted into it.
 1   insert v into T as per Algorithm 4.14
 2   height[v] ← 0
 3   u←v                           /* begin height adjustment */
 4   x ← NULL
 5   y ← NULL
 6   z ← NULL
 7   while parent[u] 6= NULL do
 8       u ← parent[u]
 9       if leftchild[u] 6= NULL and rightchild[u] 6= NULL then
10           h` ← height[leftchild[u]]
11           hr ← height[rightchild[u]]
12           height[u] ← 1 + max(h` , hr )
13           if |h` − hr | > 1 then
14               if height[rightchild[rightchild[u]]] = height[leftchild[u]] + 1 then
15                   z←u
16                   y ← rightchild[z]
17                   x ← rightchild[y]
18                   trinode restructuring as per Algorithm 4.16
19                   continue with next iteration of loop
20               if height[leftchild[leftchild[u]]] = height[rightchild[u]] + 1 then
21                   z←u
22                   y ← leftchild[z]
23                   x ← leftchild[y]
24                   trinode restructuring as per Algorithm 4.17
25                   continue with next iteration of loop
26               if height[rightchild[rightchild[u]]] = height[leftchild[u]] then
27                   z←u
28                   y ← rightchild[z]
29                   x ← leftchild[y]
30                   trinode restructuring as per Algorithm 4.18
31                   continue with next iteration of loop
32               if height[leftchild[leftchild[u]]] = height[rightchild[u]] then
33                   z←u
34                   y ← leftchild[z]
35                   x ← rightchild[y]
36                   trinode restructuring as per Algorithm 4.19
37                   continue with next iteration of loop
38       if leftchild[u] 6= NULL then
39           height[u] ← 1 + height[leftchild[u]]
40           continue with next iteration of loop
41       if rightchild[u] 6= NULL then
42           height[u] ← 1 + height[rightchild[u]]
43           continue with next iteration of loop
4.6. Problems                                                                             189

Algorithm 4.15 for BST to remove the target vertex from an AVL tree. The result-
ing tree may violate the height-balance property, which can be restored using trinode
restructuring.
    Let T be an AVL tree having vertex v and suppose we want to remove v from T . In
the trivial case, T is the trivial tree whose sole vertex is v. Deleting v is simply removing
it from T so that T becomes the null tree. On the other hand, suppose T has at least
n > 1 vertices. Apply Algorithm 4.15 to remove v from T and call the resulting tree with
v removed Tv . It is possible that Tv does not satisfy the height-balance property. To
restore the height-balance property to Tv , let u be the parent of v in T prior to deleting
v from T . Having deleted v from T , let P : r = u0 , u1 , . . . , uk = u be the path from the
root r of Tv to u. Adjust the height of u and, traversing from u up to r, perform height
adjustment to each vertex in P and where necessary carry out trinode restructuring. The
resulting algorithm is very similar to Algorithm 4.20; see Algorithm 4.21 for pseudocode.
The deletion procedure via Algorithm 4.15 requires worst-case runtime O(lg n), where
n is the number of vertices in T , and the height-adjustment process runs in worst-case
O(lg n) time as well. Thus Algorithm 4.21 has worst-case runtime of O(lg n).


4.6      Problems
      No problem is so formidable that you can’t walk away from it.
      — Charles M. Schulz


 4.1. Let Q be a priority queue of n > 1 elements, given in sequence representation.
      From section 4.1.1, we know that inserting an element into Q takes O(n) time and
      deleting an element from Q takes O(1) time.

       (a) Suppose Q is an empty priority queue and let e0 , e1 , . . . , en be n + 1 elements
           we want to insert into Q. What is the total runtime required to insert all the
           ei into Q while also ensuring that the resulting queue is a priority queue?
       (b) Let Q = [e0 , e1 , . . . , en ] be a priority queue of n + 1 elements. What is the
           total time required to remove all the elements of Q?

 4.2. Prove the correctness of Algorithms 4.2 and 4.3.

 4.3. Describe a variant of Algorithm 4.3 for modifying the key of the root of a binary
      heap, without extracting any vertex from the heap.

 4.4. Section 4.2.2 describes how to insert an element into a binary heap T . The general
      strategy is to choose the first leaf following the last internal vertex of T , replace
      that leaf with the new element so that it becomes an internal vertex, and perform a
      sift-up operation from there. If instead we choose any leaf of T and replace that leaf
      with the new element, explain why we cannot do any better than Algorithm 4.2.

 4.5. Section 4.2.3 shows how to extract the minimum vertex from a binary heap T .
      Instead of replacing the root with the last internal vertex of T , we could replace
      the root with any other vertex of T that is not a leaf and then proceed to maintain
      the heap-structure and heap-order properties. Explain why the latter strategy is
      not better than Algorithm 4.3.
190                                                       Chapter 4. Tree Data Structures


 Algorithm 4.21: Delete a vertex from an AVL tree.
  Input: An AVL tree T and a vertex v ∈ V (T ).
  Output: The AVL tree T with v removed from it.
 1   u ← parent[v]
 2   delete v from T as per Algorithm 4.15
 3   adjust the height of u                /* begin height adjustment */
 4   x ← NULL
 5   y ← NULL
 6   z ← NULL
 7   while parent[u] 6= NULL do
 8      u ← parent[u]
 9      if leftchild[u] 6= NULL and rightchild[u] 6= NULL then
10          h` ← height[leftchild[u]]
11          hr ← height[rightchild[u]]
12          height[u] ← 1 + max(h` , hr )
13          if |h` − hr | > 1 then
14              if height[rightchild[rightchild[u]]] = height[leftchild[u]] + 1 then
15                  z←u
16                  y ← rightchild[z]
17                  x ← rightchild[y]
18                  trinode restructuring as per Algorithm 4.16
19                  continue with next iteration of loop
20              if height[leftchild[leftchild[u]]] = height[rightchild[u]] + 1 then
21                  z←u
22                  y ← leftchild[z]
23                  x ← leftchild[y]
24                  trinode restructuring as per Algorithm 4.17
25                  continue with next iteration of loop
26              if height[rightchild[rightchild[u]]] = height[leftchild[u]] then
27                  z←u
28                  y ← rightchild[z]
29                  x ← leftchild[y]
30                  trinode restructuring as per Algorithm 4.18
31                  continue with next iteration of loop
32              if height[leftchild[leftchild[u]]] = height[rightchild[u]] then
33                  z←u
34                  y ← leftchild[z]
35                  x ← rightchild[y]
36                  trinode restructuring as per Algorithm 4.19
37                  continue with next iteration of loop
38      if leftchild[u] 6= NULL then
39          height[u] ← 1 + height[leftchild[u]]
40          continue with next iteration of loop
41      if rightchild[u] 6= NULL then
42          height[u] ← 1 + height[rightchild[u]]
43          continue with next iteration of loop
4.6. Problems                                                                          191

 4.6. Let S be a sequence of n > 1 real numbers. How can we use algorithms described
      in section 4.2 to sort S?
 4.7. The binary heaps discussed in section 4.2 are properly called minimum binary
      heaps because the root of the heap is always the minimum vertex. A correspond-
      ing notion is that of maximum binary heaps, where the root is always the maximum
      element. Describe algorithms analogous to those in section 4.2 for managing max-
      imum binary heaps.
 4.8. What is the total time required to extract all elements from a binary heap?
                                
 4.9. Numbers of the form nr are called binomial coefficients. They also count the
      number of r-combinations from a set of n objects. Algorithm 4.22 presents pseu-
      docode to generate all the r-combinations of a set of n distinct objects. What is the
      worst-case runtime of Algorithm 4.22? Prove the correctness of Algorithm 4.22.
4.10. In contrast to enumerating all the r-combinations of a set of n objects, we may
      only want to generate a random r-combination. Describe and present pseudocode
      of a procedure to generate a random r-combination of {1, 2, . . . , n}.
4.11. A problem related to the r-combinations of the set S = {1, 2, . . . , n} is that of
      generating the permutations of S. Algorithm 4.23 presents pseudocode to generate
      all the permutations of S in increasing lexicographic order. Find the worst-case
      runtime of this algorithm and prove its correctness.
4.12. Provide a description and pseudocode of an algorithm to generate a random per-
      mutation of {1, 2, . . . , n}.
4.13. Takaoka [182] presents a general method for combinatorial generation that runs in
      O(1) time. How can Takaoka’s method be applied to generating combinations and
      permutations?
4.14. The proof of Lemma 4.4 relies on Pascal’s formula, which states that for any
      positive integers n and r such that r ≤ n, the following identity holds:
                                                   
                                   n+1          n          n
                                           =          +      .
                                     r        r−1          r
     Prove Pascal’s formula.
4.15. Let m, n, r be nonnegative integers such that r ≤ n. Prove the Vandermonde
      convolution                     X   r         
                                m+n             m     n
                                        =                 .
                                  r        k=0
                                                k    r−k
     The latter equation, also known as Vandermonde’s identity, was already known
     as early as 1303 in China by Chu Shi-Chieh. Alexandre-Théophile Vandermonde
     independently discovered it and his result was published in 1772.
4.16. If m and n are nonnegative integers, prove that
                                           X   n       
                                m+n+1                 m+k
                                             =              .
                                     n          k=0
                                                       k
192                                                     Chapter 4. Tree Data Structures



 Algorithm 4.22: Generating all the r-combinations of {1, 2, . . . , n}.
  Input: Two nonnegative integers n and r.
  Output: A list L containing all the r-combinations of the set {1, 2, . . . , n} in
            increasing lexicographic order.
 1   L ← []
 2   ci ← i for i = 1, 2, . . . , r
 3   append(L, c1 c2 · · · cr )
 4   for i ← 2, 3, . . . , nr do
 5      m←r
 6      max ← n
 7      while cm = max do
 8          m←m−1
 9          max ← max − 1
10      cm ← cm + 1
11      cj ← cj−1 + 1 for j = m + 1, m + 2, . . . , r
12      append(L, c1 c2 · · · cr )
13   return L




 Algorithm 4.23: Generating all the permutations of {1, 2, . . . , n}.
  Input: A positive integer n.
  Output: A list L containing all the permutations of {1, 2, . . . , n} in increasing
            lexicographic order.
 1   L ← []
 2   ci ← i for i = 1, 2, . . . , n
 3   append(L, c1 c2 · · · cn )
 4   for i ← 2, 3, . . . , n! do
 5      m←n−1
 6      while cm > cm+1 do
 7          m←m−1
 8      k←n
 9      while cm > ck do
10          k ←k−1
11      swap the values of cm and ck
12      p←m+1
13      q←n
14      while p < q do
15          swap the values of cp and cq
16          p←p+1
17          q ←q−1
18      append(L, c1 c2 · · · cn )
19   return L
4.6. Problems                                                                              193

4.17. Let n be a positive integer. How many distinct binomial heaps having n vertices
      are there?

4.18. The algorithms described in section 4.3 are formally for minimum binomial heaps
      because the vertex at the top of the heap is always the minimum vertex. Describe
      analogous algorithms for maximum binomial heaps.

4.19. If H is a binomial heap, what is the total time required to extract all elements
      from H?

4.20. Frederickson [81] describes an O(k) time algorithm for finding the k-th smallest
      element in a binary heap. Provide a description and pseudocode of Frederickson’s
      algorithm and prove its correctness.

4.21. Fibonacci heaps [82] allow for amortized O(1) time with respect to finding the
      minimum element, inserting an element, and merging two Fibonacci heaps. Delet-
      ing the minimum element takes amortized time O(lg n), where n is the number
      of vertices in the heap. Describe and provide pseudocode of the above Fibonacci
      heap operations and prove the correctness of the procedures.

4.22. Takaoka [183] introduces another type of heap called a 2-3 heap. Deleting the
      minimum element takes amortized O(lg n) time with n being the number of vertices
      in the 2-3 heap. Inserting an element into the heap takes amortized O(1) time.
      Describe and provide pseudocode of the above 2-3 heap operations. Under which
      conditions would 2-3 heaps be more efficient than Fibonacci heaps?

4.23. In 2000, Chazelle [50] introduced the soft heap, which can perform common heap
      operations in amortized O(1) time. He then applied [49] the soft heap to realize a
      very efficient implementation of an algorithm for finding minimum spanning trees.
      In 2009, Kaplan and Zwick [118] provided a simple implementation and analysis of
      Chazelle’s soft heap. Describe soft heaps and provide pseudocode of common heap
      operations. Prove the correctness of the algorithms and provide runtime analyses.
      Describe how to use soft heap to realize an efficient implementation of an algorithm
      to produce minimum spanning trees.

4.24. Explain any differences between the binary heap-order property, the binomial heap-
      order property, and the binary search tree property. Can in-order traversal be used
      to list the vertices of a binary heap in sorted order? Explain why or why not.

4.25. Present pseudocode of an algorithm to find a vertex with maximum key in a binary
      search tree.

4.26. Compare and contrast algorithms for locating minimum and maximum elements
      in a list with their counterparts for a binary search tree.

4.27. Let T be a nonempty BST and suppose v ∈ V (T ) is not a minimum vertex of T .
      If h is the height of T , describe and present pseudocode of an algorithm to find the
      predecessor of v in worst-case time O(h).

4.28. Let L = [v0 , v1 , . . . , vn ] be the in-order listing of a BST T . Present an algorithm
      to find the successor of v ∈ V (T ) in constant time O(1). How can we find the
      predecessor of v in constant time as well?
194                                                          Chapter 4. Tree Data Structures

4.29. Modify Algorithm 4.15 to extract a minimum vertex of a binary search tree. Now
      do the same to extract a maximum vertex. How can Algorithm 4.15 be modified
      to extract a vertex from a binary search tree?

4.30. Let v be a vertex of a BST and suppose v has two children. If s and p are the
      successor and predecessor of v, respectively, show that s has no left-child and p has
      no right-child.

4.31. Let L = [e0 , e1 , . . . , en ] be a list of n + 1 elements from a totally ordered set X with
      total order ≤. How can binary search trees be used to sort L?

4.32. Describe and present pseudocode of a recursive algorithm for each of the following
      operations on a BST.

       (a) Find a vertex with a given key.
       (b) Locate a minimum vertex.
       (c) Locate a maximum vertex.
       (d) Insert a vertex.

4.33. Are the algorithms presented in section 4.4 able to handle a BST having duplicate
      keys? If not, modify the relevant algorithm(s) to account for the case where two
      vertices in a BST have the same key.

4.34. The notion of vertex level for binary trees can be extended to general rooted trees
      as follows. Let T be a rooted tree with n > 0 vertices and height h. Then level
      0 ≤ i ≤ h of T consists of all those vertices in T that have the same depth i. If
      each vertex at level i has i + m children for some fixed integer m > 0, what is the
      number of vertices at each level of T ?

4.35. Compare the search, insertion, and deletion times of AVL trees and random binary
      search trees. Provide empirical results of your comparative study.

4.36. Describe and present pseudocode of an algorithm to construct a Fibonacci tree of
      height n for some integer n ≥ 0. Analyze the worst-case runtime of your algorithm.

4.37. The upper bound in Theorem 4.7 can be improved as follows. From the proof of
      the theorem, we have the recurrence relation N (h) > N (h − 1) + N (h − 2).

       (a) If h ≤ 2, show that there exists some c > 0 such that N (h) ≥ ch .
       (b) Assume for induction that

                              N (h) > N (h − 1) + N (h − 2) ≥ ch−1 + ch−2

            for some h > 2. If c > 0, show that c2 − c − 1 = 0 is a solution to the
            recurrence relation ch−1 + ch−2 and that
                                                          √ !h
                                                       1+ 5
                                           N (h) >             .
                                                         2
4.6. Problems                                                                    195

      (c) Use the previous two parts to show that
                                               1
                                        h<        · lg n
                                             lg ϕ
                          √
          where ϕ = (1 + 5)/2 is the golden ratio and n counts the number of internal
          vertices of an AVL tree of height h.

4.38. The Fibonacci sequence Fn is defined as follows. We have initial values F0 = 0
      and F1 = 1. For n > 1, the n-th term in the sequence can be obtained via the
      recurrence relation Fn = Fn−1 + Fn−2 . Show that

                                        ϕn − (−1/ϕ)n
                                   Fn =      √                                  (4.5)
                                               5
     where ϕ is the golden ratio. The closed form solution (4.5) to the Fibonacci se-
     quence is known as Binet’s formula, named after Jacques Philippe Marie Binet,
     even through Abraham de Moivre knew about this formula long before Binet did.
Chapter 5

Distance and Connectivity




      — Spiked Math, http://spikedmath.com/382.html


5.1      Paths and distance
5.1.1      Distance and metrics
Consider an edge-weighted simple graph G = (V, E, i, h) without negative weight cycles.
Here E ⊆ V (2) , i : E −→ V (2) is an incidence function as in (1.2), which we regard
as the identity function, and h : E −→ V is an orientation function as in (1.3). Let
W : E −→ R be the weight function. (If G is not provided with a weight function on
the edges, we assume that each edge has unit weight.) If v1 , v2 ∈ V are two vertices
and P = (e1 , e2 , . . . , em ) is a v1 -v2 path (so v1 is incident to e1 and v2 is incident to em ),
define the weight of P to be the sum of the weights of the edges in P :
                                                  m
                                                  X
                                       W (P ) =         W (ei ).
                                                  i=1

The distance function d : V × V −→ R ∪ {∞} on G is defined by
                                          d(v1 , v2 ) = ∞
if v1 and v2 lie in distinct connected components of G, and by
                                      d(v1 , v2 ) = min W (P )                                 (5.1)
                                                    P


                                                196
5.1. Paths and distance                                                                      197

otherwise, where the minimum is taken over all paths P from v1 to v2 . By hypothesis, G
has no negative weight cycles so the minimum in (5.1) exists. It follows by definition of
the distance function that d(u, v) = ∞ if and only if there is no path between u and v.
    How we interpret the distance function d depends on the meaning of the weight
function W . In practical applications, vertices can represent physical locations such as
cities, sea ports, or landmarks. An edge weight could be interpreted as the physical
distance in kilometers between two cities, the monetary cost of shipping goods from one
sea port to another, or the time required to travel from one landmark to another. Then
d(u, v) could mean the shortest route in kilometers between two cities, the lowest cost
incurred in transporting goods from one sea port to another, or the least time required
to travel from one landmark to another.
    The distance function d is not in general a metric, i.e. the triangle inequality does
not in general hold for d. However, when the distance function is a metric then G is
called a metric graph. The theory of metric graphs, due to their close connection with
tropical curves, is an active area of research. For more information on metric graphs, see
Baker and Faber [11].

5.1.2     Radius and diameter
A new hospital is to be built in a large city. Construction has not yet started and a
number of urban planners are discussing the future location of the new hospital. What
is a possible location for the new hospital and how are we to determine this location?
This is an example of a class of problems known as facility location problems. Suppose
our objective in selecting a location for the hospital is to minimize the maximum response
time between the new hospital and the site of an emergency. To help with our decision
making, we could use the notion of the center of a graph.
    The center of a graph G = (V, E) is defined in terms of the eccentricity of the graph
under consideration. The eccentricity  : V −→ R is defined as follows. For any vertex
v, the eccentricity (v) is the greatest distance between v and any other vertex in G. In
symbols, the eccentricity is expressible as

                                      (v) = max d(u, v).
                                               u∈V

For example, in a tree T with root r the eccentricity of r is the height of T . In the graph
of Figure 5.1, the eccentricity of 2 is 5 and the shortest paths that yield (2) are

                                     P1 : 2, 3, 4, 14, 15, 16
                                     P2 : 2, 3, 4, 14, 15, 17.

The eccentricity of a vertex v can be thought of as an upper bound on the distance from
v to any other vertex in G. Furthermore, we have at least one vertex in G whose distance
from v is (v).

           v 1   2   3   4   5   6    7   8   9      10   11     12   13   14   15 16   17
        (v) 6   5   4   4   5   6    7   7   5       6   7       7   6    5    6 7     7
            Table 5.1: Eccentricity distribution for the graph in Figure 5.1.

    To motivate the notion of the radius of a graph, consider the distribution of eccentric-
ity among vertices of the graph G in Figure 5.1. The required eccentricity distribution
198                                                               Chapter 5. Distance and Connectivity




                                                     16



                               11        12                        15        17



                                    10               13            14



                               1             2       3             4         5



                                             6                     9



                               7                     8


         Figure 5.1: Determine the eccentricity, center, radius, and diameter.




                           7




                           6
                    (v)




                           5




                           4
                                2        4       6        8       10    12        14   16
                                                              v

Figure 5.2: Eccentricity distribution of the graph in Figure 5.1. The horizontal axis
represents the vertex name, while the vertical axis is the corresponding eccentricity.
5.1. Paths and distance                                                               199

is shown in Table 5.1. Among the eccentricities in the latter table, the minimum eccen-
tricity is (3) = (4) = 4. An intuitive interpretation is that both of the vertices 3 and
4 have the shortest distance to any other vertices in G. We can invoke an analogy with
plane geometry as follows. If a circle has radius r, then the distance from the center
of the circle to any point within the circle is at most r. The minimum eccentricity in
graph theory plays a role similar to the radius of a circle. If an object is strategically
positioned—e.g. a vertex with minimum eccentricity or the center of a circle—then its
greatest distance to any other object is guaranteed to be minimum. With the above
analogy in mind, we define the radius of a graph G = (V, E), written rad(G), to be the
minimum eccentricity among the eccentricity distribution of G. In symbols,

                                   rad(G) = min (v).
                                             v∈V


The center of G, written C(G), is the set of vertices with minimum eccentricity. Thus
the graph in Figure 5.1 has radius 4 and center {3, 4}. As should be clear from the latter
example, the radius is a number whereas the center is a set. Refer to the beginning of
the section where we mentioned the problem of selecting a location for a new hospital.
We could use a graph to represent the geography of the city wherein the hospital is to
be situated and select a location that is in the center of the graph.
    Consider now the maximum eccentricity of a graph. In (2.5) we defined the diameter
of a graph G = (V, E) by
                                 diam(G) = max d(u, v).
                                            u,v∈V
                                             u6=v

The diameter of G can also be defined as the maximum eccentricity of any vertex in G:

                                  diam(G) = max (v).
                                              v∈V


In case G is disconnected, define its diameter to be diam(G) = ∞. To compute diam(G),
use the Floyd-Roy-Warshall algorithm (see section 2.6) to compute the shortest distance
between each pair of vertices. The maximum of these distances is the diameter. The set
of vertices of G with maximum eccentricity is called the periphery of G, written per(G).
The graph in Figure 5.1 has diameter 7 and periphery {7, 8, 11, 12, 16, 17}.

Theorem 5.1. Eccentricities of adjacent vertices. Let G = (V, E) be an undi-
rected, connected graph having nonnegative edge weights. If uv ∈ E and W is a weight
function for G, then |(u) − (v)| ≤ W (uv).

Proof. By definition, we have d(u, x) ≤ (u) and d(v, x) ≤ (v) for all x ∈ V . Let w ∈ V
such that d(u, w) = (u). Apply the triangle inequality to obtain

                               d(u, w) ≤ d(u, v) + d(v, w)
                                  (u) ≤ W (uv) + d(v, w)
                                       ≤ W (uv) + (v)

from which we have (u) − (v) ≤ W (uv). Repeating the above argument with the role
of u and v interchanged yields (v) − (u) ≤ W (uv). Both (u) − (v) ≤ W (uv) and
(v) − (u) ≤ W (uv) together yields the inequality |(u) − (v)| ≤ W (uv) as required.
200                                                 Chapter 5. Distance and Connectivity

5.1.3     Center of trees
Given a tree T of order ≥ 3, we want to derive a bound on the number of vertices that
comprise the center of T . A graph in general can have one, two, or more number of
vertices for its center. Indeed, for any integer n > 0 we can construct a graph whose
center has cardinality n. The cases for n = 1, 2, 3 are illustrated in Figure 5.3. But can
we do the same for trees? That is, given any positive integer n does there exist a tree
whose center has n vertices? It turns out that the center of a tree cannot have more
than two vertices, a result first discovered [114] by Camille Jordan in 1869.




               (a) |C(G)| = 1           (b) |C(G)| = 2           (c) |C(G)| = 3

             Figure 5.3: Constructing graphs with arbitrarily large centers.

Theorem 5.2. Jordan [114]. If a tree T has order ≥ 3, then the center of T is either
a single vertex or two adjacent vertices.
Proof. As all eccentric vertices of T are leaves (see problem 5.7), removing all the leaves
of T decreases the eccentricities of the remaining vertices by one. The tree comprised of
the surviving vertices has the same center as T . Continue pruning leaves as described
above and note that the tree comprised of the surviving vertices has the same center as
the previous tree. After a finite number of leaf pruning stages, we eventually end up
with a tree made up of either one vertex or two adjacent vertices. The vertex set of this
final tree is the center of T .

5.1.4     Distance matrix
In sections 1.3.4 and 2.3, the distance matrix D of a graph G was defined to be D = [dij ],
where dij = d(vi , vj ) and the vertices of G are indexed by V = {v0 , v1 , . . . , vk }. The
matrix D is square where we set dij = 0 for entries along the main diagonal. If there is
no path from vi to vj , then we set dij = ∞. If G is undirected, then D is symmetric and
is equal to its transpose, i.e. DT = D. To compute the distance matrix D, apply the
Floyd-Roy-Warshall algorithm to determine the distances between all pairs of vertices.
Refer to Figure 5.4 for examples of distance matrices of directed and undirected graphs.
In the remainder of this section, “graph” refers to an undirected graph unless otherwise
specified.
    Instead of one distance matrix, we can define several distance matrices on G. Consider
an edge-weighted graph G = (V, E) without negative weight cycles and let

                                  d : V × V −→ R ∪ {∞}

be a distance function of G. Let ∂ = diam(G) be the diameter of G and index the
vertices of G in some arbitrary but fixed manner, say V = {v0 , v1 , . . . , vn }. The sequence
5.2. Vertex and edge connectivity                                                      201

                          3


                 5                  2                                             
                                                    0      1   2       ∞   1     2
                                                  ∞       0   1       ∞   ∞     ∞
                                                                                  
                                                  ∞       1   0       ∞   ∞     ∞
                                                                                  
                                                  ∞       2   1       0   2     1
                 4                  1                                             
                                                  ∞       ∞   ∞       ∞   0     1
                          0
                                                   ∞       ∞   ∞       ∞   1     0

                                            (a)

                              3


                     5                  2                                   
                                                       0   1   2   3   1   2
                                                      1   0   1   2   2   3
                                                                            
                                                      2   1   0   1   3   2
                                                                            
                                                      3   2   1   0   2   1
                     4                  1                                   
                                                      1   2   3   2   0   1
                              0
                                                       2   3   2   1   1   0

                                            (b)

           Figure 5.4: Distance matrices of directed and undirected graphs.

of distance matrices of G are a sequence of (n − 1) × (n − 1) matrices A1 , A2 , . . . , A∂
where                                 (
                                       1, if d(vi , vj ) = k,
                            (Ak )ij =
                                       0, otherwise.
In particular, A1 is the usual adjacency matrix A. To compute the sequence of distance
matrices of G, use the Floyd-Roy-Warshall algorithm to compute the distance between
each pair of vertices and assign the resulting distance to the corresponding matrix Ai .
    The distance matrix arises in several applications, including communication network
design [88] and network flow algorithms [61]. Thanks to Graham and Pollak [88], the
following unusual fact is known. If T is any tree then

                              det D(T ) = (−1)n−1 (n − 1)2n−2

where n denotes the order of T . In particular, the determinant of the distance matrix of
a tree is independent of the structure of the tree. This fact is proven in the paper [88],
but see also [68].


5.2     Vertex and edge connectivity
If G = (V, E) is a graph and U ⊆ V is a vertex set with the property that G − U
has more connected components than G, then we call U a vertex-cut. The term cut-
vertex or cut-point is used when the vertex-cut consists of exactly one vertex. For an
intuitive appreciation of vertex-cut, suppose G = (V, E) is a connected graph. Then
U ⊆ V is a vertex-cut if the vertex deletion subgraph G − U is disconnected. For
example, the cut-vertex of the graph in Figure 5.5 is the vertex 0. By κv (G) we mean
the vertex connectivity of a connected graph G, defined as the minimum number of
vertices whose removal would either disconnect G or reduce G to the trivial graph. The
202                                                 Chapter 5. Distance and Connectivity

vertex connectivity κv (G) is also written as κ(G). The vertex connectivity of the graph in
Figure 5.5 is κv (G) = 1 because we only need to remove vertex 0 in order to disconnect
the graph. The vertex connectivity of a connected graph G is thus the vertex-cut of
minimum cardinality. And G is said to be k-connected if κv (G) ≥ k. From the latter
definition, it immediately follows that if G has at least 3 vertices and is k-connected then
any vertex-cut of G has at least cardinality k. For instance, the graph in Figure 5.5 is
1-connected. In other words, G is k-connected if the graph remains connected even after
removing any k − 1 or fewer vertices from G.
                                               0




                                      1        2       3


                           Figure 5.5: A claw graph with 4 vertices.




                        Figure 5.6: The Petersen graph on 10 vertices.


Example 5.3. Here is a Sage example concerning κ(G) using the Petersen graph de-
picted in Figure 5.6. A linear programming Sage package, such as GLPK, must be
installed for the commands below to work.
sage :   G = graphs . PetersenGraph ()
sage :   len ( G . vertices ())
10
sage :   G . vertex_connectivity ()
3.0
sage :   G . delete_vertex (0)
sage :   len ( G . vertices ())
9
sage :   G . vertex_connectivity ()
2.0



   The notions of edge-cut and cut-edge are similarly defined. Let G = (V, E) be a
graph and D ⊆ E an edge set such that the edge deletion subgraph G − D has more
components than G. Then D is called an edge-cut. An edge-cut D is said to be minimal
5.2. Vertex and edge connectivity                                                        203

if no proper subset of D is an edge-cut. The term cut-edge or bridge is reserved for
the case where the set D is a singleton. Think of a cut-edge as an edge whose removal
from a connected graph would result in that graph being disconnected. Going back
to the case of the graph in Figure 5.5, each edge of the graph is a cut-edge. A graph
having no cut-edge is called bridgeless. An open question as of 2010 involving bridges
is the cycle double cover conjecture, due to Paul Seymour and G. Szekeres, which states
that every bridgeless graph admits a set of cycles that contains each edge exactly twice.
The edge connectivity of a connected graph G, written κe (G) and sometimes denoted
by λ(G), is the minimum number of edges whose removal would disconnect G. In other
words, κe (G) is the minimum cardinality among all edge-cuts of G. Furthermore, G is
said to be k-edge-connected if κe (G) ≥ k. A connected graph that is k-edge-connected
is guaranteed to be connected after removing ≤ k − 1 edges from it. When we have
removed k or more edges, then the graph would become disconnected. By convention, a
1-edge-connected graph is simply a connected graph. The graph in Figure 5.5 has edge
connectivity κe (G) = 1 and is 1-edge-connected.
Example 5.4. Here is a Sage example concerning λ(G) using the Petersen graph shown
in Figure 5.6. You must install an optional linear programming Sage package such as
GLPK for the commands below to work.
sage :   G = graphs . PetersenGraph ()
sage :   len ( G . vertices ())
10
sage :   E = G . edges (); len ( E )
15
sage :   G . edge_connectivity ()
3.0
sage :   G . delete_edge ( E [0])
sage :   len ( G . edges ())
14
sage :   G . edge_connectivity ()
2.0



     Vertex and edge connectivity are intimately related to the reliability and survivability
of computer networks. If a computer network G (which is a connected graph) is k-
connected, then it would remain connected despite the failure of at most k − 1 network
nodes. Similarly, G is k-edge-connected if the network remains connected after the failure
of at most k − 1 network links. In practical terms, a network with redundant nodes
and/or links can afford to endure the failure of a number of nodes and/or links and
still be connected, whereas a network with very few redundant nodes and/or links (e.g.
something close to a spanning tree) is more prone to be disconnected. A k-connected or
k-edge-connected network is more robust (i.e. can withstand) against node and/or link
failures than is a j-connected or j-edge-connected network, where j < k.
Proposition 5.5. If δ(G) is the minimum degree of an undirected connected graph G =
(V, E), then the edge connectivity of G satisfies λ(G) ≤ δ(G).
Proof. Choose a vertex v ∈ V whose degree is deg(v) = δ(G). Deleting the δ(G) edges
incident on v suffices to disconnect G as v is now an isolated vertex. It is possible that
G has an edge-cut whose cardinality is smaller than δ(G). Hence the result follows.
   Let G = (V, E) be a graph and suppose X1 and X2 comprise a partition of V . A
partition-cut of G, denoted hX1 , X2 i, is the set of all edges of G with one endpoint in
X1 and the other endpoint in X2 . If G is a bipartite graph with bipartition X1 and X2 ,
then hX1 , X2 i is a partition-cut of G. It follows that a partition-cut is also an edge-cut.
204                                                      Chapter 5. Distance and Connectivity

Proposition 5.6. An undirected connected graph G is k-edge-connected if and only if
any partition-cut of G has at least k edges.
Proof. Assume that G is k-edge-connected. Then each edge-cut has at least k edges. As
a partition-cut is an edge-cut, then any partition-cut of G has at least k edges.
   On the other hand, suppose each partition-cut has at least k edges. If D is a minimal
edge-cut of G and X1 and X2 are the vertex sets of the two components of G − D, then
D = hX1 , X2 i. To see this, note that D ⊆ hX1 , X2 i. If hX1 , X2 i − D 6= ∅ then choose
some e ∈ hX1 , X2 i such that e ∈/ D. The endpoints of e belong to the same component
of G − D, in contradiction of the definition of X1 and X2 . Thus any minimal edge-cut is
a partition-cut and conclude that any edge-cut has at least k edges.
Proposition 5.7. If G = (V, E) is an undirected connected graph with vertex connectivity
κ(G) and edge connectivity λ(G), then we have κ(G) ≤ λ(G).
Proof. Let S be an edge-cut of G with cardinality k = |S| = λ(G). Removing k suitably
chosen vertices of G suffice to delete the edges of S and hence disconnect G. It is also
possible to have a smaller vertex-cut elsewhere in G. Hence the inequality follows.
    Taking together Propositions 5.5 and 5.7, we have Whitney’s inequality.
Theorem 5.8. Whitney’s inequality [201]. Let G be an undirected connected graph
with vertex connectivity κ(G), edge connectivity λ(G), and minimum degree δ(G). Then
we have the following inequality:
                                       κ(G) ≤ λ(G) ≤ δ(G).
Proposition 5.9. Let G be an undirected connected graph that is k-connected for some
k ≥ 3. If e is an edge of G, then the edge-deletion subgraph G − e is (k − 1)-connected.
Proof. Let V = {v1 , v2 , . . . , vk−2 } be a set of k − 2 vertices in G − e. It suffice to show
the existence of a u-v walk in (G − e) − V for any distinct vertices u and v in (G − e) − V .
We need to consider two cases: (i) at least one of the endpoints of e is in V ; and (ii)
neither endpoints of e is in V .
    (i) Assume that V has at least one endpoint of e. As G − V is 2-connected, any
distinct pair of vertices u and v in G − V is connected by a u-v path that excludes e.
Hence the u-v path is also in (G − e) − V .
    (ii) Assume that neither endpoints of e is in V . If u and v are distinct vertices in
(G − e) − V , then either: (1) both u and v are endpoints of e; or (2) at least one of u
and v is an endpoint of e.
(1) Suppose u and v are both endpoints of e. As G is k-connected, then G has at
    least k + 1 vertices so that the vertex set of G − {v1 , v2 , . . . , vk−2 , u, v} is nonempty.
    Let w be a vertex of G − {v1 , v2 , . . . , vk−2 , u, v}. Then there is a u-w path in G −
    {v1 , v2 , . . . , vk−2 , v} and a w-v path in G − {v1 , v2 , . . . , vk−2 , u}. Neither the u-w nor
    the w-v paths contain e. The concatenation of these two paths is a u-v walk in
    (G − e) − V .
(2) Now suppose at least one of u and v, say u, is an endpoint of e. Let w be the other
    endpoint of e. As G is k-connected, then G − {v1 , v2 , . . . , vk−2 , w} is connected and
    we can find a u-v path P in G − {v1 , v2 , . . . , vk−2 , w}. Furthermore P is a u-v path
    in G − {v1 , v2 , . . . , vk−2 } that neither contain w nor e. Hence P is a u-v path in
    (G − e) − V .
5.2. Vertex and edge connectivity                                                        205

Conclude that G − e is (k − 1)-connected.

   Repeated application of Proposition 5.9 results in the following corollary.

Corollary 5.10. Let G be an undirected connected graph that is k-connected for some
k ≥ 3. If E is any set of m edges of G, for m ≤ k − 1, then the edge-deletion subgraph
G − E is (k − m)-connected.

    What does it mean for a communications network to be fault-tolerant? In 1932,
Hassler Whitney provided [201] a characterization of 2-connected graphs whereby he
showed that a graph G is 2-connected if and only if each pair of distinct vertices in G
has two different paths connecting those two vertices. A key to understanding Whitney’s
characterization of 2-connected graphs is the notion of internal vertex of a path. Given a
path P in a graph, a vertex along that path is said to be an internal vertex if it is neither
the initial nor the final vertex of P . In other words, a path P has an internal vertex if
and only if P has at least two edges. Building upon the notion of internal vertices, we
now discuss what it means for two paths to be internally disjoint. Let u and v be distinct
vertices in a graph G and suppose P1 and P2 are two paths from u to v. Then P1 and P2
are said to be internally disjoint if they do not share any common internal vertex. Two
u-v paths are internally disjoint in the sense that both u and v are the only vertices to
be found in common between those paths. The notion of internally disjoint paths can be
easily extended to a collection of u-v paths. Whitney’s characterization essentially says
that a graph is 2-connected if and only if any two u-v paths are internally disjoint.
    Consider the notion of internally disjoint paths within the context of communications
network. As a first requirement for fault-tolerant communications network, we want the
network to remain connected despite the failure of any network node. By Whitney’s
characterization, this is possible if the original communications network is 2-connected.
That is, we say that a communications network is fault-tolerant provided that any pair
of distinct nodes is connected by two internally disjoint paths. The failure of any node
should at least guarantee that any two distinct nodes are still connected.

Theorem 5.11. Whitney’s characterization of 2-connected graphs [201]. Let
G be an undirected connected graph having at least 3 vertices. Then G is 2-connected if
and only if any two distinct vertices in G are connected by two internally disjoint paths.

Proof. (⇐=) For the case of necessity, argue by contraposition. That is, suppose G is not
2-connected. Let v be a cut-vertex of G, from which it follows that G−v is disconnected.
We can find two vertices w and x such that there is no w-x path in G − v. Therefore v
is an internal vertex of any w-x path in G.
    (=⇒) For the case of sufficiency, let G be 2-connected and let u and v be any two
distinct vertices in G. Argue by induction on d(u, v) that G has at least two internally
disjoint u-v paths. For the base case, suppose u and v are connected by an edge e so that
d(u, v) = 1. Adapt the proof of Proposition 5.9 to see that G − e is connected. Hence we
can find a u-v path P in G − e such that P and e are two internally disjoint u-v paths
in G.
    Assume for induction that G has two internally disjoint u-v paths where d(u, v) < k
for some k ≥ 2. Let w and x be two distinct vertices in G such that d(w, x) = k and
hence there is a w-x path in G of length k, i.e. we have a w-x path

                            W : w = w1 , w2 , . . . , wk−1 , wk = x.
206                                                       Chapter 5. Distance and Connectivity

Note that d(w, wk−1 ) < k and apply the induction hypothesis to see that we have two
internally disjoint w-wk−1 paths in G; call these paths P and Q. As G is 2-connected,
we have a w-x path R in G − wk−1 and hence R is also a w-x path in G. Let z be the
vertex on R that immediately precedes x and assume without loss of generality that z
is on P . We claim that G has two internally disjoint w-x paths. One of these paths is
the concatenation of the subpath of P from w to z with the subpath of R from z to x.
If x is not on Q, then construct a second w-x path, internally disjoint from the first one,
as follows: concatenate the path Q with the edge wk−1 w. In case x is on Q, take the
subpath of Q from w to x as the required second path.

    From Theorem 5.11, an undirected connected graph G is 2-connected if and only if any
two distinct vertices of G are connected by two internally disjoint paths. In particular,
let u and v be any two distinct vertices of G and let P and Q be two internally disjoint
u-v paths as guaranteed by Theorem 5.11. Starting from u, travel along the path P
to arrive at v. Then start from v and travel along the path Q to arrive at u. The
concatenation of the internally disjoint paths P and Q is hence a cycle passing through
u and v. We have proved the following corollary to Theorem 5.11.

Corollary 5.12. Let G be an undirected connected graph having at least 3 vertices. Then
G is 2-connected if and only if any two distinct vertices of G lie on a common cycle.

   The following theorem provides further characterizations of 2-connected graphs, in
addition to Whitney’s characterization.

Theorem 5.13. Characterizations of 2-connected graphs. Let G = (V, E) be an
undirected connected graph having at least 3 vertices. Then the following are equivalent.

  1. G is 2-connected.

  2. If u, v ∈ V are distinct vertices of G, then u and v lie on a common cycle.

  3. If v ∈ V and e ∈ E, then v and e lie on a common cycle.

  4. If e1 , e2 ∈ E are distinct edges of G, then e1 and e2 lie on a common cycle.

  5. If u, v ∈ V are distinct vertices and e ∈ E, then they lie on a common path.

  6. If u, v, w ∈ V are distinct vertices, then they lie on a common path.

  7. If u, v, w ∈ V are distinct vertices, then there is a path containing any two of these
     vertices but excluding the third.


5.3     Expander graphs and Ramanujan graphs
In combinatorics, an expander graph is a sparse graph that has strong connectivity
properties. Expander graphs have many applications - for example, to cryptography,
and the theory of error-correcting codes.
   The edge expansion h(G) of a graph G = (V, E) is defined as

                                                          |∂(S)|
                                 h(G) =     min                  ,
                                          0<|S|≤
                                                   |V |
                                                    2
                                                            |S|
5.3. Expander graphs and Ramanujan graphs                                                 207

where the minimum is over all nonempty sets S of at most |V |/2 vertices and ∂(S) is
the edge boundary of S, i.e., the set of edges with exactly one endpoint in S.
   The vertex expansion (or vertex isoperimetric number) hout (G) of a graph G is defined
as

                                                         |∂out (S)|
                               hout (G) =     min                   ,
                                                  |V |
                                            0<|S|≤ 2        |S|

where ∂out (S) is the outer boundary of S, i.e., the set of vertices in V (G) \ S with at
least one neighbor in S.



sage: G = PSL(2, 5)
sage: X = G.cayley_graph()
sage: V = X.vertices()
sage: S = [V[1], V[3], V[7], V[10], V[13], V[ 14], V[23]]
sage: delS = X.edge_boundary(S)
sage: edge_expan_XS = len(delS)/len(S); RR(edge_expan_XS)
1.00000000000000
sage: S = [V[1], V[3], V[7], V[12], V[24], V[37]]
sage: delS = X.edge_boundary(S)
sage: edge_expan_XS = len(delS)/len(S); RR(edge_expan_XS)
1.50000000000000
sage: S = [V[2], V[8], V[13], V[27], V[32], V[44], V[57]]
sage: delS = X.edge_boundary(S)
sage: edge_expan_XS = len(delS)/len(S); RR(edge_expan_XS)
1.42857142857143
sage: S = [V[0], V[6], V[11], V[16], V[21], V[29], V[35], V[45],V[53]]
sage: delS = X.edge_boundary(S)
sage: edge_expan_XS = len(delS)/len(S); RR(edge_expan_XS)
1.77777777777778
sage: n = len(X.vertices())
sage: J = range(n)
sage: J30 = Subsets(J, int(n/2))
sage: K = J30.random_element()
sage: K
{0, 2, 3, 4, 5, 6, 8, 9, 11, 13, 16, 18, 19, 21, 24, 25, 26, 28, 29,
 30, 36, 37, 38, 40, 42, 45, 46, 49, 53, 57}
sage: S = [V[i] for i in K]                   # 30 vertices, randomly selected
sage: delS = [v for v in V if min([X.distance(a,v) for a in S]) == 1]
sage: RR(len(delS))/RR(len(S))
0.800000000000000



   A family G = {G1 , G2 , . . .} of d-regular graphs is an edge expander family if there is a
constant c > 0 such that h(G) ≥ c for each G ∈ G. A vertex expander family is defined
similarly, using hout (G) instead.
208                                                          Chapter 5. Distance and Connectivity

5.3.1       Ramanujan graphs
Let G be a connected d-regular graph with n vertices, and let λ0 ≥ λ1 ≥ . . . ≥ λn−1
be the eigenvalues of the adjacency matrix of G. Because G is connected and d-regular,
its eigenvalues satisfy d = λ0 > λ1 ≥ . . . ≥ λn−1 ≥ −d. Whenever there exists λi with
|λi | < d, define

                                         λ(G) = max |λi |.
                                                   |λi |<d
                                                                              √
A d-regular graph G is a Ramanujan graph if λ(G) is defined and λ(G) ≤ 2 d − 1.
    Let q be a prime power such that q ≡ 1 (mod 4). Note that this implies that the
finite field GF (q) contains a square root of −1.
    Now let V = GF (q) and E = {{a, b} ∈ GF (q) × GF (q) | (a − b) ∈ GF (q)× )2 }. This
set is well defined since a − b = (−1) · (b − a), and since −1 is a square, it follows that
a−b is a square if and only if b − a is a square.
    By definition G = (V, E) is the Paley graph of order q.
    The following facts are known about Paley graphs.
                                                                                        √
                                                 q−1                                −1± q
      ˆ The eigenvalues of Paley graphs are       2
                                                        (with multiplicity 1) and     2
                                                                                            (both with
        multiplicity q−1
                      2
                         ).

      ˆ It is known that a Paley graph is a Ramanujan graph.

      ˆ It is known that the family of Paley graphs of prime order is a vertex expander
        graph family.

      ˆ If q = pr , where p is prime, then Aut(G) has order q(q − 1)/2.

      Here is Sage code for the Paley graph1 :


def Paley(q):
K.<a> = GF(q)
return Graph([K, lambda i,j: i != j and (i-j).is_square()])


      Below is an example.


sage: X = Paley(13)
sage: X.vertices()
[0, 1, 2, 3, 4, 5, 6, 7, 8, 9, 10, 11, 12]
sage: X.is_vertex_transitive()
True
sage: X.degree_sequence()
[6, 6, 6, 6, 6, 6, 6, 6, 6, 6, 6, 6, 6]
sage: X.spectrum()
[6, 1.302775637731995?, 1.302775637731995?, 1.302775637731995?,
1.302775637731995?, 1.302775637731995?, 1.302775637731995?,
  1
      Thanks to Chris Godsil; included by permission.
5.4. Menger’s theorem                                                                  209

-2.302775637731995?, -2.302775637731995?, -2.302775637731995?,
-2.302775637731995?, -2.302775637731995?, -2.302775637731995?]
sage: G = X.automorphism_group()
sage: G.cardinality()
78
sage: 13*12/2
78



5.4     Menger’s theorem
Menger’s theorem has a number of different versions: an undirected, vertex-connectivity
version; a directed, vertex-connectivity version; an undirected, edge-connectivity version;
and a directed, edge-connectivity version. In this section, we will prove the undirected,
vertex-connectivity version. But first, let’s consider a few technical results that will be
of use for the purpose of this section.
    Let u and v be distinct vertices in a connected graph G = (V, E) and let S ⊆ V .
Then S is said to be u-v separating if u and v lie in different components of the vertex
deletion subgraph G − S. The vertices u and v are positioned such that after removing
vertices in S from G and the corresponding edges, u and v are no longer connected nor
strongly connected to each other. It is clear by definition that u, v ∈  / S. We also say
that S separates u and v, or S is a vertex separating set. Similarly an edge set T ⊆ E is
u-v separating (or separates u and v) if u and v lie in different components of the edge
deletion subgraph G − T . But unlike the case of vertex separating sets, it is possible for
u and v to be endpoints of edges in T because the removal of edges does not result in
deleting the corresponding endpoints. The set T is also called an edge separating set. In
other words, S is a vertex cut and T is an edge cut. When it is clear from context, we
simply refer to a separating set. See Figure 5.7 for illustrations of separating sets.




               (a) Original graph.                       (b) Vertex separated.




               (c) Original graph.                        (d) Edge separated.

Figure 5.7: Vertex and edge separating sets. Blue-colored vertices are those we want
to separate. The red-colored vertices form a vertex separating set or vertex cut; the
red-colored edges constitute an edge separating set or edge cut.
210                                                Chapter 5. Distance and Connectivity

Proposition 5.14. Consider two distinct, non-adjacent vertices u, v in a connected
graph G. If Puv is a collection of internally disjoint u-v paths in G and Suv is a u-
v separating set of vertices in G, then

                                      |Puv | ≤ |Suv |.                                (5.2)

Proof. Each u-v path in Puv must include at least one vertex from Suv because Suv is
a vertex cut of G. Any two distinct paths in Puv cannot contain the same vertex from
Suv . Thus the number of internally disjoint u-v paths is at most |Suv |.
    The bound (5.2) holds for any u-v separating set Suv of vertices in G. In particular,
we can choose Suv to be of minimum cardinality among all u-v separating sets of vertices
in G. Thus we have the following corollary. Menger’s Theorem 5.18 provides a much
stronger statement of Corollary 5.15, saying in effect that the two quantities max(|Puv |)
and min(|Suv |) are equal.
Corollary 5.15. Consider any two distinct, non-adjacent vertices u, v in a connected
graph G. Let max(|Puv |) be the maximum number of internally disjoint u-v paths in G
and denote by min(|Suv |) the minimum cardinality of a u-v separating set of vertices in
G. Then we have max(|Puv |) ≤ min(|Suv |).
Corollary 5.16. Consider any two distinct, non-adjacent vertices u, v in a connected
graph G. Let Puv be a collection of internally disjoint u-v paths in G and let Suv be a u-v
separating set of vertices in G. If |Puv | = |Suv |, then Puv has maximum cardinality among
all collections of internally disjoint u-v paths in G and Suv has minimum cardinality
among all u-v separating sets of vertices in G.
Proof. Argue by contradiction. Let Quv be another collection of internally disjoint u-v
paths in G such that |Quv | ≥ |Puv |. Then |Puv | ≤ |Quv | ≤ |Suv | by Proposition 5.14.
We cannot have |Quv | > |Puv |, which would be contradictory to our hypothesis that
Puv = |Suv |. Thus |Quv | = |Puv |. Let Tuv be another u-v separating set of vertices in
G such that |Tuv | ≤ |Suv |. Then we have |Puv | ≤ |Tuv | ≤ |Suv | by Proposition 5.14.
We cannot have |Tuv | < |Suv | because we would then end up with |Puv | ≤ |Tuv | and
Puv = |Suv |, a contradiction. Therefore |Tuv | = |Suv |.
Lemma 5.17. Consider two distinct, non-adjacent vertices u, v in a connected graph G
and let k be the minimum number of vertices required to separate u and v. If G has a
u-v path of length 2, then G has k internally disjoint u-v paths.
Proof. Argue by induction on k. For the base case, assume k = 1. Hence G has a cut
vertex x such that u and v are disconnected in G − x. Any u-v path must contain x. In
particular, there can be only one internally disjoint u-v path.
    Assume for induction that k ≥ 2. Let P : u, x, v be a path in G having length 2 and
suppose S is a smallest u-v separating set for G − x. Then S ∪ {x} is a u-v separating
set for G. By the minimality of k, we have |S| ≥ k − 1. By the induction hypothesis,
we have at least k − 1 internally disjoint u-v paths in G − x. As P is internally disjoint
from any of the latter paths, conclude that G has k internally disjoint u-v paths.
Theorem 5.18. Menger’s theorem. Let G be an undirected connected graph and let
u and v be distinct, non-adjacent vertices of G. Then the maximum number of internally
disjoint u-v paths in G equals the minimum number of vertices needed to separate u and
v.
5.4. Menger’s theorem                                                                 211

Proof. Suppose that the maximum number of independent u-v paths in G is attained by
u-v paths P1 , . . . , Pk . To obtain a separating set W ⊂ V , we must at least remove one
point in each path Pi . This implies the minimum number of vertices needed to separate
u and v is at least k. Therefore, we have an upper bound:


  #{indep. u − v paths} ≤ #{min. number of vertices needed to separate u and v}.
    We show that equality holds. Let n denote the number of edges of G. The proof is by
induction on n. By hypothesis, n ≥ 2. If n = 2 the statement holds by inspection, since
in that case G is a line graph with 3 vertices V = {u, v, w} and 2 edges, E = {uw.wv}.
In that situation, there is only 1 u-v path (namely, uwv) and only one vertex separating
u and v (namely, w).
    Suppose now n > 3 and assume the statement holds for each graph with < n edges.
Let

                            k = #{independent u − v paths}
and let
               ` = #{min. number of vertices needed to separate u and v},
so that k ≤ `. Let e ∈ E and let G/e be the contraction graph having edges E − {e}
and vertices the same as those of G, except that the endpoints of e have been identified.
    Suppose that k < ` and G does not have ` independent u-v paths. The contraction
graph G/e does not have ` independent u-v paths either (where now, if e contains u or
v then we must appropriately redefine u or v, if needed). However, by the induction
hypothesis G/e does have the property that the maximum number of internally disjoint
u-v paths equals the minimum number of vertices needed to separate u and v. Therefore,

                        #{independent u − v paths in G/e}
             < #{min. number of vertices needed to separate u and v in G}.
By induction,

                        #{independent u − v paths in G/e}
            = #{min. number of vertices needed to separate u and v in G/e}.
   Now, we claim we can pick e such that e does contain u or v and in such a way that

            #{minimum number of vertices needed to separate u and v in G}
          ≥ #{minimum number of vertices needed to separate u and v in G/e}.
Proof: Indeed, since n > 3 any separating set realizing the minimum number of vertices
needed to separate u and v in G cannot contain both a vertex in G adjacent to u and a
vertex in G adjacent to v. Therefore, we may pick e accordingly. (Q.E.D. claim)
   The result follows from the claim and the above inequalities.
   The following statement is the undirected, edge-connectivity version of Menger’s the-
orem.
Theorem 5.19. Menger’s theorem (edge-connectivity form). Let G be an undi-
rected graph, and let s and t be vertices in G. Then, the maximum number of edge-
disjoint (s, t)-paths in G equals the minimum number of edges from E(G) whose deletion
separates s and t.
212                                                         Chapter 5. Distance and Connectivity

   This is proven the same way as the previous version but using the generalized min-
cut/max-flow theorem (see Remark 9.16 above).

Theorem 5.20. Dirac’s theorem. Let G = (V, E) be an undirected k-connected graph
with |V | ≥ k + 1 vertices for k ≥ 3. If S ⊆ V is any set of k vertices, then G has a cycle
containing the vertices of S.

Proof.


5.5        Whitney’s Theorem
Theorem 5.21. Whitney’s theorem (vertex version). Suppose G = (V, E) is a
graph with |V | ≥ k + 1. The following are equivalent:

      ˆ G is k-vertex-connected,

      ˆ Any pair of distinct vertices v, w ∈ V are connected by at least k independent
        paths.

Solution. ...


Theorem 5.22. Whitney’s theorem (edge version). Suppose G = (V, E) is a
graph with |V | ≥ k + 1. The following are equivalent:

      ˆ the graph G is k-edge-connected,

      ˆ any pair of vertices are connected by at least k edge-disjoint paths.

Solution. ...


Theorem 5.23. Whitney’s Theorem. Let G = (V, E) be a connected graph such that
|V | ≥ 3. Then G is 2-connected if and only if any pair u, v ∈ V has two internally
disjoint paths between them.


5.6        Centrality of a vertex
        Louis, I think this is the beginning of a beautiful friendship.
        — Rick from the 1942 film Casablanca

      ˆ degree centrality

      ˆ betweenness centrality; for efficient algorithms, see [36, 206]

      ˆ closeness centrality

      ˆ eigenvector centrality
5.7. Network reliability                                                             213

 Algorithm 5.1: Friendship graph.
  Input: A positive integer n.
  Output: The friendship graph Fn .
 1   if n = 1 then
 2       return C3
 3   G ← null graph
 4   N ← 2n + 1
 5   for i ← 0, 1, . . . , N − 3 do
 6       if i is odd then
 7           add edges (i, i + 1) and (i, N − 1) to G
 8       else
 9           add edge (i, N − 1) to G
10   add edges (N − 2, 0) and (N − 2, N − 1) to G
11   return E


5.7       Network reliability
     ˆ Whitney synthesis

     ˆ Tutte’s synthesis of 3-connected graphs

     ˆ Harary graphs

     ˆ constructing an optimal k-connected n-vertex graph



5.8       The spectrum of a graph
We use the notes “The spectrum of a graph” by Andries Brouwer (http://www.win.tue.
nl/∼aeb/srgbk/srg1only.html) as a basic reference.


     ˆ Spectrum of a graph

     ˆ Laplacian spectrum of a graph

     ˆ Applications


   Let G = (V, E) be a (possibly directed) finite graph on n = |V | vertices. The
adjacency matrix of G is the n × n matrix A = A(G) = (av,w )v,w∈V with rows and
columns indexed by V and entries av,w denoting the number of edges from v to w.
   The spectrum of G is by definition the spectrum of A, that is, its multi-set of eigen-
values together with their multiplicities. The characteristic polynomial of G is that of
A, that is, the polynomial pA defined by pA (x) = det(A − xI).
214                                                  Chapter 5. Distance and Connectivity

5.8.1       The Laplacian spectrum
Recall from section 1.3.3 that, given a simple graph G with n vertices V = {v1 , . . . , vn },
its (vertex) Laplacian matrix L = (`i,j )n×n is defined as:
                          
                          
                          deg(vi ) if i = j
                    `i,j = −1         if i 6= j and vi is adjacent to vj
                          
                          
                            0         otherwise.
The Laplacian spectrum is by definition the spectrum of the vertex Laplacian of G, that
is, its multi-set of eigenvalues together with their multiplicities.
     For a graph G and its Laplacian matrix L with eigenvalues λn ≤ λn−1 ≤ · · · ≤ λ1 :
      ˆ For all i, λi ≥ 0 and λn = 0.
      ˆ The number of times 0 appears as an eigenvalue in the Laplacian is the number of
        connected components in the graph.
      ˆ λn = 0 because every Laplacian matrix has an eigenvector of [1, 1, . . . , 1],
      ˆ If we define a signed edge adjacency matrix M with element me,v for edge e ∈ E
        (connecting vertex vi and vj , with i < j) and vertex v ∈ V given by
                                            
                                             1, if v = vi
                                    Mev =      −1, if v = vj
                                            
                                                 0, otherwise
        then the Laplacian matrix L satisifies L = M T M , where M T is the matrix trans-
        pose of M .
   These are left as an exercise.

5.8.2       Applications of the (ordinary) spectrum
The following is a basic fact about the largest eigenvalue of a graph.
Theorem 5.24. Each graph G has a real eigenvalue λ1 > 0 with nonnegative real cor-
responding eigenvector, and such that for each eigenvalue λ we have |λ| ≤ λ1 .
    We shall mostly be interested in the case where G is undirected, without loops or
multiple edges. This means that A is symmetric, has zero diagonal (av,v = 0), and is a
0-1 matrix ( av,w ∈ {0, 1}).
    A number λ is eigenvalue of A if and only if it is a zero of the polynomial pA .
Since A is real and symmetric, all its eigenvalues are real and A is diagonalizable. In
particular, for each eigenvalue, its algebraic multiplicity (that is, its multiplicity as a
root of the characteristic polynomial) coincides with its geometric multiplicity (that is,
the dimension of the corresponding eigenspace).
Theorem 5.25. Let G be a connected graph of diameter d. Then G has at least d + 1
distinct eigenvalues.
Proof. Let the distinct eigenvalues of the adjacency matrix A of G be λ1 , ..., λr . Then
(A − λ1 I)...(A − λr I) = 0, so that Ar is a linear combination of I, A, ..., Ar−1 . But if
the distance from the vertex v ∈ V to the vertex w ∈ V is r, then (Ai )v,w = 0 for
0 ≤ i ≤ r − 1 and (Ar )v,w > 0, contradiction. Hence d > r.
5.9. Problems                                                                                        215

5.9      Problems
      When you don’t share your problems, you resent hearing the problems of other people.
      — Chuck Palahniuk, Invisible Monsters, 1999

5.1. Let G = (V, E) be an undirected, unweighted simple graph. Show that V and the
     distance function on G form a metric space if and only if G is connected.

5.2. Let u and v be two distinct vertices in the same connected component of G. If P
     is a u-v path such that d(u, v) = (u), we say that P is an eccentricity path for u.

       (a) If r is the root of a tree, show that the end-vertex of an eccentricity path for
           r is a leaf.
      (b) If v is a vertex of a tree distinct from the root r, show that any eccentricity
          path for v must contain r or provide an example to the contrary.
       (c) A vertex w is said to be an eccentric vertex of v if d(v, w) = (v). Intuitively,
           an eccentric vertex of v can be considered as being as far away from v as
           possible. If w is an eccentric vertex of v and vice versa, then v and w are said
           to be mutually eccentric. See Buckley and Lau [44] for detailed discussions of
           mutual eccentricity. If w is an eccentric vertex of v, explain why v is also an
           eccentric vertex of w or show that this does not in general hold.

5.3. If u and v are vertices of a connected graph G such that d(u, v) = diam(G), show
     that u and v are mutually eccentric.

5.4. If uv is an edge of a tree T and w is a vertex of T distinct from u and v, show that
     |d(u, w) − d(w, v)| = W (uv) with W (uv) being the weight of uv.

5.5. If u and v are vertices of a tree T such that d(u, v) = diam(T ), show that u and v
     are leaves.

5.6. Let v1 , v2 , . . . , vk be the leaves of a tree T . Show that per(T ) = {v1 , v2 , . . . , vk }.

5.7. Show that all the eccentric vertices of a tree are leaves.

5.8. If G is a connected graph, show that rad(G) ≤ diam(G) ≤ 2 · rad(G).

5.9. Let T be a tree of order ≥ 3. If the center of T has one vertex, show that diam(T ) =
     2 · rad(T ). If the center of T has two vertices, show that diam(T ) = 2 · rad(T ) − 1.

5.10. Let G = (V, E) be a simple undirected, connected graph. Define the distance of a
      vertex v ∈ V by                       X
                                    d(v) =      d(v, x)
                                                     x∈V

      and define the distance of the graph G itself by
                                                      1X
                                            d(G) =          d(v).
                                                      2 v∈V

      For any vertex v ∈ V , show that d(G) ≤ d(v) + d(G − v) with G − v being a vertex
      deletion subgraph of G. This result appeared in Entringer et al. [70, p.284].
216                                                    Chapter 5. Distance and Connectivity

5.11. Determine the sequence of distance matrices for the graphs in Figure 5.4.

5.12. If G = (V, E) is an undirected connected graph and v ∈ V , prove the following
      vertex connectivity inequality:

                                      κ(G) − 1 ≤ κ(G − v) ≤ κ(G).

5.13. If G = (V, E) is an undirected connected graph and e ∈ E, prove the following
      edge connectivity inequality:

                                      λ(G) − 1 ≤ λ(G − e) ≤ λ(G).

      code   name                      code   name                   code   name
         0   Alicante Bouschet            1   Aramon                    2   Bequignol
         3   Cabernet Franc               4   Cabernet Sauvignon        5   Carignan
         6   Chardonnay                   7   Chenin Blanc              8   Colombard
         9   Donzillinho                 10   Ehrenfelser              11   Fer Servadou
        12   Flora                       13   Gamay                    14   Gelber Ortlieber
        15   Grüner Veltliner           16   Kemer                    17   Merlot
        18   Meslier-Saint-Francois      19   Müller-Thurgau          20   Muscat Blanc
        21   Muscat Hamburg              22   Muscat of Alexandria     23   Optima
        24   Ortega                      25   Osteiner                 26   Péagudo
        27   Perle                       28   Perle de Csaba           29   Perlriesling
        30   Petit Manseng               31   Petite Bouschet          32   Pinot Noir
        33   Reichensteiner              34   Riesling                 35   Rotberger
        36   Roter Veltliner             37   Rotgipfler               38   Royalty
        39   Ruby Cabernet               40   Sauvignon Blanc          41   Schönburger
        42   Semillon                    43   Siegerrebe               44   Sylvaner
        45   Taminga                     46   Teinturier du Cher       47   Tinta Madeira
        48   Traminer                    49   Trincadeiro              50   Trollinger
        51   Trousseau                   52   Verdelho                 53   Wittberger

        Table 5.2: Numeric code and actual name of common grape cultivars.

5.14. Figure 5.8 depicts how common grape cultivars are related to one another; the
      graph is adapted from Myles et al. [153]. The numeric code of each vertex can
      be interpreted according to Table 5.2. Compute various distance and connectivity
      measures for the graph in Figure 5.8.

5.15. Prove the characterizations of 2-connected graphs as stated in Theorem 5.13.

5.16. Let G = (V, E) be an undirected connected graph of order n and suppose that
      deg(v) ≥ (n + k − 2)/2 for all v ∈ V and some fixed positive integer k. Show that
      G is k-connected.

5.17. A vertex (or edge) separating set S of a connected graph G is minimum if S has
      the smallest cardinality among all vertex (respectively edge) separating sets in G.
      Similarly S is said to be maximum if it has the greatest cardinality among all
      vertex (respectively edge) separating sets in G. For the graph in Figure 5.7(a),
      determine the following:

      (a) A minimum vertex separating set.
      (b) A minimum edge separating set.
5.9. Problems                                                                                                                                              217



                                              17




    5                                     3




                 39



                                      4                                38
                                                         42
                                                                                  49

                                           40                                                        36

                                11
                                                                                                           26
                      18
                                                                  51

                                                        12                       37
                  8             7
                                                                                      47                   30
                                               2
                                                                                                                24
                                                              48                       43
                                                                                                                                           33
            41                            45


                                                                                           27                    19
             14                      32                      15

                                                   52              9        44
                       13
            20
                                                                                                          23                    10
                            6


                                 46                                                             25
                                                                                                                                                     29          28

                                                                                                                      34


             31
                                                                                                                           53
0
                                                                                                                                      16


                                                                                                                 35
        1



                                                                                                                                     50




                                                                                                                                                21




                                                                                                                                                      22



                            Figure 5.8: Network of common grape cultivars.
218                                          Chapter 5. Distance and Connectivity

      (c) A maximum vertex separating set.
      (d) A maximum edge separating set.
      (e) The number of minimum vertex separating sets.
      (f) The number of minimum edge separating sets.
Chapter 6

Optimal Graph Traversals

6.1     Eulerian graphs
   ˆ Motivation: tracing out all the edges of a graph without lifting your pencil.

   ˆ multigraphs and simple graphs

   ˆ Eulerian tours

   ˆ Eulerian trails


6.2     Hamiltonian graphs




      — Randall Munroe, xkcd, http://xkcd.com/230/

   ˆ Motivation: the eager tourist problem: visiting all major sites of a city in the least
     time/distance.

   ˆ Hamiltonian paths (or cycles)

   ˆ Hamiltonian graphs

Theorem 6.1. Ore 1960. Let G be a simple graph with n ≥ 3 vertices. If deg(u) +
deg(v) ≥ n for each pair of non-adjacent vertices u, v ∈ V (G), then G is Hamiltonian.

Corollary 6.2. Dirac 1952. Let G be a simple graph with n ≥ 3 vertices. If deg(v) ≥
n/2 for all v ∈ V (G), then G is Hamiltonian.

                                           219
220                                                Chapter 6. Optimal Graph Traversals

6.3        The Chinese Postman Problem
See section 6.2 of Gross and Yellen [90].

      ˆ de Bruijn sequences

      ˆ de Bruijn digraphs

      ˆ constructing a (2, n)-de Bruijn sequence

      ˆ postman tours and optimal postman tours

      ˆ constructing an optimal postman tour


6.4        The Traveling Salesman Problem




        — Randall Munroe, xkcd, http://xkcd.com/399/

See section 6.4 of Gross and Yellen [90], and section 35.2 of Cormen et al. [57].

      ˆ Gray codes and n-dimensional hypercubes

      ˆ the Traveling Salesman Problem (TSP)

      ˆ nearest neighbor heuristic for TSP

      ˆ some other heuristics for solving TSP
Chapter 7

Planar Graphs

A planar graph is a graph that can be drawn on a sheet of paper without any overlapping
between its edges.
    It is a property of many “natural” graphs drawn on the earth’s surface, like for
instance the graph of roads, or the graph of internet fibers. It is also a necessary property
of graphs we want to build, like VLSI layouts.
    Of course, the property of being planar does not prevent one from finding a drawing
with many overlapping between edges, as this property only asserts that there exists a
drawing (or embedding) of the graph avoiding it. Planarity can be characterized in many
different ways, one of the most satiating being Kuratowski’s theorem.
    See chapter 9 of Gross and Yellen [90].


7.1      Planarity and Euler’s Formula
   ˆ planarity, non-planarity, planar and plane graphs

   ˆ crossing numbers


Theorem 7.1. The complete bipartite graph K3,n is non-planar for n ≥ 3.

Theorem 7.2. Euler’s Formula. Let G be a connected plane graph having n vertices,
e edges and f faces. Then n − e + f = 2.


7.2      Kuratowski’s Theorem
   ˆ Kuratowski graphs

   The objective of this section is to prove the following theorem.

Theorem 7.3. [128] Kuratowski’s Theorem. A graph is planar if and only if it
contains no subgraph homeomorphic to a subdivision of K5 or K3,3 .

    Graph Minors : The reader may find interesting to notice that the previous re-
sult, first proved in 1930 as purely topological (there is no mention of graphs in Kura-
towski’s original paper), can be seen as a very special case of the Graph Minor Theorem
(Thm1.31).

                                            221
222                                        Chapter 7. Planar Graphs




                  (a) Errera graph.




              (b) Planar representation.

      Figure 7.1: The Errera graph is planar.
7.3. Planarity algorithms                                                            223

   It can easily be seen that if a graph G is planar, any of its subgraph is also planar.
Besides, planarity is still preserved under edge contraction. These two facts mean to-
gether that any minor of a planar graph is still planar graph, which makes of planarity
a minor-closed property. If we let P̄ denote the poset of all non-planar graph, ordered
with the minor partial order, we can now consider the set P̄min of its minimal elements
which, by the Graph Minor Theorem, is a finite set.
   Actually, Kuratowski’s theorem asserts that P̄min = {K5 , K3,3 }.


7.3     Planarity algorithms
   ˆ planarity testing for 2-connected graphs

   ˆ planarity testing algorithm of Hopcroft and Tarjan [102]

   ˆ planarity testing algorithm of Boyer and Myrvold [35]
Chapter 8

Graph Coloring




      — Spiked Math, http://spikedmath.com/210.html

   ˆ See Jensen and Toft [109] for a survey of graph coloring problems.

   ˆ See Dyer and Frieze [66] for an algorithm on randomly colouring random graphs.


8.1      Vertex coloring
Vertex coloring is a widespread center of interest in graph theory, which has many vari-
ants. Formally speaking, a coloring of the vertex set of a graph G is any function
f : V (G) 7→ {1, . . . , k} giving to each vertex a color among a set of cardinal k. Things
get much more difficult when we add to it the constraint under which a coloring becomes
a proper coloring : a coloring with k colors of a graph G is said to be proper if there are
no edges between any two vertices colored with the same color. This can be rephrased
in many different ways :

   ˆ ∀i ∈ {1, . . . , k}, G[f −1 (i)] is a stable set

   ˆ ∀u, v ∈ G, u 6= v, f (u) = f (v) ⇒ uv 6∈ E(G)

   ˆ A proper coloring of G with k colors is a partition of V (G) into k independent sets

                                                 224
8.2. Edge coloring                                                                           225

    Chromatic numbers : quite clearly, it is always possible to find a proper coloring
of a graph G using one color per vertex. For this reason, the Coloring Problem is an
optimisation problem which amounts to finding the least number k of colors such that
G can be properly colored with k colors – is k-colorable. This integer, written χ(G), is
called the chromatic number of G.
    Greedy coloring, and an easy upper bound : the simple fact that Graph Col-
oring is a NP-complete problem must not prevent one from trying to color it greedily.
One such method would be to iteratively pick, in a graph G, an uncolored vertex v, and
to color it with the smallest color available which is not yet used by one of its neighbors
(in order to keep it proper). Such a coloring will obviously stay proper until the whole
vertex set is colored, and never use more than ∆(G) + 1 different colors (where ∆(G)
is the maximal degree of G), as in the procedure no vertex will ever exclude more than
∆(G) colors.
    Such an algorithm can be written in Sage in a few lines :
sage :   g = graphs . RandomGNP (100 ,5/100)
sage :   C = Set ( xrange (100))
sage :   color = {}
sage :   for u in g :
...         interdits = Set ([ color [ v ] for v in g . neighbors ( u ) if color . has_key ( v )])
...         color [ u ] = min (C - interdits )


   ˆ Brook’s Theorem

   ˆ heuristics for vertex coloring


8.2        Edge coloring
Edge coloring is the direct application of vertex coloring to the line graph of a graph G,
written L(G), which is the graph whose vertices are the edges of G, two vertices being
adjacent if and only if their corresponding edges share an endpoint. We write χ(L(G)) =
χ0 (G) the chromatic index of G. In this special case, however, the optimization problem
defined above, though still NP-Complete, is much better understood through Vizing’s
theorem.

Theorem 8.1 (Vizing). The edges of a graph G can be properly colored using at least
∆(G) colors and at most ∆(G) + 1

   Notice that the lower bound can be easily proved : if a vertex v has a degree d(v),
then at least d(v) colors are required to color G as all the edges incident to v must
receive different colors. Besides, the upper bound of ∆(G) + 1 can not be deduced from
the greedy algorithm given in the previous section, as the maximal degree of L(G) is not
equal to ∆(G) but to max d(u) + d(v) − 2, which can reach 2∆(G) − 2 in regular graphs.
                          u∼v

   ˆ algorithm for edge coloring by maximum matching

   ˆ algorithm for sequential edge coloring


8.3        Applications of graph coloring
   ˆ assignment problems
226                                               Chapter 8. Graph Coloring

      ˆ scheduling problems

      ˆ matching problems

      ˆ map coloring and the Four Color Problem
Chapter 9

Network Flows

See Jungnickel [115], and chapter 12 of Gross and Yellen [90].


9.1      Flows and cuts
   ˆ single source-single sink networks

   ˆ feasible networks

   ˆ maximum flow and minimum cut

   Let G = (V, E, i, h) be an unweighted multidigraph, as in Definition 1.6.
   If F is a field such as R or GF (q) or a ring such as Z, let

                C 0 (G, F ) = {f : V −→ F },          C 1 (G, F ) = {f : E −→ F },
be the sets of F -valued functions defined on V and E, respectively. If F is a field then
these are F -inner product spaces with inner product
                             X
                    (f, g) =    f (x)g(x),   (X = V, resp. X = E),                   (9.1)
                             x∈X

and

                        dim C 0 (G, F ) = |V |,     dim C 1 (G, F ) = |E|.
If you index the sets V and E in some arbitrary but fixed way and define, for 1 ≤ i ≤ |V |
and 1 ≤ j ≤ |E|,
                                                      
                            1, v = vi ,                  1, e = ej ,
                 fi (v) =                     gj (e) =
                            0, otherwise,                0, otherwise,
then F = {fi } ⊂ C 0 (G, F ) is a basis of C 0 (G, F ) and G = {gj } ⊂ C 1 (G, F ) is a basis of
C 1 (G, F ).
     We order the edges

                                    E = {e1 , e2 , . . . , e|E| },
in some arbitrary but fixed way. A vector representation (or characteristic vector or
incidence vector) of a subgraph G0 = (V, E 0 ) of G = (V, E), E 0 ⊂ E, is a binary |E|-tuple

                                                227
228                                                                          Chapter 9. Network Flows


                               vec(G0 ) = (a1 , a2 , . . . , a|E| ) ∈ GF (2)|E| ,
where
                                                      
                                               0          1, if ei ∈ E 0 ,
                                   ai = ai (E ) =
                                                                   / E 0.
                                                          0, if ei ∈
In particular, this defines a mapping

                          vec : {subgraphs of G = (V, E)} −→ GF (2)|E| .
      For any non-trivial partition

                               V = V1 ∪ V2 ,        Vi 6= ∅,      V1 ∩ V2 = ∅,
the set of all edges e = (v1 , v2 ) ∈ E, with vi ∈ Vi (i = 1, 2), is called a cocycle1 of G.
A cocycle with a minimal set of edges is a bond (or cut set) of G. An Euler subgraph is
either a cycle or a union of edge-disjoint cycles.
    The set of cycles of G is denoted Z(G) and the set of cocycles is denoted Z ∗ (G).
    The F -vector space spanned by the vector representations of all the cycles is called
the cycle space of G, denoted Z(G) = Z(G, F ). This is the kernel of the incidence matrix
of G (§14.2 in Godsil and Royle [86]). Define
                                        1
                                   D : CP (G, F ) −→ C 0 P
                                                         (G, F ),
                              (Df )(v) = h(e)=v f (e) − t(e)=v f (e).
With respect to these bases F and G, the matrix representing the linear transformation
D : C 1 (G, F ) −→ C 0 (G, F ) is the incidence matrix. An element of the kernel of D is
sometimes called a flow (see Biggs [23]) or circulation (see below). Therefore, this is
sometimes also referred to as the space of flows or the circulation space.
    It may be regarded as a subspace of C 1 (G, F ) of dimension n(G). When F is a finite
field, sometimes2 the cycle space is called the cycle code of G.
    Let F be a field such as R or GF (q), for some prime power q. Let G be a digraph.
Some define a circulation (or flow) on G = (V, E) to be a function

                                               f : E −→ F,
satisfying3
          P                           P
      ˆ   u∈V, (u,v)∈E   f (u, v) =    w∈V, (v,w)∈E   f (v, w).

(Note: this is simply the condition that f belongs to the kernel of D.)
    Suppose G has a subgraph H and f is a circulation of G such that f is a constant
function on H and 0 elsewhere. We call such a circulation a characteristic function of
H. For example, if G has a cycle C and if f is the characteristic function on C, then f
is a circulation.
    The circulation space C is the F -vector space of circulation functions. The cycle space
“clearly” may be identified with a subspace of the circulation space, since the F -vector
  1
    Also called an edge cut subgraph or disconnecting set or seg or edge cutset.
  2
    Jungnickel and Vanstone in [116] call this the even graphical code of G.
  3
    Note: In addition, some authors add the condition f (e) ≥ 0 - see e.g., Chung [54].
9.1. Flows and cuts                                                                                    229

space spanned by the characteristic functions of cycles may be identified with the cycle
space of G. In fact, these spaces are isomorphic. Under the inner product (9.1), i.e.,
                                                     X
                                          (f, g) =         f (e)g(e),                                 (9.2)
                                                     e∈E

this vector space is an inner product space.

Example 9.1. This example is not needed but is presented for its independent inter-
est. Assume G = (V, E) is a strongly connected directed graph. Define the transition
probability matrix P for a digraph G by
                                        
                                          dx , if (x, y) ∈ E,
                             P (x, y) =
                                          0, otherwise,
where dx denotes the out-degree. The Perron-Frobenius Theorem states that there exists
a unique left eigenvector φ such that (when regarded as a function φ : V −→ R) φ(v) > 0,
P all v ∈ V and φP = ρφ, where ρ is the spectral radius of G. We scale φ so that
for
   v∈V φ(v) = 1. (This vector is sometimes called the Perron vector.) Let Fφ (u, v) =
φ(v)P (u, v). Fact: Fφ is a circulation. For a proof, see F. Chung [54].

    If the edges of E are indexed in some arbitrary but fixed way then a circulation
function restricted to a subgraph H of G may be identified with a vector representation
of H, as described above. Thefore, the circulation functions gives a coordinate-free
version of the cycle space.
    The F -vector space spanned by the vector representations of all the segs is called the
cocycle space (or the cut space) of G, denoted Z ∗ (G) = Z ∗ (G, F ). This is the column
space of the transpose of the incidence matrix of G (§14.1 in Godsil and Royle [86]). It
may be regarded as a subspace of C 1 (G, F ) of dimension the rank of G, r(G). When F
is a finite field, sometimes the cocycle space is called the cocycle code of G.

Lemma 9.2. Under the inner product (9.1) on C 1 (G, F ), the cycle space is orthogonal
to the cocycle space.

Solution. One proof follows from Theorem 8.3.1 in Godsil and Royle [86].
    Here is another proof. By Theorem 2.3 in Bondy and Murty [31, p.27], an edge of G is
an edge cut if and only if it is contained in no cycle. Therefore, the vector representation
of any cocycle is supported on a set of indices which is disjoint from the support of the
vector representation of any cycle. Therefore, there is a basis of the cycle space which is
orthogonal to a basis of the cocycle space.

Proposition 9.3. Let F = GF (2). The cycle code of a graph G = (V, E) is a linear
binary block code of length |E|, dimension equal to the nullity of the graph, n(G),
and minimum distance equal to the girth of G. If C ⊂ GF (2)|E| is the cycle code
associated to G and C ∗ is the cocycle code associated to G then C ∗ is the dual code of
C. In particular, the cocycle code of G is a linear binary block code of length |E|, and
dimension r(G) = |E| − n(G).

   This follows from Hakimi-Bredeson [96] (see also Jungnickel-Vanstone [116]) in the
binary case4 .
  4
      It is likely true in the non-binary case as well, but no proof seems to be in the literature.
230                                                                        Chapter 9. Network Flows

Solution. Let d denote the minimum distance of the code C. Let γ denote the girth of
G, i.e., the smallest cardinality of a cycle in G. If K is a cycle in G then the vector
vec(K) ∈ GF (2)|E| is an element of the cycle code C ⊂ GF (2)|E| . This implies d ≤ γ.
    In the other direction, suppose K1 and K2 are cycles in G with associated support
vectors v1 = vec(K1 ), v2 = vec(K2 ). Assume that at least one of these cycles is a cycle
of minimum length, say K1 , so the weight of its corresponding support vector is equal to
the girth γ. The only way that wt(v1 + v2 ) < min{wt(v1 ), wt(v2 )} can occur is if K1 and
K2 have some edges in common. In this case, the vector v1 + v2 represents a subgraph
which is either a cycle or it is a union of disjoint cycles. In either case, by minimality of
K1 , these new cycles must be at least as long. Therefore, d ≥ γ, as desired.


   Consider a spanning tree T of a graph G and its complementary subgraph T . For
each edge e of T the graph T ∪ e contains a unique cycle. The cycles which arise in this
way are called the fundamental cycles of G, denoted cyc(T, e).

Example 9.4. Consider the graph below, with edges labeled as indicated, together with
a spanning tree, depicted to its right, in Figure 9.4.


                               7         9
          0            4
               2           6       8      10
           1       3    5
                       Figure 9.1: A graph and a spanning tree for it.


   You can see from Figure 9.4 that:

      ˆ by adding edge 2 to the tree, you get a cycle 0, 1, 2 with vector representation

                                       g1 = (1, 1, 1, 0, 0, 0, 0, 0, 0, 0, 0),

      ˆ by adding edge 6 to the tree, you get a cycle 4, 5, 6 with vector representation

                                       g2 = (0, 0, 0, 0, 1, 1, 1, 0, 0, 0, 0),

      ˆ by adding edge 10 to the tree, you get a cycle 8, 9, 10 with vector representation

                                       g3 = (0, 0, 0, 0, 0, 0, 0, 0, 1, 1, 1).

The vectors {g1 , g2 , g3 } form a basis of the cycle space of G over GF (2).

   The cocycle space of a graph G (also known as the bond space of G or the cut-set
space of G) is the F -vector space spanned by the characteristic functions of bonds.

Example 9.5. Consider the graph below, with edges labeled as indicated, together with
an example of a bond, depicted to its right, in Figure 9.5.
   You can see from Figure 9.5 that:
9.1. Flows and cuts                                                                                231


                                 7         9
         0             4
              2              6       8      10
          1       3      5
                             Figure 9.2: A graph and a bond of it.


    ˆ by removing edge 3 from the graph, you get a bond with vector representation


                                         b1 = (0, 0, 0, 1, 0, 0, 0, 0, 0, 0, 0),

    ˆ by removing edge 7 from the graph, you get a bond with vector representation


                                         b2 = (0, 0, 0, 0, 0, 0, 0, 1, 0, 0, 0),

    ˆ by removing edges 0, 1 from the graph, you get a bond with vector representation


                                         b3 = (1, 1, 0, 0, 0, 0, 0, 0, 0, 0, 0),

    ˆ by removing edges 1, 2 from the graph, you get a bond with vector representation


                                         b4 = (0, 1, 1, 0, 0, 0, 0, 0, 0, 0, 0),

    ˆ by removing edges 4, 5 from the graph, you get a bond with vector representation


                                         b5 = (0, 0, 0, 0, 1, 1, 0, 0, 0, 0, 0),

    ˆ by removing edges 4, 6 from the graph, you get a bond with vector representation


                                         b6 = (0, 0, 0, 0, 1, 0, 1, 0, 0, 0, 0),

    ˆ by removing edges 8, 9 from the graph, you get a bond with vector representation


                                         b7 = (0, 0, 0, 0, 0, 0, 0, 0, 1, 1, 0),

    ˆ by removing edges 9, 10 from the graph, you get a bond with vector representation


                                         b8 = (0, 0, 0, 0, 0, 0, 0, 0, 0, 1, 1).

The vectors {b1 , b2 , b3 , b4 , b5 , b6 , b7 , b8 } form a basis of the cocycle space of G over GF (2).
   Note that these vectors are orthogonal to the basis vectors of the cycle space in
Example 9.4. Note also that the xor sum of two cuts is not a cut.For example, if you xor
the bond 4, 5 with the bond 4, 6 then you get the subgraph foormed by the edges 5, 6
and that is not a disconnecting cut of G.
232                                                                Chapter 9. Network Flows

9.2       Chip firing games
Chip firing games on graphs (which are just pure fun) relate to “abelian sandpile models”
from physics to “rotor-routing models” from theoretical computer scientists (designing
efficient computer multiprocessor circuits) to “self-organized criticality” (a subdiscipline
of dynamical systems) to “algebraic potential theory” on a graph [23] to cryptography
(via the Biggs cryptosystem). Moreover, it relates the concepts of the Laplacian of the
graph to the tree number to the circulation space of the graph to the incidence matrix,
as well as many other ideas. Some good references are [65], [162], [163], [100] and [24].

Basic set-up
A chip firing game always starts with a directed multigraph G having no loops. A con-
figuration is a vertex-weighting, i.e., a function s : V −→ R. The players are represented
by the vertices of G and the vertex-weights represent the number of chips each player
(represented by that vertex) has. The initial vertex-weighting is called the starting con-
figuration of G. Let vertex v have outgoing degree d+ (v). If the weight of vertex v is
≥ d+ (v) (so that player can afford to give away all their chips) then that vertex is called
active.
    Here is some SAGE/Python code for determining the active vertices.
                                              SAGE

def active_vertices(G, s):
    """
    Returns the list of active vertices.

      INPUT:
       G - a graph
       s - a configuration (implemented as a list
                            or a dictionary keyed on
                            the vertices of the graph)

      EXAMPLES:
          sage: A = matrix([[0,1,1,0,0],[1,0,1,0,0],[1,1,0,1,0],[0,0,0,0,1],[0,0,0,0,0]])
          sage: G = Graph(A, format = "adjacency_matrix", weighted = True)
          sage: s = {0: 3, 1: 1, 2: 0, 3: 1, 4: 1}
          sage: active_vertices(G, s)
          [0, 4]

      """
      V = G.vertices()
      degs = [G.degree(v) for v in V]
      active = [v for v in V if degs[V.index(v)]<=s[v]]
      return active



If v is active then when you fire v you must also change the configuration. The new
configuration s0 will satisfy s0 (v) = s(v) − d+ (v) and s0 (v 0 ) = s(v 0 ) + 1 for each neighbor
v 0 of v. In other words, v will give away one chip to each of its d+ (v) neighbors. If
x : V −→ {0, 1}|V | ⊂ R|V | is the representation vector (“characteristic function”) of a
vertex then this change can be expressed more compactly as

                                        s0 = s − L ◦ x,                                     (9.3)
where L is the vertex Laplacian. It turns out that the column sums of L are all 0, so
this operation does not change the total number of chips. We use the notation
                                               v
                                            s −→ s0 ,
9.2. Chip firing games                                                                              233

to indicate that the configuration s0 is the result of firing vertex v in configuration s.
Example 9.6. Consider the graph
                                        1
                                       •
                                        @
                                          @
                               0•             @•2


                               4•              •3
                            Figure 9.3: A graph with 5 vertices.

   This graph has incidence matrix
                                                                  
                                 −1 −1 0  0  0
                              0 −1 −1 0     0                     
                                                                  
                         D=     1 0  −1 −1 0                     ,
                                                                   
                              0    0  0 −1 −1                     
                                  0 0  0  0  1
and Laplacian
                                                                             
                                             2 −1 0 − 1 0  0
                                           −1 2   −1   0  0                  
                                                                             
                       L=D· D=
                              
                                t
                                            −1 −1   3   −1 0                  .
                                                                              
                                            0 0   −1   2 −1                  
                                             0 0    0   −1 1
Suppose the initial configuration is s = (3, 1, 0, 1, 1), i.e.,

   ˆ player 0 has 3 dollars,

   ˆ player 1 has 1 dollar,

   ˆ player 2 has nothing,

   ˆ player 3 has 1 dollar,

   ˆ player 4 has 1 dollar.

Notice player 0 is active. If we fire 0 then we get the new configuration s0 = (1, 2, 1, 1, 1).
Indeed, if we compute s0 = s − Lx(0), we get:

                                                                                         
           3            2 −1 −1 0 0                    1              3             2           1
          1         −1 2 −1 0  0                  0            1          −1         2   
                                                                                         
 s0 = 
          0   −
                     −1 −1 3 −1 0             
                                                     0   =
                                                                    0   −
                                                                                 −1   =
                                                                                              1   .
                                                                                                    
          1          0 0 −1 2 −1                  0            1           0         1   
           1            0 0  0 −1 1                    0              1             0           1

This can be written more concisely as
                                                0
                                (3, 1, 0, 1, 1) −→ (1, 2, 1, 1, 1).
234                                                                    Chapter 9. Network Flows

We have the cycle
                                1                    0                2
                (1, 2, 1, 1, 1) −→ (2, 0, 2, 1, 1) −→ (0, 1, 3, 1, 1) −→ (1, 2, 0, 2, 1)
                                  3                  4
                                 −→ (1, 2, 1, 0, 2) −→ (1, 2, 1, 1, 1).

Chip-firing game variants
For simplicity, let G = (V, E) be an undirected graph with an indexed set of vertices
V = {v1 , . . . , vm } and an indexed set of vertices E = {e1 , . . . , en }.
    One variant (the “sandpile model”) has a special vertex, called “the sink,” which has
special firing properties. In the sandpile variant, the sink is never fired. Another variant
(the “dollar game”) has a special vertex, called “the source,” which has special firing
properties. In the dollar game variant, the source is only fired when not other vertex is
active. We shall consider the dollar game variant here, following Biggs [25].
    We select a distinguished vertex q ∈ V , called the “source5 ,” which has a special
property to be described below. For the dollar game, a configuration is a function
s : V −→ R for which
                                        X
                                            s(v) = 0,
                                          v∈V

and s(v) ≥ 0 for all v ∈ V with v 6= q. A vertex v 6= q can be fired if and only
if deg(v) ≤ s(v) (i.e., it “has enough chips”). The equation (9.3) describes the new
configuration after firing a vertex.
    Here is some SAGE/Python code for determining the configuration after firing an
active vertex.
                                                   SAGE

def fire(G, s, v0):
    """
    Returns the configuration after firing the active vertex v.

       INPUT:
        G - a graph
        s - a configuration (implemented as a list
                             or a dictionary keyed on
                             the vertices of the graph)
        v - a vertex of the graph

       EXAMPLES:
           sage: A = matrix([[0,1,1,0,0],[1,0,1,0,0],[1,1,0,1,0],[0,0,0,0,1],[0,0,0,0,0]])
           sage: G = Graph(A, format = "adjacency_matrix", weighted = True)
           sage: s = {0: 3, 1: 1, 2: 0, 3: 1, 4: 1}
           sage: fire(G, s, 0)
           {0: 1, 1: 2, 2: 1, 3: 1, 4: 1}

       """
       V = G.vertices()
       j = V.index(v0)
       s1 = copy(s)
       if not(v0 in V):
           raise ValueError, "the last argument must be a vertex of the graph."
       if not(v0 in active_vertices(G, s)):
           raise ValueError, "the last argument must be an active vertex of the graph."
       degs = [G.degree(w) for w in V]
       for w in V:
            if w == v0:
                s1[v0] = s[v0] - degs[j]
            if w in G.neighbors(v0):

  5
      Biggs humorously calls q “the government.”
9.2. Chip firing games                                                                       235

             s1[w] = s[w]+1
    return s1




We say s : V −→ R is a stable configuration if 0 ≤ s(v) < deg(v), for all v 6= q. The
source vertex q can only be fired when no other vertex can be fired, that is only in the
case when a stable configuration has been reached.
   Here is some SAGE/Python code for determining the stable vertices.
                                             SAGE

def stable_vertices(G, s, source = None):
    """
    Returns the list of stable vertices.

    INPUT:
     G - a graph
     s - a configuration (implemented as a list
                          or a dictionary keyed on
                          the vertices of the graph)

    EXAMPLES:
        sage:   A = matrix([[0,1,1,0,0],[1,0,1,0,0],[1,1,0,1,0],[0,0,0,0,1],[0,0,0,0,0]])
        sage:   G = Graph(A, format = "adjacency_matrix", weighted = True)
        sage:   s = {0: 3, 1: 1, 2: 0, 3: 1, 4: 1}
        sage:   stable_vertices(G, s)

    """
    V = G.vertices()
    degs = [G.degree(v) for v in V]
    if source==None:
        stable = [v for v in V if degs[V.index(v)]>s[v]]
    else:
        stable = [v for v in V if degs[V.index(v)]>s[v] and v!=source]
    return stable




   Suppose we are in a configuration s1 . We say a sequence vertices S = (w1 , w2 , . . . , wk ),
wi ∈ V not necessarily distinct, is legal if,
   ˆ w1 is active in configuration s1 ,

   ˆ for each i with 1 ≤ i < k, si+1 is obtained from si by firing wi in configuration si ,

   ˆ for each i with 1 ≤ i < k, wi+1 is active in the configuration si+1 defined in the
     previous step,

   ˆ the source vertex q occurs in S only if it immediately follows a stable configuration.

We call s1 or w1 the start of S. A configuration s is recurrent if there is a legal sequence
starting at s which leads back to s. A configuration is critical if it recurrent and stable.
    Here is some SAGE/Python code for determining a stable vertex resulting from a
legal sequence of firings of a given configuration s. I think it returns the unique critical
configuration associated to s but have not proven this.
                                             SAGE

def stabilize(G, s, source, legal_sequence = False):
    """
    Returns the stable configuration of the graph originating from
    the given configuration s. If legal_sequence = True then the
    sequence of firings is also returned. By van den Heuvel [1],
    the number of firings needed to compute a critical configuration
    is < 3(S+2|E|)|V|ˆ2, where S is the sum of the positive
236                                                                 Chapter 9. Network Flows

      weights in the configuration.

      EXAMPLES:
          sage: A = matrix([[0,1,1,0,0],[1,0,1,0,0],[1,1,0,1,0],[0,0,1,0,1],[0,0,0,1,0]])
          sage: G = Graph(A, format="weighted_adjacency_matrix")
          sage: s = {0: 3, 1: 1, 2: 0, 3: 1, 4: -5}
          sage: stabilize(G, s, 4)
          {0: 0, 1: 1, 2: 2, 3: 1, 4: -4}

      REFERENCES:
          [1] J. van den Heuvel, "Algorithmic aspects of a chip-firing
              game," preprint.
      """
      V = G.vertices()
      E = G.edges()
      fire_number = 3*len(V)ˆ2*(sum([s[v] for v in V if s[v]>0])+2*len(E))+len(V)
      if legal_sequence:
          seq = []
      stab = []
      ac = active_vertices(G,s)
      for i in range(fire_number):
          if len(ac)>0:
              s = fire(G,s,ac[0])
              if legal_sequence:
                  seq.append(ac[0])
          else:
              stab.append(s)
              break
          ac = active_vertices(G,s)
      if len(stab)==0:
          raise ValueError, "No stable configuration found."
      if legal_sequence:
          return stab[0], seq
      else:
          return stab[0]




   The incidence matrix D and its transpose t D can be regarded as homomorphisms

             D : C 1 (G, Z) −→ C 0 (G, Z)    and     t
                                                         D : C 0 (G, Z) −→ C 1 (G, Z).
We can also regard the Laplacian L = D· t D as a homomorphism C 0 (G, Z) −→ C 0 (G, Z).
Denote by σ : C 0 (G, Z) −→ Z the homomorphism defined by
                                           X
                                   σ(f ) =     f (v).
                                               v∈V

Denote by K(G) the set of critical configurations on a graph G.

Lemma 9.7. (Biggs [25]) The set K(G) of critical configurations on a connected graph
G is in bijective correspondence with the abelian group Ker(σ)/Im(Q).

   If you accept this lemma (which we do not prove here) then you must believe that
there is a bijection f : K(G) −→ Ker(σ)/Im(Q). Now, a group operation • on K(G) an
be defined by

                                  a • b = f −1 (f (a) + f (b)),
for all a, b ∈ Ker(σ)/Im(Q).

Example 9.8. Consider again the graph

   This graph has incidence matrix
9.2. Chip firing games                                                                           237
                                              1
                                             •
                                             @
                                               @
                                0•                 @•2


                                4◦                  •3
                             Figure 9.4: A graph with 5 vertices.


                                                                 
                                         −1 −1 0 0  0
                                        0 −1 −1 0  0             
                                                                 
                              D=
                                        1  0 −1 −1 0             ,
                                                                  
                                        0  0  0 −1 −1            
                                         0  0  0 0  1
and Laplacian
                                                                        
                                                   2 −1 0 − 1 0  0
                                                 −1 2   −1   0  0       
                                                                        
                       L=D· D=
                              
                                 t
                                                  −1 −1   3   −1 0       .
                                                                         
                                                  0 0   −1   2 −1       
                                                   0 0    0   −1 1
Suppose the initial configuration is s = (3, 1, 0, 1, −5), i.e.,

   ˆ player 0 has 3 dollars,

   ˆ player 1 has 1 dollar,

   ˆ player 2 has nothing,

   ˆ player 3 has 1 dollar,

   ˆ player 4 is the source vertex q.

The legal sequence (0, 1, 0, 2, 1, 0, 3, 2, 1, 0) leads to the stable configuration (0, 1, 2, 1, −4).
If q is fired then the configuration (0, 1, 2, 2, −5) is achieved. This is recurrent since it is
contained in the cyclic legal sequence
                                         3                  2
                     (0, 1, 2, 2, −5) −→ (0, 1, 3, 0, −4) −→ (1, 2, 0, 1, −4)
                   1                    0                   q
                  −→ (2, 0, 1, 1, −4) −→ (0, 1, 2, 1, −4) −→ (0, 1, 2, 2, −5).
In particular, the configuration (0, 1, 2, 1, −4) is also recurrent. Since it is both stable
and recurrent, it is critical.

   The following result is of basic importance but I’m not sure who proved it first. It is
quoted in many of the papers on this topic in one form or another.

Theorem 9.9. (Biggs [24], Theorem 3.8) If s is an configuration and G is connected
then there is a unique critical configuration s0 which can be obtained by a sequence of
legal firings for starting at s.
238                                                                Chapter 9. Network Flows

      The map defined by the above theorem is denoted

                                   γ : C 0 (G, R) −→ K(G).
Another way to define multiplication • on on K(G) is

                                  γ(s1 ) • γ(s2 ) = γ(s1 + s2 ),
where s1 + s2 is computed using addition on C 0 (G, R). According to Perkinson [162],
Theorem 2.16, the critical group satisfies the following isomorphism:

                                      K(G) ∼
                                           = Zm−1 /L,
where L is the integer lattice generated by the columns of the reduced Laplacian matrix6 .

      If s is a configuration then we define
                                                 X
                                     wt(s) =              s(q)
                                               v∈V,v6=q

to be the weight of the configuration. The level of the configuration is defined by

                               level(s) = wt(s) − |E| + deg(q).

Lemma 9.10. (Merino [148]) If s is a critical configuration then

                                 0 ≤ level(s) ≤ |E| − |V | + 1.

   This is proven in Theorem 3.4.5 in [148]. What is also proven in [148] is a statement
whcih computes the number of critical configurations of a given level in terms of the
Tutte polynomial of the associated graph.


9.3        Ford-Fulkerson theorem
The Ford-Fulkerson Theorem, or “Max-flow/Min-cut Theorem,” was proven by P. Elias,
A. Feinstein, and C.E. Shannon in 1956, and, independently, by L.R. Ford, Jr. and D.R.
Fulkerson in the same year. So it should be called the “Elias-Feinstein-Ford-Fulkerson-
Shannon Theorem,” to be precise about the authorship.
    To explain the meaning of this theorem, we need to introduce some notation and
terminology.
    Consider an edge-weighted simple digraph G = (V, E, i, h) without negative weight
cycles. Here E ⊂ V (2) , i is an incidence function as in (??), which we regard as the
identity function, and h is an orientation function as in (??). Let G be a network,
with two distinguished vertices, the “source” and the “sink.” Let s and t denote the
source and the sink of G, respectively. The capacity (or edge capacity) ) is a mapping
c : E −→ R, denoted by cuv or c(u, v), for (u, v) ∈ E and h(e) = u. If (u, v) ∈ E
and h(e) = v then we set, by convention, c(v, u) = −c(u, v). Thinking of a graph as
a network of pipes (representing the edges) transporting water with various junctions
  6
    The reduced Laplacian matrix is obtained from the Laplacian matrix by removing the row and
column associated to the source vertex.
9.3. Ford-Fulkerson theorem                                                                 239

(representing vertices), the capacity function represents the maximum amount of “flow”
that can pass through an edge.
   A flow is a mapping f : E −→ R, denoted by fuv or f (u, v), subject to the following
two constraints:

   ˆ f (u, v) ≤ c(u, v), for each (u, v) ∈ V (the “capacity constraint”),
     P                          P
   ˆ    u∈V, (u,v)∈E f (u, v) =  u∈V, (v,u)∈E f (v, u) , for each v ∈ V (conservation of flows).

An edge (u, v) ∈ E is f -saturated if f (u, v) = c(u, v). An edge (u, v) ∈ E is f -zero
if f (u, v) = 0. A path with available capacity is called an “augmenting path.” More
precisely, a directed path form s to t is f -augmenting, or f -unsaturated, if no forward
edge is f -saturated and no backward edge is f -zero.
    The value of the flow is defined by
                                        X                  X
                               |f | =         f (s, v) −         f (v, s),
                                        v∈V                v∈V

where s is the source. It represents the amount of flow passing from the source to the
sink. The maximum flow problem is to maximize |f |, that is, to route as much flow as
possible from s to t.

Example 9.11. Consider the digraph having adjacency                       matrix
                                                                         
                            0   1    1   0    0 0
                         −1 0 −1 1           0 1                         
                                                                         
                         −1 1       0   0    1 0                         
                                                                         ,
                         0 −1 0         0    0 1                         
                                                                         
                         0     0 −1 0        0 1                         
                            0 −1 0 −1 −1 0
depicted in Figure 9.5.

                                              2                       4




                                 0




                                              1                       5




                                                           3


                          Figure 9.5: A digraph with 6 vertices.

    Suppose that each edge has capacity 1. A maximum flow f is obtained by taking a
flow value of 1 along each edge of the path

                                         p1 : (0, 1), (1, 5),
and a flow value of 1 along each edge of the path
240                                                                       Chapter 9. Network Flows


                                        p2 : (0, 2), (2, 4), (4, 5).
The maximum value of the flow in this case is |f | = 2.
  This graph can be created in Sage using the commands
sage : B = matrix ([[0 ,1 ,1 ,0 ,0 ,0] ,[0 ,0 ,0 ,1 ,0 ,1] ,[0 ,1 ,0 ,0 ,1 ,0] ,[0 ,0 ,0 ,0 ,0 ,1] ,[0 ,0 ,0 ,0 ,0 ,1] ,[0 ,0 ,
sage : H = DiGraph (B , format = " adjacency_matrix " , weighted = True )

Type H.show(edgewlabels=True) if you want to see the graph with the capacities la-
beling the edges.
    Given a capacitated digraph with capacity c and flow f , we define the residual digraph
Gf = (V, E) to be the digraph with capacity cf (u, v) = c(u, v) − f (u, v) and no flow. In
other words, Gf is the same graph but it has a different capacity cf and flow 0. This is
also called a residual network.
    Define an s − t cut in our capacitated digraph G to be a partition C = (S, T ) of V
such that s ∈ S and t ∈ T . Recall the cut-set of C is the set

                                     {(u, v) ∈ E | u ∈ S, v ∈ T }.
Lemma 9.12. Let G = (V, E) be a capacitated digraph with capacity c : E −→ R, and
let s and t denote the source and the sink of G, respectively. If C is an s − t cut and if
the edges in the cut-set of C are removed, then |f | = 0.
Exercise 9.13. Prove Lemma 9.12.
    The capacity of an s − t cut C = (S, T ) is defined by
                                             X
                                c(S, T ) =          c(u, v).
                                                  (s,t)∈(S,T )

The minimum cut problem is to minimize the amount of capacity of an s − t cut.
   The following theorem is due to P. Elias, A. Feinstein, L.R. Ford, Jr., D.R. Fulkerson,
C.E. Shannon.
Theorem 9.14. (max-flow min-cut theorem) The maximum value of an s-t flow is equal
to the minimum capacity of an s-t cut.
    The intuitive explanation of this result is as follows.
    Suppose that G = (V, E) is a graph where each edge has capacity 1. Let s ∈ V be the
source and t ∈ V be the sink. The maximum flow from s to t is the maximum number
of independent paths from s to t. Denote this maximum flow by m. Each s-t cut must
intersect each s-t path at least once. In fact, if S is a minimal s-t cut then for each edge
e in S there is an s-t path containing e. Therefore, |S| ≤ e.
    On the other hand, since each edge has unit capacity, the maximum flow value can’t
exceed the number of edges separating s from t, so m ≤ |S|.
Remark 9.15. Although the notion of an independent path is important for the network-
theoretic proof of Menger’s theorem (which we view as a corollary to the Ford-Fulkerson
theorem on network flows on networks having capacity 1 on all edges), its significance
is less important for networks having arbitrary capacities. One must use caution in
generalizing the above intuitive argument to establish a rigorous proof of the general
version of the MFMC theorem.
9.3. Ford-Fulkerson theorem                                                           241

Remark 9.16. This theorem can be generalized as follows. In addition to edge capacity,
suppose there is capacity at each vertex, that is, a mapping c : V −→ R, denoted by
v 7→ c(v), such that the flow f has to satisfy not only the capacity constraint and the
conservation of flows, but also the vertex capacity constraint
                                    X
                                        f (w, v) ≤ c(v),
                                   w∈V

for each v ∈ V − {s, t}. Define an s − t cut to be the set of vertices and edges such
that for any path from s to t, the path contains a member of the cut. In this case, the
capacity of the cut is the sum the capacity of each edge and vertex in it. In this new
definition, the generalized max-flow min-cut theorem states that the maximum value of
an s − t flow is equal to the minimum capacity of an s − t cut..

   The idea behind the Ford-Fulkerson algorithm is very simple: As long as there is a
path from the source to the sink, with available capacity on all edges in the path, we
send as much flow as we can alone along each of these paths. This is done inductively,
one path at a time.

 Algorithm 9.1: Ford-Fulkerson algorithm.
  Input: Graph G = (V, E) with flow capacity c, source s, and sink t.
  Output: A flow f from s to t which is a maximum for all edges in E.
 1   f (u, v) ← 0 for each edge uv ∈ E
 2   while there is an s-t path p in Gf such that cf (e) > 0 for each edge e ∈ E do
 3       find cf (p) = min{cf (u, v) | (u, v) ∈ p}
 4       for each edge uv ∈ do
 5           f (u, v) = f (u, v) + cf (p)
 6           f (v, u) = f (v, u) − cf (p)


     To prove the max-flow/min-cut theorem we will use the following lemma.

Lemma 9.17. Let G = (V, E) be a directed graph with edge capacity c : E −→ Z, a
source s ∈ V , and a sink t ∈ V . A flow f : E −→ Z is a maximum flow if and only if
there is no f -augmenting path in the graph.

   In other words, a flow f in a capacitated network is a maximum flow if and only if
there is no f -augmenting path in the network.
Solution. One direction is easy. Suppose that the flow is a maximum. If there is an
f -augmenting path then the current flow can be increased using that path, so the flow
would not be a maximum. This contradiction proves the “only if” direction.
    Now, suppose there is no f -augmenting path in the network. Let S be the set of
vertices v such that there is an f -unsaturated path from the source s to v. We know
s ∈ S and (by hypothesis) t ∈/ S. Thus there is a cut of the form (S, T ) in the network.
Let e = (v, w) be any edge in this cut, v ∈ S and w ∈ T . Since there is no f -unsaturated
path from s to w, e is f -saturated. Likewise, any edge in the cut (T, S) is f -zero.
Therefore, the current flow value is equal to the capacity of the cut (S, T ). Therefore,
the current flow is a maximum.
     We can now prove the max-flow/min-cut theorem.
242                                                                       Chapter 9. Network Flows

Solution. Let f be a maximum flow. If

                 S = {v ∈ V | there exists an f − saturated path from s to v},
then by the previous lemma, S 6= V . Since T = V − S is non-empty, there is a cut
C = (S, T ). Each edge of this cut C in the capacitated network G is f -saturated.


   Here is some Python code7 which implements this. The class FlowNetwork is basically
a Sage Graph class with edge weights and an extra data structure representing the flow
on the graph.
class Edge :
    def __init__ ( self ,U ,V , w ):
        self . source = U
        self . to = V
        self . capacity = w
    def __repr__ ( self ):
        return str ( self . source ) + " ->" + str ( self . to ) + " : " + str ( self . capacity )

class FlowNetwork ( object ):
    """
    This is a graph structure with edge capacities .

       EXAMPLES :
           g = FlowNetwork ()
           map ( g . add_vertex , [ ’ s ’,’o ’,’p ’,’q ’,’r ’,’t ’])
           g . add_edge ( ’ s ’,’o ’ ,3)
           g . add_edge ( ’ s ’,’p ’ ,3)
           g . add_edge ( ’ o ’,’p ’ ,2)
           g . add_edge ( ’ o ’,’q ’ ,3)
           g . add_edge ( ’ p ’,’r ’ ,2)
           g . add_edge ( ’ r ’,’t ’ ,3)
           g . add_edge ( ’ q ’,’r ’ ,4)
           g . add_edge ( ’ q ’,’t ’ ,2)
           print g . max_flow ( ’ s ’,’t ’)
       """
       def __init__ ( self ):
           self . adj , self . flow , = {} ,{}

       def add_vertex ( self , vertex ):
           self . adj [ vertex ] = []

       def get_edges ( self , v ):
           return self . adj [ v ]
       def add_edge ( self , u ,v , w =0):
           assert ( u != v )
           edge = Edge (u ,v , w )
           redge = Edge (v ,u ,0)
           edge . redge = redge
           redge . redge = edge
           self . adj [ u ]. append ( edge )
           self . adj [ v ]. append ( redge )
           self . flow [ edge ] = self . flow [ redge ] = 0

       def find_path ( self , source , sink , path ):
           if source == sink :
               return path
           for edge in self . get_edges ( source ):
               residual = edge . capacity - self . flow [ edge ]
               if residual > 0 and not ( edge , residual ) in path :
                   result = self . find_path ( edge . to , sink , path + [ ( edge , residual ) ])
                   if result != None :
                         return result

       def max_flow ( self , source , sink ):
           path = self . find_path ( source , sink , [])
           while path != None :
               flow = min ( res for edge , res in path )

  7
      Please see http://en.wikipedia.org/wiki/Ford-Fulkersonwalgorithm.
9.4. Edmonds and Karp’s algorithm                                                    243

            for edge , res in path :
                self . flow [ edge ] += flow
                self . flow [ edge . redge ] -= flow
            path = self . find_path ( source , sink , [])
        return sum ( self . flow [ edge ] for edge in self . get_edges ( source ))



9.4     Edmonds and Karp’s algorithm
The objective of this section is to prove Edmond and Karp’s algorithm for the maximum
flow-minimum cut problem with polynomial complexity.


9.5     Goldberg and Tarjan’s algorithm
The objective of this section is to prove Goldberg and Tarjan’s algorithm for finding
maximal flows with polynomial complexity.
Chapter 10

Random Graphs

A random graph can be thought of as being a member from a collection of graphs having
some common properties. Recall that Algorithm 3.5 allows for generating a random
binary tree having at least one vertex. Fix a positive integer n and let T be a collection
of all binary trees on n vertices. It can be infeasible to generate all members of T , so for
most purposes we are only interested in randomly generating a member of T . A binary
tree of order n generated in this manner is said to be a random graph.
    This chapter is a digression into the world of random graphs and various models
for generating different types of random graphs. Unlike other chapters in this book, our
approach is rather informal and not as rigorous as in other chapters. We will discuss some
common models of random graphs and a number of their properties without being bogged
down in details of proofs. Along the way, we will demonstrate that random graphs can
be used to model diverse real-world networks such as social, biological, technological,
and information networks. The edited volume [154] provides some historical context
for the “new” science of networks. Bollobás [28] and Kolchin [125] provide standard
references on the theory of random graphs with rigorous proofs. For comprehensive
surveys of random graphs and networks that do not go into too much technical details,
see [13, 67, 197, 198]. On the other hand, surveys that cover diverse applications of
random graphs and networks and are geared toward the technical aspects of the subject
include [5, 27, 46, 58, 59, 63, 158].


10.1       Network statistics
Numerous real-world networks are large, having from thousands up to millions of vertices
and edges. Network statistics provide a way to describe properties of networks without
concerning ourselves with individual vertices and edges. A network statistic should
describe essential properties of the network under consideration, provide a means to
differentiate between different classes of networks, and be useful in network algorithms
and applications [38]. In this section, we discuss various common network statistics that
can be used to describe graphs underlying large networks.

10.1.1     Degree distribution
The degree distribution of a graph G = (V, E) quantifies the fraction of vertices in G
having a specific degree k. If v is any vertex of G, we denote this fraction by
                                    p = Pr[deg(v) = k]                                (10.1)

                                            244
10.1. Network statistics                                                                                     245

As indicated by the notation, we can think of (10.1) as the probability that a vertex v ∈ V
chosen uniformly at random has degree k. The degree distribution of G is consequently a
histogram of the degrees of vertices in G. Figure 10.1 illustrates the degree distribution
of the Zachary [209] karate club network. The degree distributions of many real-world
networks have the same general curve as depicted in Figure 10.1(b), i.e. a peak at low
degrees followed by a tail at higher degrees. See for example the degree distribution of
the neural network in Figure 10.2, that of a power grid network in Figure 10.3, and the
degree distribution of a scientific co-authorship network in Figure 10.4.


                                                              0.3

                                                             0.25

                                                              0.2

                                                             0.15

                                                              0.1

                                                       5 · 10−2
                                                                      2     4     6     8   10    12   14   16
       (a) Zachary karate club network.                                     (b) Linear scaling.


                          10−0.6


                          10−0.8


                           10−1


                          10−1.2


                          10−1.4

                               100   100.2   100.4   100.6    100.8       101   101.2
                                          (c) Log-log scaling.

Figure 10.1: The friendship network within a 34-person karate club. This is more com-
monly known as the Zachary [209] karate club network. The network is an undirected,
connected, unweighted graph having 34 vertices and 78 edges. The horizontal axis repre-
sents degree; the vertical axis represents the probability that a vertex from the network
has the corresponding degree.



10.1.2      Distance statistics
In chapter 5 we discussed various distance metrics such as radius, diameter, and eccen-
tricity. To that distance statistics collection we add the average or characteristic distance
d, defined as the arithmetic mean of all distances in a graph. Let G = (V, E) be a simple
graph with n = |V | and m = |E|, where G can be either directed or undirected. Then
246                                                                 Chapter 10. Random Graphs




          ·10−2


      6
                                                 10−1.5


      4

                                                  10−2
      2



              20    40   60    80   100    120        100                   101                   102

                   (a) Linear scaling.                       (b) Log-log scaling.

Figure 10.2: Degree distribution of the neural network of the Caenorhabditis elegans.
The network is a directed, not strongly connected, weighted graph with 297 vertices
and 2,359 edges. The horizontal axis represents degree; the vertical axis represents the
probability that a vertex from the network has the corresponding degree. The degree
distribution is derived from dataset by Watts and Strogatz [199] and White et al. [200].




      0.3
                                                  10−1


      0.2
                                                  10−2


      0.1
                                                  10−3



                    5         10          15          100   100.2   100.4   100.6   100.8   101   101.2

                   (a) Linear scaling.                        (b) Log-log scaling.

Figure 10.3: Degree distribution of the Western States Power Grid of the United States.
The network is an undirected, connected, unweighted graph with 4,941 vertices and 6,594
edges. The horizontal axis represents degree; the vertical axis represents the probability
that a vertex from the network has the corresponding degree. The degree distribution is
derived from dataset by Watts and Strogatz [199].
10.1. Network statistics                                                                         247

                                                           10−1
        0.12

         0.1
                                                           10−2
     8 · 10−2

     6 · 10−2                                              10−3

     4 · 10−2

     2 · 10−2                                              10−4

           0
                0   50    100    150      200   250           100          101             102

                    (a) Linear scaling.                             (b) Log-log scaling.

Figure 10.4: Degree distribution of the network of co-authorships between scientists
posting preprints on the condensed matter eprint archive at http://arxiv.org/archive/
cond-mat. The network is a weighted, disconnected, undirected graph having 40,421
vertices and 175,693 edges. The horizontal axis represents degree; the vertical axis
represents the probability that a vertex from the co-authorship network has the corre-
sponding degree. The degree distribution is derived from the 2005 update of the dataset
by Newman [156].

G has size at most n(n − 1) because for any distinct vertex pair u, v ∈ V we count the
edge from u to v and the edge from v to u. The characteristic distance of G is defined
by
                                        1     X
                            d(G) =                 d(u, v)
                                   n(n − 1) u6=v∈V

where the distance function            d is given by
                      
                      
                       ∞,              if there is no path from u to v,
                      
             d(u, v) = 0,               if u = v,
                      
                      
                      
                        k,              where k is the length of a shortest u-v path.

    If G is strongly connected (respectively, connected for the undirected case) then our
distance function is of the form d : V × V −→ Z+ ∪ {0}, where the codomain is the
set of nonnegative integers. The case where G is not strongly connected (respectively,
disconnected for the undirected version) requires special care. One way is to compute
the characteristic distance for each component and then find the average of all such
characteristic distances. Call the resulting characteristic distance dc , where c means
component. Another way is to assign a large number as the distance of non-existing
shortest paths. If there is no u-v path, we let d(u, v) = n because n = |V | is larger than
the length of any shortest path between connected vertices. The resulting characteristic
distance is denoted db , where b means big number. Furthermore denote by dκ the number
of pairs (u, v) such that v is not reachable from u. For example, the Zachary [209] karate
club network has d = 2.4082 and dκ = 0; the C. elegans neural network [199, 200]
has db = 71.544533, dc = 3.991884, and dκ = 20, 268; the Western States Power Grid
network [199] has d = 18.989185 and dκ = 0; and the condensed matter co-authorship
network [156] has db = 7541.74656, dc = 5.499329, and dκ = 152, 328, 281.
248                                                                     Chapter 10. Random Graphs

    We can also define the concept of distance distribution similar to how the degree
distribution was defined in section 10.1.1. If ` is a positive integer with u and v being
connected vertices in a graph G = (V, E), denote by
                                              p = Pr[d(u, v) = `]                                                (10.2)
the fraction of ordered pairs of connected vertices in V × V having distance ` between
them. As is evident from the above notation, we can think of (10.2) as the probability
that a uniformly chosen connected pair (u, v) of vertices in G has distance `. The distance
distribution of G is hence a histogram of the distances between pairs of vertices in G.
Figure 10.5 illustrates distance distributions of various real-world networks.

                                                          0.3

   0.4

                                                          0.2
   0.3


   0.2
                                                          0.1

   0.1


                                                           0
         1          2        3         4           5            2       4        6       8       10        12    14
         (a) Zachary karate club network [209].             (b) C. elegans neural network [199, 200].

       ·10−2
                                                          0.3
   5

   4
                                                          0.2
   3

   2
                                                          0.1

   1

   0                                                       0
               10       20       30          40                 2   4       6        8   10     12    14    16   18
             (c) Power grid network [199].              (d) Condensed           matter        co-authorship      net-
                                                        work [156].

Figure 10.5: Distance distributions for various real-world networks. The horizontal axis
represents distance and the vertical axis represents the probability that a uniformly
chosen pair of distinct vertices from the network has the corresponding distance between
them.


10.2           Binomial random graph model
In 1959, Gilbert [85] introduced a random graph model that now bears the name bino-
mial (or Bernoulli ) random graph model. First, we fix a positive integer n, a probability
10.2. Binomial random graph model                                                          249

 Algorithm 10.1: Generate a random graph in G(n, p).
  Input: Positive integer n and a probability 0 < p < 1.
  Output: A random graph from G(n, p).
 1   G ← Kn
 2   V ← {0, 1, . . . , n − 1}
 3   E ← {2-combinations of V }
 4   for each e ∈ E do
 5      r ← draw uniformly at random from interval (0, 1)
 6      if r < p then
 7          add edge e to G
 8   return G


p, and a vertex set V = {0, 1, . . . , n − 1}. By G(n, p) we mean a probability space over
the set of undirected simple graphs on n vertices. If G is any element of the probability
space G(n, p) and ij is any edge for distinct i, j ∈ V , then ij occurs as an edge of G
independently with probability p. In symbols, for any distinct pair i, j ∈ V we have
                                     Pr[ij ∈ E(G)] = p
where all such events are mutually independent. Any graph G drawn uniformly at
random from G(n, p) is a subgraph of the complete graph Kn and it follows from (1.6)
that G has at most n2 edges. Then the probability that G has m edges is given by
                                                 n
                                      pm (1 − p)( 2 )−m .                               (10.3)
Notice the resemblance of (10.3) to the binomial distribution. By G ∈ G(n, p) we mean
that G is a random graph of the space G(n, p) and having size distributed as (10.3).
    To generate a random graph in G(n, p), start with G being a graph on n vertices but
                           G is Kn , the complement of the complete graph on n vertices.
no edges. That is, initially
Consider each of the n2 possible edges in some order and add it independently to G
with probability p. See Algorithm 10.1 for pseudocode of the procedure. The runtime
of Algorithm 10.1 depends on an efficient algorithm for generating all 2-combinations of
a set of n objects. We could adapt Algorithm 4.22 to our needs or search for a more
efficient algorithm; see problem 10.3 for discussion of an algorithm to generate a graph
in G(n, p) in quadratic time. Figure 10.6 illustrates some random graphs from G(25, p)
with p = i/6 for i = 0, 1, . . . , 5. See Figure 10.7 for results for graphs in G(2 · 104 , p).
    The expected number of edges of any G ∈ G(n, p) is
                                                  
                                                  n       pn(n − 1)
                              α = E[|E|] = p ·         =
                                                   2          2
and the expected total degree is
                                               
                                               n
                          β = E[# deg] = 2p ·     = pn(n − 1).
                                               2
Then the expected degree of each edge is p(n − 1). From problem 1.7 we know that the
number of undirected simple graphs on n vertices is given by
                                          2n(n−1)/2
250                                                                Chapter 10. Random Graphs

where (10.3) is the probability of any of these graphs being the output of the above
procedure. Let κ(n, m) be the number of graphs from G(n, p) that are connected and
have size m, and by Pr[Gκ ] is meant the probability that G ∈ G(n, p) is connected. Apply
expression (10.3) to see that

                                      (n2 )
                                      X                            n
                          Pr[Gκ ] =           κ(n, i) · pi (1 − p)( 2 )−i
                                      i=n−1


where n − 1 is the least number of edges of any undirected connected graph on n vertices,
i.e. the size of any spanning tree of a connected graph in G(n, p). Similarly define
Pr[κij ] to be the probability that two distinct vertices i, j of G ∈ G(n, p) are connected.
Gilbert [85] showed that as n −→ ∞, then we have

                                Pr[Gκ ] ∼ 1 − n(1 − p)n−1

and
                                Pr[κij ] ∼ 1 − 2(1 − p)n−1 .


 Algorithm 10.2: Random oriented graph via G(n, p).
  Input: Positive integer n and probability 0 < p < 1.
  Output: A random oriented graph on n vertices.
 1   G ← random graph in G(n, p) as per Algorithm 10.3
 2   E ← edge set of G
 3   G ← directed version of G
 4   cutoff ← draw uniformly at random from interval (0, 1)
 5   for each edge uv ∈ E do
 6      r ← draw uniformly at random from interval (0, 1)
 7      if r < cutoff then
 8          remove uv from G
 9      else
10          remove vu from G
11   return G



Example 10.1. Consider a digraph D = (V, E) without self-loops or multiple edges.
Then D is said to be oriented if for any distinct pair u, v ∈ V at most one of uv, vu is
an edge of D. Provide specific examples of oriented graphs.

Solution. If u, v ∈ V is any pair of distinct vertices of an oriented graph D = (V, E), we
have various possibilities:

     1. uv ∈
           / E and vu ∈
                      / E.

     2. uv ∈ E and vu ∈
                      / E.

     3. uv ∈
           / E and vu ∈ E.
10.2. Binomial random graph model                                                     251




  (a) p = 0; α = 0, |E| = 0; β = 0, # deg = 0   (b) p = 1/6; α = 50, |E| = 44; β = 100,
                                                # deg = 88




(c) p = 1/3; α = 100, |E| = 108; β = 200,       (d) p = 1/2; α = 150, |E| = 156; β = 300,
# deg = 212                                     # deg = 312




(e) p = 2/3; α = 200, |E| = 185; β = 400,       (f) p = 5/6; α = 250, |E| = 255; β = 500,
# deg = 370                                     # deg = 510

         Figure 10.6: Binomial random graphs G(25, p) for various values of p.
252                                                             Chapter 10. Random Graphs

                                 ·108
                             4
                                        α
                                        β
                             3          α̂
                                        β̂

                             2



                             1



                             0
                                 0      0.2   0.4   0.6   0.8     1


Figure 10.7: Comparison of expected and experimental values of the number of edges
and total degree of random simple undirected graphs in G(n, p). The horizontal axis
represents probability points; the vertical axis represents the size and total degree (ex-
pected or experimental). Fix n = 20, 000 and consider r = 50 probability points chosen
as follows. Let pmin = 0.000001, pmax = 0.999999, and F = (pmax /pmin )1/(r−1) . For
i = 1, 2, . . . , r = 50 the i-th probability point pi is defined by pi = pmin F i−1 . Each
experiment consists in generating M = 500 random graphs from G(n, pi ). For each
Gi ∈ G(n, pi ), where i = 1, 2, . . . , 500, compute its actual size αi and actual total degree
βi . Then take the mean α̂ of the αi and the mean β̂ of the βi .


Let n > 0 be the number of vertices in D and let 0 < p < 1. Generate a random
oriented graph as follows. First we generate a binomial random graph G ∈ G(n, p) where
G is simple and undirected. Then we consider the digraph version of G and proceed to
randomly prune either uv or vu from G, for each distinct pair of vertices u, v. Refer to
Algorithm 10.2 for pseudocode of our discussion. A Sage implementation follows:
sage :   G = graphs . RandomGNP (20 , 0.1)
sage :   E = G . edges ( labels = False )
sage :   G = G . to_directed ()
sage :   cutoff = 0.5
sage :   for u , v in E :
...          r = random ()
...          if r < cutoff :
...                G . delete_edge (u , v )
...          else :
...                G . delete_edge (v , u )

which produced the random oriented graph in Figure 10.8.



Efficient generation of sparse G ∈ G(n, p)

The techniques discussed so far (Algorithms 10.1 and 10.9) for generating a random
graph from G(n, p) can be unsuitable when the number of vertices n is in the hundreds
of thousands or millions. In many applications of G(n, p) we are only interested in sparse
random graphs. A linear time algorithm to generate a random sparse graph from G(n, p)
is presented by Batagelj and Brandes [18].
    The Batagelj-Brandes algorithm for generating a random sparse graph G ∈ G(n, p)
uses what is known as a geometric method to skip over certain edges. Fix a probability
0 < p < 1 that an edge will be in the resulting random sparse graph G. If e is an edge
10.2. Binomial random graph model                                                       253




Figure 10.8: A random oriented graph generated using a graph in G(20, 0.1) and cutoff
probability 0.5.

of G, we can consider the events leading up to the choice of e as

                                          e1 , e2 , . . . , ek

where in the i-th trial the event ei is a failure, for 1 ≤ i < k, but the event ek is the
first success after k − 1 successive failures. In probabilistic terms, we perform a series
of independent trials each having success probability p and stop when the first success
occurs. Letting X be the number of trials required until the first success occurs, then X
is a geometric random variable with parameter p and probability mass function

                                  Pr[X = k] = p(1 − p)k−1                             (10.4)

for integers k ≥ 1, where
                                    ∞
                                    X
                                          p(1 − p)k−1 = 1.
                                    k=1

In other words, waiting times are geometrically distributed.
    Suppose we want to generate a random number from a geometric distribution, i.e. we
want to simulate X such that

                        Pr[X = k] = p(1 − p)k−1 ,                k = 1, 2, 3, . . .

Note that
                  X̀
                        Pr[X = k] = 1 − Pr[X > ` − 1] = 1 − (1 − p)`−1 .
                  k=1

In other words, we can simulate a geometric random variable by generating r uniformly
at random from the interval (0, 1) and set X to that value of k for which

                             1 − (1 − p)k−1 < r < 1 − (1 − p)k
254                                                        Chapter 10. Random Graphs

or equivalently for which

                             (1 − p)k < 1 − r < (1 − p)k−1

where 1 − r and r are both uniformly distributed. Thus we can define X by

                             X = min{k | (1 − p)k < 1 − r}
                                                        
                                               ln(1 − r)
                               = min k k >
                                               ln(1 − p)
                                               
                                      ln(1 − r)
                               =1+                .
                                      ln(1 − p)

That is, we can choose k to be
                                                     
                                        ln(1 − r)
                                  k =1+
                                        ln(1 − p)

which is used as a basis of Algorithm 10.3. In the latter algorithm, note that the vertex
set is V = {0, 1, . . . , n − 1} and candidate edges are generated in lexicographic order.
The Batagelj-Brandes Algorithm 10.3 has worst-case runtime O(n + m), where n and m
are the order and size, respectively, of the resulting graph.

 Algorithm 10.3: Linear generation of a random sparse graph in G(n, p).
  Input: Positive integer n and a probability 0 < p < 1.
  Output: A random sparse graph from G(n, p).
 1   G ← Kn
 2   u←1
 3   v ← −1
 4   while u < n do
 5      r ← draw uniformly at random from interval (0, 1)
 6      v ← v + 1 + bln(1 − r)/ ln(1 − p)c
 7      while v ≥ u and u < n do
 8          v ←v−u
 9          u←u+1
10      if u < n then
11          add edge uv to G
12   return G



Degree distribution
Consider a random graph G ∈ G(n, p) and let v be a vertex of G. With probability p, the
vertex v is incident with each of the remaining n − 1 vertices in G. Then the probability
that v has degree k is given by the binomial distribution
                                                
                                            n−1 k
                         Pr[deg(v) = k] =          p (1 − p)n−1−k                 (10.5)
                                              k
10.3. Erdős-Rényi model                                                             255

and the expected degree of v is E[deg(v)] = p(n − 1). Setting z = p(n − 1), we can
express (10.5) as
                                          k        n−1
                                 n−1     z           z
               Pr[deg(v) = k] =                  1−
                                  k    n−1−z        n−1

and thus
                                                   zk
                            Pr[deg(v) = k] −→         exp(−z)
                                                   k!
as n −→ ∞. In the limit of large n, the probability that vertex v has degree k approaches
the Poisson distribution. That is, as n gets larger and larger any random graph in G(n, p)
has a Poisson degree distribution.


10.3       Erdős-Rényi model
Let N be a fixed nonnegative integer. The Erdős-Rényi [72, 73] (or uniform) random
graph model, denoted G(n, N ), is a probability space over the set of undirected simple
graphs on n vertices and exactly N edges. Hence G(n, N ) can be considered as a collection
    n 
of ( 2 ) undirected simple graphs on exactly N edges, each such graph being selected with
    N
equal probability. A note of caution is in order here. Numerous papers on random graphs
refer to G(n, p) as the Erdős-Rényi random graph model, where in fact this binomial
random graph model should be called the Gilbert model in honor of E. N. Gilbert who
introduced [85] it in 1959. Whenever a paper makes a reference to the Erdős-Rényi
model, one should question whether the paper is referring to G(n, p) or G(n, N ).
    To generate a graph in G(n, N ), start  with G being a graph on n vertices but no
                                         n
edges. Then choose N of the possible 2 edges independently and uniformly at random
and let the chosen edges be the edge set of G. Each graph G ∈ G(n, N ) is associated
with a probability
                                            n
                                         1      2
                                               N
                                                                                      
of being the graph resulting from the above procedure. Furthermore each of the n2
edges has a probability                      
                                               n
                                          1
                                               2
of being chosen. Algorithm 10.4 presents a straightforward translation of the above
procedure into pseudocode.
    The runtime of Algorithm 10.4 is probabilistic and can be analyzed via the geometric
distribution. If i is the number of edges chosen so far, then the probability of choosing
a new edge in the next step is             
                                          n
                                          2 
                                             −i
                                            n   .
                                            2

We repeatedly choose an edge uniformly at random from the collection of all possible
edges, until we come across the first edge that is not already in the graph. The number
of trials required until the first new edge is chosen can be modeled using the geometric
distribution with probability mass function (10.4). Given a geometric random variable
256                                                                                  Chapter 10. Random Graphs

 Algorithm 10.4: Generation of random graph in G(n, N ).
                                                                                       n
                                                                                        
     Input: Positive integer n and integer N with 0 ≤ N ≤                              2
                                                                                            .
     Output: A random graph from G(n, N ).
 1   G←K
       nn                           o
 2   E ← e0 , e1 , . . . , e(n)−1
                            2

 3   for i ← 0, 1, . . . , N − 1 do                      
 4      r ← draw uniformly at random from 0, 1, . . . , n2 − 1
 5      while er is an edge of G do                          
 6          r ← draw uniformly at random from 0, 1, . . . , n2 − 1
 7      add edge er to G
 8   return G


X, we have the expectation
                                                ∞
                                                X                    1
                                    E[X] =          n · p(1 − p)n−1 = .
                                                n=1
                                                                     p

Therefore the expected number of trials until a new edge be chosen is
                                            n
                                              
                                           2
                                         n
                                         2
                                             −i

from which the expected total runtime is
                                N                      Z           
                                X          n                N       n
                                          2                       2
                                        n           ≈           n            dx
                                i=1     2
                                            −   i       0       2
                                                                     −   x
                                                                           
                                                                             n
                                                       n                     2
                                                    =     · ln           n
                                                                                    +C
                                                       2                 2
                                                                             −   N
                                                                                   
for some constant C. The denominator in the latter fraction becomes zero when n2 = N ,
which can be prevented by adding one to the denominator. Then we have the expected
total runtime                                                 !
                        XN       n                          n
                                             n
                              n
                                2   ∈Θ           · ln n 2
                        i=1 2
                                  −i         2         2
                                                         −N +1
                                                                      
which is O(N ) when N ≤ n2 /2, and O(N ln N ) when N = n2 . In other words,
Algorithm 10.4 has expected nlinear
                                    runtime when the number N of required edges satisfies
       n
N ≤ 2 /2. But for N > 2 /2, we obtain expected           linear runtime by generating the
                                              n
complete graph Kn and randomly delete 2 − N edges from the latter graph. Our
discussion is summarized in Algorithm 10.5.
10.4. Small-world networks                                                                257

 Algorithm 10.5: Generation of random graph in G(n, N ) in expected linear time.
                                                           
   Input: Positive integer n and integer N with 0 ≤ N ≤ n2 .
   Output: A random graph from G(n, N ).
           n
             
 1 if N ≤     /2 then
           2
 2    return result of Algorithm 10.4
 3 G ← Kn
                         n
                           
 4 for i ← 1, 2, . . . ,     − N do
                         2
 5    e ← draw uniformly at random from E(G)
 6    remove edge e from G
 7 return G




10.4       Small-world networks
    Vicky: Hi, Janice.
   Janice: Hi, Vicky.
    Vicky: How are you?
   Janice: Good.
    Harry: You two know each other?
   Janice: Yeah, I met Vicky at the mall today.
    Harry: Well, what a small world! You know, I wonder who else I know knows someone I
           know that I don’t know knows that person I know.
     — from the TV series Third Rock from the Sun, season 5, episode 22, 2000.


Many real-world networks exhibit the small-world effect: that most pairs of distinct
vertices in the network are connected by relatively short path lengths. The small-world
effect was empirically demonstrated [150] in a famous 1960s experiment by Stanley Mil-
gram, who distributed a number of letters to a random selection of people. Recipients
were instructed to deliver the letters to the addressees on condition that letters must be
passed to people whom the recipients knew on a first-name basis. Milgram found that
on average six steps were required for a letter to reach its target recipient, a number now
immortalized in the phrase “six degrees of separation” [92]. Figure 10.9 plots results of
an experimental study of the small-world problem as reported in [187]. The small-world
effect has been studied and verified for many real-world networks including

   ˆ social: collaboration network of actors in feature films [7,199], scientific publication
     authorship [47, 91, 155, 156];

   ˆ information: citation network [168], Roget’s Thesaurus [122], word co-occurrence [62,
     76];

   ˆ technological: internet [51, 75], power grid [199], train routes [174], software [157,
     190];

   ˆ biological: metabolic network [111], protein interactions [110], food web [107, 143],
     neural network [199, 200].
258                                                                           Chapter 10. Random Graphs

                                      15




                                      10



                          frequency    5




                                       0
                                           0     2        4       6       8       10
                                                     number of intermediaries

Figure 10.9: Frequency distribution of the number of intermediaries required for letters
to reach their intended addressees. The distribution has a mean of 5.3, interpreted as the
average number of intermediaries required for a letter to reach its intended destination.
The plot is derived from data reported in [187].

    Watts and Strogatz [196, 197, 199] proposed a network model that produces graphs
exhibiting the small-world effect. We will use the notation “” to mean “much greater
than”. Let n and k be positive integers such that n  k  ln n  1 (in particular,
0 < k < n/2) with k being even. Consider a probability 0 < p < 1. Starting from
an undirected k-circulant graph G = (V, E) on n vertices, the Watts-Strogatz model
proceeds to rewire each edge with probability p. The rewiring procedure, also called
edge swapping, works as follows. Let V be uniformly distributed. For each v ∈ V , let
e ∈ E be an edge having v as an endpoint. Choose another u ∈ V different from v. With
probability p, delete the edge e and add the edge vu. The rewiring must produce a simple
graph with the same order and size as G. As p −→ 1, the graph G goes from k-circulant
to exhibiting properties of graphs drawn uniformly from G(n, p). Small-world networks
are intermediate between k-circulant and binomial random graphs (see Figure 10.10).
The Watts-Strogatz model is said to provide a procedure for interpolating between the
latter two types of graphs.




      (a) p = 0, k-circulant                   (b) p = 0.3, small-world                (c) p = 1, random

Figure 10.10: With increasing randomness, k-circulant graphs evolve to exhibit prop-
erties of random graphs in G(n, p). Small-world networks are intermediate between
k-circulant graphs and random graphs in G(n, p).
10.4. Small-world networks                                                               259

   The last paragraph contains an algorithm for rewiring edges of a graph. While the
algorithm is simple, in practice it potentially skips over a number of vertices to be
considered for rewiring. If G = (V, E) is a k-circulant graph on n vertices and p is the
rewiring probability, the candidate vertices to be rewired follow a geometric distribution
with parameter p. This geometric trick, essentially the same speed-up technique used by
the Batagelj-Brandes Algorithm 10.3, can be used to speed up the rewiring algorithm.
To elaborate, suppose G has vertex set V = {0, 1, . . . , n − 1}. If r is chosen uniformly at
random from the interval (0, 1), the index of the vertex to be rewired can be obtained
from                                               
                                          ln(1 − r)
                                    1+                .
                                          ln(1 − p)
The above geometric method is incorporated into Algorithm 10.6 to generate a Watts-
Strogatz network in worst-case runtime O(nk +m), where n and k are as per the input of
the algorithm and m is the size of the k-circulant graph on n vertices. Note that lines 7
to 12 are where we avoid self-loops and multiple edges.

 Algorithm 10.6: Watts-Strogatz network model.
  Input: Positive integer n denoting the number of vertices. Positive even integer k
          for the degree of each vertex, where n  k  ln n  1. In particular, k
          should satisfy 0 < k < n/2. Rewiring probability 0 < p ≤ 1.
  Output: A Watts-Strogatz network on n vertices.
 1   M ← nk       /* sum of all vertex degrees = twice number of edges */
 2   r ← draw uniformly at random from interval (0, 1)
 3   v ← 1 + bln(1 − r)/ ln(1 − p)c
 4   E ← contiguous edge list of k-circulant graph on n vertices
 5   while v ≤ M do
 6      u ← draw uniformly at random from [0, 1, . . . , n − 1]
 7      if v − 1 is even then
 8          while E[v] = u or (u, E[v]) ∈ E do
 9             u ← draw uniformly at random from [0, 1, . . . , n − 1]
10      else
11          while E[v − 2] = u or (E[v − 2], u) ∈ E do
12             u ← draw uniformly at random from [0, 1, . . . , n − 1]
13      E[v − 1] ← u
14      r ← draw uniformly at random from interval (0, 1)
15      v ← v + 1 + bln(1 − r)/ ln(1 − p)c
16   G ← Kn
17   add edges in E to G
18   return G



Characteristic path length
Watts and Strogatz [199] analyzed the structure of networks generated by Algorithm 10.6
via two quantities: the characteristic path length ` and the clustering coefficient C. The
characteristic path length quantifies the average distance between any distinct pair of
vertices in a Watts-Strogatz network. The quantity `(G) is thus said to be a global
260                                                                Chapter 10. Random Graphs

property of G. Watts and Strogatz characterized as small-world those networks that
exhibit high clustering coefficients and low characteristic path lengths.
    Let G = (V, E) be a Watts-Strogatz network as generated by Algorithm 10.6, where
the vertex set is V = {0, 1, . . . , n − 1}. For each pair of vertices i, j ∈ V , let dij be the
distance from i to j. If there is no path from i to j or i = j, set dij = 0. Thus
                  
                  
                   0, if there is no path from i to j,
                  
            dij = 0, if i = j,
                  
                  
                  
                    k, where k is the length of a shortest path from i to j.
Since G is undirected, we have dij = dji . Consequently when computing the distance
between each distinct pair of vertices, we should avoid double counting by computing dij
for i < j. Then the characteristic path length of G is defined by
                                            1        1X
                              `(G) =               ·     dij
                                       n(n − 1)/2 2 i6=j
                                                X                                 (10.6)
                                           1
                                    =                dij
                                       n(n − 1) i6=j

which is averaged over all possible pairs of distinct vertices, i.e. the number of edges in
the complete graph Kn .
   It is inefficient to compute the characteristic path length via equation (10.6) because
we would effectively sum n(n − 1) distance values. As G is undirected, note that
                                1X           X         X
                                       dij =     dij =     dij .
                                2 i6=j       i<j       i>j

The latter equation holds for the following reason. Let D = [dij ] be a matrix of distances
for G, where i is the row index, j is the column index, and dij is the distance from i to j.
The required sum of distances can be obtained by summing all entries above (or below)
the main diagonal of D. Therefore the characteristic path length can be expressed as
                                              2     X
                                  `(G) =                dij
                                           n(n − 1) i<j

                                                   2     X
                                         =                   dij
                                                n(n − 1) i>j

which requires summing n(n−1)
                            2
                                distance values.
    Let G = (V, E) be a Watts-Strogatz network with n = |V |. Set k 0 = k/2, where k
is as per Algorithm 10.6. As the rewiring probability p −→ 0, the average path length
tends to
                                           n     n
                                    ` −→ 0 =        .
                                          4k     2k
In the special case p = 0, we have
                                                n(n + k − 2)
                                      `=                     .
                                                 2k(n − 1)
                                       ln n
However as p −→ 1, we have ` −→        ln k
                                            .
10.4. Small-world networks                                                               261

Clustering coefficient

The clustering coefficient of a simple graph G quantifies the “cliquishness” of vertices
in G = (V, E). This quantity is thus said to be a local property of G. Watts and
Strogatz [199] defined the clustering coefficient as follows. Suppose n = |V | > 0 and let ni
count the number of neighbors of vertex i ∈ V , a quantity that is equivalent to the degree
of i, i.e. deg(i) = ni . The complete graph Kni on the ni neighbors of i has ni (ni − 1)/2
edges. The neighbor graph Ni of i is a subgraph of G, consisting of all vertices (6= i) that
are adjacent to i and preserving the adjacency relation among those vertices as found in
the supergraph G. For example, given the graph in Figure 10.11(a) the neighbor graph
of vertex 10 is shown in Figure 10.11(b). The local clustering coefficient Ci of i is the
ratio
                                                 Ni
                                     Ci =
                                           ni (ni − 1)/2

where Ni counts the number of edges in Ni . In case i has degree deg(i) < 2, we set the
local clustering coefficient of i to be zero. Then the clustering coefficient of G is defined
by
                                     1X         1X          Ni
                           C(G) =          Ci =                     .
                                     n i∈V      n i∈V ni (ni − 1)/2



                              3        2                  3

                          4                1                          1



                      5           10           0



                          6                9        6

                              7        8                  7     8

                     (a) Graph on 11 vertices.            (b) N10

                      Figure 10.11: The neighbor graph of a vertex.

   Consider the case where we have a k-circulant graph G = (V, E) on n vertices and a
rewiring probability p = 0. That is, we do not rewire any edge of G. Each vertex of G has
degree k. Let k 0 = k/2. Then the k neighbors of each vertex in G has 3k 0 (k 0 − 1)/2 edges
between them, i.e. each neighbor graph Ni has size 3k 0 (k 0 − 1)/2. Then the clustering
coefficient of G is
                                        3(k 0 − 1)
                                                    .
                                        2(2k 0 − 1)

When the rewiring probability is p > 0, Barrat and Weigt [17] showed that the clustering
coefficient of any graph G0 in the Watts-Strogatz network model (see Algorithm 10.6)
can be approximated by
                                   0    3(k 0 − 1)
                              C(G ) ≈        0
                                                   (1 − p)3 .
                                        2(2k − 1)
262                                                          Chapter 10. Random Graphs

Degree distribution
For a Watts-Strogatz network without rewiring, each vertex has the same degree k. It
easily follows that for each vertex v, we have the degree distribution
                                              (
                                                1, if i = k,
                             Pr[deg(v) = i] =
                                                0, otherwise.

    A rewiring probability p > 0 introduces disorder in the network and broadens the
degree distribution, while the expected degree is k. A k-circulant graph on n vertices
has nk/2 edges. With the rewiring probability p > 0, a total of pnk/2 edges would
be rewired. However note that only one endpoint of an edge is rewired, thus after the
rewiring process the degree of any vertex v is deg(v) ≥ k/2. Therefore with k > 2, a
Watts-Strogatz network has no isolated vertices.
    For p > 0, Barrat and Weigt [17] showed that the degree of a vertex v can be written
as deg(v) = k/2 + ni with ni ≥ 0, where ni can be divided into two parts α and β as
follows. First α ≤ k/2 edges are left intact after the rewiring process, the probability of
this occurring is 1 − p for each edge. Second β = ni − α edges have been rewired towards
i, each with probability 1/n. The probability distribution of α is
                                            
                                          k/2
                               P1 (α) =        (1 − p)α pk/2−α
                                           α
and the probability distribution of β is
                                          β       pnk/2−β
                                  pnk/2     1        1
                       P2 (β) =                   1−
                                     β      n        n
where
                                      (pk/2)β
                               P2 (β) −→       exp(−pk/2)
                                         β!
for large n. Combine the above two factors to obtain the degree distribution
                         min{κ−k/2, k/2}   
                              X          k/2                 (pk/2)κ−k/2−i
      Pr[deg(v) = κ] =                       (1 − p)i pk/2−i                exp(−pk/2)
                              i=0
                                          i                  (κ − k/2 − i)!

for κ ≥ k/2.


10.5      Scale-free networks
The networks covered so far—Gilbert G(n, p) model, Erdős-Rényi G(n, N ) model, Watts-
Strogatz small-world model—are static. Once a network is generated from any of these
models, the corresponding model does not specify any means for the network to evolve
over time. Barabási and Albert [14] proposed a network model based on two ingredients:
  1. Growth: at each time step, a new vertex is added to the network and connected
     to a pre-determined number of existing vertices.

  2. Preferential attachment: the newly added vertex is connected to an existing vertex
     in proportion to the latter’s existing degree.
10.5. Scale-free networks                                                                263

Preferential attachment also goes by the colloquial name of the “rich-get-richer” effect
due to the work of Herbert Simon [179]. In sociology, preferential attachment is known
as the Matthew effect due to the following verse from the Book of Matthew, chapter 25
verse 29, in the Bible: “For to every one that hath shall be given but from him that
hath not, that also which he seemeth to have shall be taken away.” Barabási and Albert
observed that many real-world networks exhibit statistical properties of their proposed
model. One particularly significant property is that of power-law scaling, hence the
Barabási-Albert model is also called a model of scale-free networks. Note that it is only
the degree distributions of scale-free networks that are scale-free. In their empirical study
of the World Wide Web (WWW) and other real-world networks, Barabási and Albert
noted that the probability that a web page increases in popularity is directly proportional
to the page’s current popularity. Thinking of a web page as a vertex and the degree of a
page as the number of other pages that the current page links to, the degree distribution
of the WWW follows a power law function. Power-law scaling has been confirmed for
many real-world networks:

   ˆ actor collaboration network [14]

   ˆ citation [60, 168, 173] and co-authorship networks [156]

   ˆ human sexual contacts network [113, 138]

   ˆ the Internet [51, 75, 191] and the WWW [6, 16, 39]

   ˆ metabolic networks [110, 111]

   ˆ telephone call graphs [3, 4]

Figure 10.12 illustrates the degree distributions of various real-world networks, plotted
on log-log scales. Corresponding distributions for various simulated Barabási-Albert
networks are illustrated in Figure 10.13.
     But how do we generate a scale-free graph as per the description in Barabási and
Albert [14]? The original description of the Barabási-Albert model as contained in [14]
is rather ambiguous with respect to certain details. First, the whole process is supposed
to begin with a small number of vertices. But as the degree of each of these vertices
is zero, it is unclear how the network is to grow via preferential attachment from the
initial pool of vertices. Second, Barabási and Albert neglected to clearly specify how to
select the neighbors for the newly added vertex. The above ambiguities are resolved by
Bollobás et al. [30], who gave a precise statement of a random graph process that realizes
the Barabási-Albert model. Fix a sequence of vertices v1 , v2 , . . . and consider the case
where each newly added vertex is to be connected to m = 1 vertex already in a graph.
Inductively define a random graph process (Gt1 )t≥0 as follows, where Gt1 is a digraph on
{vi | 1 ≤ i ≤ t}. Start with the null graph G01 or the graph G11 with one vertex and one
self-loop. Denote by degG (v) the total (in and out) degree of vertex v in the graph G.
For t > 1 construct Gt1 from Gt−11   by adding the vertex vt and a directed edge from vt to
vi , where i is randomly chosen with probability
                                (
                                 degGt−1
                                     1
                                         (vs )/(2t − 1), if 1 ≤ s ≤ t − 1,
                  Pr[i = s] =
                                 1/(2t − 1),             if s = t.
264                                                                    Chapter 10. Random Graphs




      10−1
                                                         10−1
      10−2
                                                         10−2
        −3
      10
                                                         10−3
      10−4
                                                         10−4
      10−5

                                                         10−5
      10−6

           100               101         102                100        101       102        103
                 (a) US patent citation network.                    (b) Google web graph.

      10−1                                               10−2

      10−2
                                                         10−3
      10−3

      10−4
                                                         10−4

      10−5

                                                         10−5
      10−6

           100         101         102    103      104      100        101       102        103
             (c) LiveJournal friendship network.                (d) Actor collaboration network.

Figure 10.12: Degree distributions of various real-world networks on log-log scales. The
horizontal axis represents degree and the vertical axis is the corresponding probability of
a vertex having that degree. The US patent citation network [136] is a directed graph on
3, 774, 768 vertices and 16, 518, 948 edges. It covers all citations made by patents granted
between 1975 and 1999. The Google web graph [137] is a digraph having 875, 713 vertices
and 5, 105, 039 edges. This dataset was released in 2002 by Google as part of the Google
Programming Contest. The LiveJournal friendship network [10, 137] is a directed graph
on 4, 847, 571 vertices and 68, 993, 773 edges. The actor collaboration network [14], based
on the Internet Movie Database (IMDb) at http://www.imdb.com, is an undirected graph
on 383, 640 vertices and 16, 557, 920 edges. Two actors are connected to each other if
they have starred in the same movie. In all of the above degree distributions, self-loops
are not taken into account and, where a graph is directed, we only consider the in-degree
distribution.
10.5. Scale-free networks                                                                                                265




    10−1                                                             10−1


                                                                     10−2
    10−2

                                                                     10−3
    10−3
                                                                     10−4

    10−4
                                                                     10−5


    10−5 0                                                           10−6 0
       10         101            102        103            104          10     101      102         103     104    105
                  (a) n = 105 vertices                                              (b) n = 106 vertices

    10−1                                                             10−1

    10−2                                                             10−2

    10−3                                                             10−3

    10−4                                                             10−4

                                                                     10−5
    10−5
                                                                     10−6
    10−6
                                                                     10−7
    10−7 0        1          2         3    4          5         6
       10    10         10       10        10     10        10          100   101     102     103     104    105   106
                  (c) n = 107 vertices                                         (d) n = 2 · 107 vertices

Figure 10.13: Degree distributions of simulated graphs in the classic Barabási-Albert
model. The horizontal axis represents degree; the vertical axis is the corresponding
probability of a vertex having a particular degree. Each generated graph is directed and
has minimum out-degree m = 5. The above degree distributions are only for in-degrees
and do not take into account self-loops.
266                                                                  Chapter 10. Random Graphs

The latter process generates a forest. For m > 1 the graph evolves as per the case
m = 1; i.e. we add m edges from vt one at a time. This process can result in self-
                                           n
loops and multiple edges. We write Gm         for the collection of all graphs on n vertices
                                                                                        n
and minimal degree m in the Barabási-Albert model, where a random graph from Gm          is
            n     n
denoted Gm ∈ Gm .
    Now consider the problem of translating the above procedure into pseudocode. Fix a
positive integer n > 1 for the number of vertices in the scale-free graph to be generated
via preferential attachment. Let m ≥ 1 be the number of vertices that each newly added
vertex is to be connected to; this is equivalent to the minimum degree that any new vertex
will end up possessing. At any time step, let M be the contiguous edge list of all edges
created thus far in the above random graph process. It is clear that the frequency (or
number of occurrences) of a vertex is equivalent to the vertex’s degree. We can thus use
M as a pool to sample in constant time from the degree-skewed distribution. Batagelj and
Brandes [18] used the latter observation to construct an algorithm for generating scale-
free networks via preferential attachment; pseudocode is presented in Algorithm 10.7.
Note that the algorithm has linear runtime O(n + m), where n is the order and m the
size of the graph generated by the algorithm.

 Algorithm 10.7: Scale-free network via preferential attachment.
  Input: Positive integer n > 1 and minimum degree d ≥ 1.
  Output: Scale-free network on n vertices.
 1   G ← Kn                      /* vertex set is V = {0, 1, . . . , n − 1} */
 2   M ← list of length 2nd
 3   for v ← 0, 1, . . . , n − 1 do
 4      for i ← 0, 1, . . . , d − 1 do
 5         M [2(vd + i)] ← v
 6         r ← draw uniformly at random from {0, 1, . . . , 2(vd + i)}
 7         M [2(vd + i) + 1] ← M [r]
 8   add edge (M [2i], M [2i + 1]) to G for i ← 0, 1, . . . , nd − 1
 9   return G

    On the evidence of computer simulation and various real-world networks, it was
suggested [14,15] that Pr[deg(v) = k] ∼ k −γ with γ = 2.9 ± 0.1. Letting n be the number
of vertices, Bollobás et al. [30] obtained Pr[deg(v) = k] asymptotically for all k ≤ n1/15
and showed as a consequence that γ = 3. In the process of doing so, Bollobás et al.
proved various results concerning the expected degree. Denote by #nm (k) the number of
vertices of Gnm with in-degree k (and consequently with total degree m + k). For the case
m = 1, we have the expectation
                                                               1
                                  E[degGt1 (vt )] = 1 +
                                                            2t − 1
and for s < t we have
                                          2t
                            E[degGt1 (vs )] =  E[degGt−1 (vs )].
                                        2t − 1       1


Taking the above two equations together, for 1 ≤ s ≤ n we have
                                          n
                                          Y       2i     4n−s+1 n!2 (2s − 2)!
                      E[degGn1 (vs )] =                =                      .
                                          i=s
                                                2i − 1     (2n)!(s − 1)!2
10.6. Problems                                                                                 267

Furthermore for 0 ≤ k ≤ n1/15 we have
                                               2m(m + 1)n
                       E[#nm (k)] ∼
                                      (k + m)(k + m + 1)(k + m + 2)
uniformly in k.
    As regards the diameter, with n as per Algorithm 10.7, computer simulation by
Barabási, Albert, and Jeong [6, 16] and heuristic arguments by Newman et al. [159]
suggest that a graph generated by the Barabási-Albert model has diameter approximately
ln n. As noted by Bollobás and Riordan [29], the approximation diam(Gnm ) ≈ ln n holds
for the case m = 1, but for m ≥ 2 they showed that as n −→ ∞ then diam(Gnm ) −→
ln / ln ln n.


10.6      Problems
     Where should I start? Start from the statement of the problem. What can I do? Visualize
     the problem as a whole as clearly and as vividly as you can.
     — G. Polya, from page 33 of [165]

10.1. Algorithm 10.8 presents a procedure to construct a random graph that is simple
      and undirected; the procedure is adapted from pages 4–7 of Lau [133]. Analyze the
      time complexity of Algorithm 10.8. Compare and contrast your results with that
      for Algorithm 10.5.

10.2. Modify Algorithm 10.8 to generate the following random graphs.

      (a) Simple weighted, undirected graph.
      (b) Simple digraph.
       (c) Simple weighted digraph.

10.3. Algorithm 10.1 can be considered as a template for generating random graphs in
      G(n, p). The procedure does not specify how to generate all the 2-combinations of
      a set of n > 1 objects. Here we discuss how to construct all such 2-combinations
      and derive a quadratic time algorithm for generating random graphs in G(n, p).

      (a) Consider a vertex set V = {0, 1, . . . , n − 1} with at least two elements and let
          E be the set of all 2-combinations of V , where each 2-combination is written
          ij. Show that ij ∈ E if and only if i < j.
      (b) From the previous exercise, we know that if 0 ≤ i < n − 1 then there are
          n − (i + 1) pairs jk where either i = j or i = k. Show that
                                        n−2
                                        X                 n2 − n
                                            (n − i − 1) =
                                        i=0
                                                             2

          and conclude that Algorithm 10.9 has worst-case runtime O((n2 − n)/2).

10.4. Modify the Batagelj-Brandes Algorithm 10.3 to generate the following types of
      graphs.

      (a) Directed simple graphs.
268                                                         Chapter 10. Random Graphs




 Algorithm 10.8: Random simple undirected graph.
  Input: Positive integers n and m specifying the order and size, respectively, of
          the output graph.
  Output: A random simple undirected graph with n vertices and m edges. If m
            exceeds the size of Kn , then Kn is returned.
 1   if n = 1 then
 2       return K1
 3   max ← n(n − 1)/2
 4   if m > max then
 5       return Kn
 6   G ← null graph
 7   A ← n × n adjacency matrix with entries aij
 8   aij ← False for 0 ≤ i, j < n
 9   i←0
10   while i < m do
11       u ← draw uniformly at random from {0, 1, . . . , n − 1}
12       v ← draw uniformly at random from {0, 1, . . . , n − 1}
13       if u = v then
14           continue with next iteration of loop
15       if u > v then
16           swap values of u and v
17       if auv = False then
18           add edge uv to G
19           auv ← True
20           i←i+1
21   return G




 Algorithm 10.9: Quadratic generation of a random graph in G(n, p).
  Input: Positive integer n and a probability 0 < p < 1.
  Output: A random graph from G(n, p).
 1   G ← Kn
 2   V ← {0, 1, . . . , n − 1}
 3   for i ← 0, 1, . . . , n − 2 do
 4      for j ← i + 1, i + 2, . . . , n − 1 do
 5          r ← draw uniformly at random from interval (0, 1)
 6          if r < p then
 7              add edge ij to G
 8   return G
10.6. Problems                                                       269




 Algorithm 10.10: Briggs’ algorithm for random graph in G(n, N ).
                                                             
   Input: Positive integers n and N such that 1 ≤ N ≤ n2 .
   Output: A random graph from G(n, N ).
             n
               
 1 max ←
             2
 2 if n = 1 or N = max then
 3     return Kn
 4 G ← Kn
 5 u ← 0
 6 v ← 1
 7 t ← 0               /* number of candidates processed so far */
 8 k ← 0                  /* number of edges selected so far */
 9 while True do
10     r ← draw uniformly at random from {0, 1, . . . , max − t}
11     if r < N − k then
12         add edge uv to G
13         k ←k+1
14         if k = N then
15              return G
16     t←t+1
17     v ←v+1
18     if v = n then
19         u←u+1
20         v ←u+1
270                                                              Chapter 10. Random Graphs

        (b) Directed acyclic graphs.
        (c) Bipartite graphs.

10.5. Repeat the previous problem for Algorithm 10.5.

10.6. In 2006, Keith M. Briggs provided [37] an algorithm that generates a random
      graph in G(n, N ), inspired by Knuth’s Algorithm S (Selection sampling technique)
      as found on page 142 of Knuth [123]. Pseudocode of Briggs’ procedure is presented
      in Algorithm 10.10. Provide runtime analysis of Algorithm 10.10 and compare your
      results with those presented in section 10.3. Under which conditions would Briggs’
      algorithm be more efficient than Algorithm 10.5?

10.7. Briggs’ Algorithm 10.10 follows the general template of an algorithm that samples
      without replacement n items from a pool of N candidates. Here 0 < n ≤ N and
      the size N of the candidate pool is known in advance. However there are situations
      where the value of N is not known beforehand, and we wish to sample without
      replacement n items from the candidate pool. What we know is that the candidate
      pool has enough members to allow us to select n items. Vitter’s algorithm R [192],
      called reservoir sampling, is suitable for the situation and runs in O(n(1+ln(N/n)))
      expected time. Describe and provide pseudocode of Vitter’s algorithm, prove its
      correctness, and provide runtime analysis.

10.8. Repeat Example 10.1 but using each of Algorithms 10.1 and 10.5.

10.9. Diego Garlaschelli introduced [84] in 2009 a weighted version of the G(n, p) model,
      called the weighted random graph model. Denote by GW (n, p) the weighted random
      graph model. Provide a description and pseudocode of a procedure to generate a
      graph in GW (n, p) and analyze the runtime complexity of the algorithm. Describe
      various statistical physics properties of GW (n, p).

10.10. Latora and Marchiori [132] extended the Watts-Strogatz model to take into ac-
      count weighted edges. A crucial idea in the Latora-Marchiori model is the concept
      of network efficiency. Describe the Latora-Marchiori model and provide pseudocode
      of an algorithm to construct Latora-Marchiori networks. Explain the concepts
      of local and global efficiencies and how these relate to clustering coefficient and
      characteristic path length. Compare and contrast the Watts-Strogatz and Latora-
      Marchiori models.

10.11. The following model for “growing” graphs is known as the CHKNS model [45],1
      named for its original proponents. Start with the trivial graph G at time step
      t = 1. For each subsequent time step t > 1, add a new vertex to G. Furthermore
      choose two vertices uniformly at random and with probability δ join them by an
      undirected edge. The newly added edge does not necessarily have the newly added
      vertex as an endpoint. Denote by dk (t) the expected number of vertices with degree
      k at time t. Assuming that no self-loops are allowed, show that

                                                                 d0 (t)
                                  d0 (t + 1) = d0 (t) + 1 − 2δ
                                                                   t
  1
      Or the “chickens” model, depending on how you pronounce “CHKNS”.
10.6. Problems                                                                                271

     and
                                                  dk−1 (t)      dk (t)
                           dk (t + 1) = dk (t) + 2δ        − 2δ        .
                                                     t            t
     As t −→ ∞, show that the probability that a vertex be chosen twice decreases as
     t−2 . If v is a vertex chosen uniformly at random, show that
                                                         (2δ)k
                                 Pr[deg(v) = k] =
                                                      (1 + 2δ)k+1
     and conclude that the CHKNS model has an exponential degree distribution. The
     size of a component counts the number of vertices in the component itself. Let
     Nk (t) be the expected number of components of size k at time t. Show that
                                                              N1 (t)
                               N1 (t + 1) = N1 (t) + 1 − 2δ
                                                                t
     and for k > 1 show that
                                      k−1
                                                                       !
                                      X   iNi (t) (k − i)Nk−i (t)                 kNk (t)
              Nk (t + 1) = Nk (t) + δ            ·                         − 2δ           .
                                      i=1
                                            t            t                          t

10.12. Algorithm 10.7 can easily be modified to generate other types of scale-free net-
      works. Based upon the latter algorithm, Batagelj and Brandes [18] presented
      a procedure for generating bipartite scale-free networks; see Algorithm 10.11 for
      pseudocode. Analyze the runtime efficiency of Algorithm 10.11. Fix positive inte-
      ger values for n and d, say n = 10, 000 and d = 4. Use Algorithm 10.11 to generate
      a bipartite graph with your chosen values for n and d. Plot the degree distribution
      of the resulting graph using a log-log scale and confirm that the generated graph
      is scale-free.
10.13. Find the degree and distance distributions, average path lengths, and clustering
      coefficients of the following network datasets:
      (a) actor collaboration [14]
      (b) co-authorship of condensed matter preprints [156]
      (c) Google web graph [137]
      (d) LiveJournal friendship [10, 137]
      (e) neural network of the C. elegans [199, 200]
       (f) US patent citation [136]
      (g) Western States Power Grid of the US [199]
      (h) Zachary karate club [209]
10.14. Consider the plots of degree distributions in Figures 10.12 and 10.13. Note the
      noise in the tail of each plot. To smooth the tail, we can use the cumulative degree
      distribution                          ∞
                                            X
                                      c
                                    P (k) =    Pr[deg(v) = i].
                                             i=k
     Given a graph with scale-free degree distribution P (k) ∼ k −α and α > 1, the
     cumulative degree distribution follows P c (k) ∼ k 1−α . Plot the cumulative degree
     distribution of each network dataset in Problem 10.13.
272                                                               Chapter 10. Random Graphs




 Algorithm 10.11: Bipartite scale-free network via preferential attachment.
  Input: Positive integer n > 1 and minimum degree d ≥ 1.
  Output: Bipartite scale-free multigraph. Each partition has n vertices and each
            vertex has minimum degree d.
 1   G ← K2n                       /* vertex set is {0, 1, . . . , 2n − 1} */
 2   M1 ← list of length 2nd
 3   M2 ← list of length 2nd
 4   for v = 0, 1, . . . , n − 1 do
 5      for i = 0, 1, . . . , d − 1 do
 6          M1 [2(vd + i)] ← v
 7          M2 [2(vd + i)] ← n + v
 8          r ← draw uniformly at random from {0, 1, . . . , 2(vd + i)}
 9          if r is even then
10              M1 [2(vd + i) + 1] ← M2 [r]
11          else
12              M1 [2(vd + i) + 1] ← M1 [r]
13          r ← draw uniformly at random from {0, 1, . . . , 2(vd + i)}
14          if r is even then
15              M2 [2(vd + i) + 1] ← M1 [r]
16          else
17              M2 [2(vd + i) + 1] ← M2 [r]
18   add edges (M1 [2i], M1 [2i + 1]) and (M2 [2i], M2 [2i + 1]) to G for i = 0, 1, . . . , nd − 1
19   return G
Chapter 11

Graph Problems and Their LP
Formulations

This document is meant as an explanation of several graph theoretical functions defined
in Sage’s Graph Library (http://www.sagemath.org/), which use Linear Programming
to solve optimization of existence problems.


11.1       Maximum average degree
The average degree of a graph G is defined as ad(G) = 2|E(G)|
                                                          |V (G)|
                                                                  . The maximum average
degree of G is meant to represent its densest part, and is formally defined as :

                                  mad(G) = max ad(H)
                                              H⊆G


    Even though such a formulation does not show it, this quantity can be computed in
polynomial time through Linear Programming. Indeed, we can think of this as a simple
flow problem defined on a bipartite graph. Let D be a directed graph whose vertex set
we first define as the disjoint union of E(G) and V (G). We add in D an edge between
(e, v) ∈ E(G) × V (G) if and only if v is one of e’s endpoints. Each edge will then have a
flow of 2 (through the addition in D of a source and the necessary edges) to distribute
among its two endpoints. We then write in our linear program the constraint that each
vertex can absorb a flow of at most z (add to D the necessary sink and the edges with
capacity z).
    Clearly, if H ⊆ G is the densest subgraph in G, its |E(H)| edges will send a flow
of 2|E(H)| to their |V (H)| vertices, such a flow being feasible only if z ≥ 2|E(H)|
                                                                                |V (H)|
                                                                                        . An
elementary application of the max-flow/min-cut theorem, or of Hall’s bipartite matching
theorem shows that such a value for z is also sufficient. This LP can thus let us compute
the Maximum Average Degree of the graph.
    Sage method : Graph.maximum_average_degree()
    LP Formulation :

   ˆ Minimize : z


   ˆ Such that :

                                            273
274                                    Chapter 11. Graph Problems and Their LP Formulations

           – a vertex can absorb at most z
                                                                 X
                                                ∀v ∈ V (G),              xe,v ≤ z
                                                                e∈E(G)
                                                                  e∼v



           – each edge sends a flow of 2

                                            ∀e = uv ∈ E(G), xe,u + xe,u = 2

      ˆ xe,v real positive variable

    Here is the corresponding Sage code:
sage : g = graphs . PetersenGraph ()
sage : p = M i x e d I n t e g e rL i n e a r P r o g r a m ( maximization = False )
sage : x = p . new_variable ( dim = 2 )

sage : p . set_objective ( p [ ’z ’ ])

sage : for v in g :
...      p . add_constraint ( sum ([ x [ u ][ v ] for u in g . neighbors ( v ) ]) <= p [ ’z ’] )

sage : for u , v in g . edges ( labels = False ):
...      p . add_constraint ( x [ u ][ v ] + x [ v ][ u ] == 2 )

sage : p . solve ()
3.0

    REMARK : In many if not all the other LP formulations, this Linear Program
is used as a constraint. In those problems, we are always at some point looking for a
subgraph H of G such that H does not contain any cycle. The edges of G are in this
case variables, whose value can be equal to 0 or 1 depending on whether they belong
to such a graph H. Based on the observation that the Maximum Average Degree of a
tree on n vertices is exactly its average degree (= 2 − 2/n < 1), and that any cycles
in a graph ensures its average degree is larger than 2, we can then set the constraint
                2
that z ≤ 2 − |V (G)| . This is a handy way to write in LP the constraint that “the set of
edges belonging to H is acyclic”. For this to work, though, we need to ensure that the
variables corresponding to our edges are binary variables.


11.2         Traveling Salesman Problem
Given a graph G whose edges are weighted by a function w : E(G) −→ R, a solution to
the T SP is a Hamiltonian (spanning) cycle whose weight (the sum of the weight of its
edges) is minimal. It is easy to define both the objective and the constraint that each
vertex must have exactly two neighbors, but this could produce solutions such that the
set of edges define the disjoint union of several cycles. One way to formulate this linear
program is hence to add the constraint that, given an arbitrary vertex v, the set S of
edges in the solution must contain no cycle in G − v, which amounts to checking that
the set of edges in S no adjacent to v is of maximal average degree strictly less than 2,
using the remark from section ??.
    We will then, in this case, define variables representing the edges included in the
solution, along with variables representing the weight that each of these edges will send
to their endpoints.
    LP Formulation :
11.2. Traveling Salesman Problem                                                                        275

    ˆ Minimize                                         X
                                                              w(e)be
                                                     e∈E(G)




    ˆ Such that :

          – Each vertex is of degree 2
                                                                   X
                                                 ∀v ∈ V (G),              be = 2
                                                                 e∈E(G)
                                                                   e∼v


          – No cycle disjoint from a special vertex v ∗
                * Each edge sends a flow of 2 if it is taken

                                           ∀e = uv ∈ E(G − v ∗ ), xe,u + xe,v = 2be

                * Vertices receive strictly less than 2
                                                                 X                        2
                                         ∀v ∈ V (G − v ∗ ),              xe,v ≤ 2 −
                                                                e∈E(G)
                                                                                       |V (G)|
                                                                  e∼v


    ˆ Variables

          – xe,v real positive variable (flow sent by the edge)
          – be binary (is the edge in the solution ?)

  Sage method : Graph.traveling_salesman_problem()
  Here is the corresponding Sage corresponding to a simpler case – looking for an
Hamiltonian cycle in a graph:
sage : g = graphs . GridGraph ([4 ,4])
sage : p = M i x e d I n t e g e rL i n e a r P r o g r a m ( maximization = False )

sage : f = p . new_variable ()
sage : r = p . new_variable ()

sage : eps = 1/(2* Integer ( g . order ()))
sage : x = g . vertex_iterator (). next ()
sage : # reorders the edge as they can appear in the two different ways
sage : R = lambda x , y : (x , y ) if x < y else (y , x )
sage : # All the vertices have degree 2
sage : for v in g :
...      p . add_constraint ( sum ([ f [ R (u , v )] for u in g . neighbors ( v )]) == 2)

sage : # r is greater than f
sage : for u , v in g . edges ( labels = None ):
...      p . add_constraint ( r [( u , v )] + r [( v , u )] - f [ R (u , v )] >= 0)
sage : # no cycle which does not contain x
sage : for v in g :
...      if v != x :
...           p . add_constraint ( sum ([ r [( u , v )] for u in g . neighbors ( v )]) <= 1 - eps )

sage : p . set_objective ( None )
sage : p . set_binary ( f )
sage : p . solve ()                                                        # optional - GLPK , CBC , CPLEX
0.0
276                              Chapter 11. Graph Problems and Their LP Formulations


sage : # We can now build the solution
sage : # found as a graph

sage : f =   p . get_values ( f )                                         #   optional   -   GLPK , CBC , CPLEX
sage : tsp   = Graph ()                                                   #   optional   -   GLPK , CBC , CPLEX
sage : for   e in g . edges ( labels = False ):                           #   optional   -   GLPK , CBC , CPLEX
...          if f [ R ( e [0] , e [1])] == 1:                             #   optional   -   GLPK , CBC , CPLEX
...               tsp . add_edge ( e )                                    #   optional   -   GLPK , CBC , CPLEX

sage : tsp . is_regular ( k =2) and tsp . is_connected ()                 # optional - GLPK , CBC , CPLEX
True
sage : tsp . order () == g . order ()                                     # optional - GLPK , CBC , CPLEX
True



11.3         Edge-disjoint spanning trees
This problem is polynomial by a result from Edmonds. Obviously, nothing ensures the
following formulation is a polynomial algorithm as it contains many integer variables,
but it is still a short practical way to solve it.
    This problem amounts to finding, given a graph G and an integer k, edge-disjoint
spanning trees T1 , . . . , Tk which are subgraphs of G. In this case, we will chose to define
a spanning tree as an acyclic set of |V (G)| − 1 edges.
    Sage method : Graph.edge_disjoint_spanning_trees()
    LP Formulation :
      ˆ Maximize : nothing

      ˆ Such that :

          – An edge belongs to at most one set
                                                             X
                                          ∀e ∈ E(G),                     be,k ≤ 1
                                                           i∈[1,...,k]


          – Each set contains |V (G)| − 1 edges
                                                          X
                                  ∀i ∈ [1, . . . , k],            be,k = |V (G)| − 1
                                                         e∈E(G)


          – No cycles
               * In each set, each edge sends a flow of 2 if it is taken

                            ∀i ∈ [1, . . . , k], ∀e = uv ∈ E(G), xe,k,u + xe,k,u = 2be,k

               * Vertices receive strictly less than 2
                                                                    X                           2
                             ∀i ∈ [1, . . . , k], ∀v ∈ V (G),                 xe,k,v ≤ 2 −
                                                                   e∈E(G)
                                                                                             |V (G)|
                                                                     e∼v


      ˆ Variables

          – be,k binary (is edge e in set k ?)
          – xe,k,u positive real (flow sent by edge e to vertex u in set k)
11.4. Steiner tree                                                                                 277

     Here is the corresponding Sage code:
sage : g = graphs . RandomGNP (40 ,.6)
sage : p = M i x e d I n t e g e rL i n e a r P r o g r a m ()
sage : colors = range (2)

sage : # Sort an edge
sage : S = lambda (x , y ) : (x , y ) if x < y else (y , x )

sage : edges = p . new_variable ( dim = 2)
sage : r_edges = p . new_variable ( dim = 2)
sage : # An edge belongs to at most one tree
sage : for e in g . edges ( labels = False ):
...        p . add_constraint ( sum ([ edges [ j ][ S ( e )] for j in colors ]) , max = 1)

sage : for j in colors :
...        # each color class has g . order () -1 edges
...        p . add_constraint (
...            sum ([ edges [ j ][ S ( e )] for e in g . edges ( labels = None )])
...            >= g . order () -1)
...        # Each vertex is in the tree
...        for v in g . vertices ():
...                p . add_constraint (
...                    sum ([ edges [ j ][ S ( e )] for e in g . edges_incident (v , labels = None )])
...                    >= 1)
...        # r_edges is larger than edges
...        for u , v in g . edges ( labels = None ):
...                p . add_constraint (
...                     r_edges [ j ][( u , v )] + r_edges [ j ][( v , u )]
...                     == edges [ j ][ S (( u , v ))] )

sage : # no cycles
sage : epsilon = (3* Integer ( g . order ()))**( -1)
sage : for j in colors :
...       for v in g :
...           p . add_constraint (
...                sum ([ r_edges [ j ][( u , v )] for u in g . neighbors ( v )])
...                <= 1 - epsilon )

sage : p . set_binary ( edges )
sage : p . set_objective ( None )
sage : p . solve ()                                               # optional - GLPK , CBC , CPLEX
0.0

sage : # We can now build the solution
sage : # found as a list of trees

sage : edges = p . get_values ( edges )                           # optional - GLPK , CBC , CPLEX
sage : trees = [ Graph () for c in colors ]                       # optional - GLPK , CBC , CPLEX

sage : for e in g . edges ( labels = False ):                     #   optional   -   GLPK , CBC , CPLEX
...        for c in colors :                                      #   optional   -   GLPK , CBC , CPLEX
...           if round ( edges [ c ][ S ( e )]) == 1:             #   optional   -   GLPK , CBC , CPLEX
...                 trees [ c ]. add_edge ( e )                   #   optional   -   GLPK , CBC , CPLEX

sage : all ([ trees [ j ]. is_tree () for j in colors ])          # optional - GLPK , CBC , CPLEX
True




11.4           Steiner tree
See Trietsch [188] for a relationship between Steiner trees and Euler’s problem of polygon
division. Finding a spanning tree in a Graph G can be done in linear time, whereas
computing a Steiner Tree is NP-hard. The goal is in this case, given a graph, a weight
function w : E(G) −→ R and a set S of vertices, to find the tree of minimum cost
connecting them all together. Equivalently, we will be looking for an acyclic subgraph
Hof G containing |V (H)| vertices and |E(H)| = |V (H)| − 1 edges, which contains each
vertex from S
278                                   Chapter 11. Graph Problems and Their LP Formulations

    LP Formulation :
      ˆ Minimize :                                    X
                                                              w(e)be
                                                     e∈E(G)




      ˆ Such that :

          – Each vertex from S is in the tree
                                                               X
                                                   ∀v ∈ S,             be ≥ 1
                                                              e∈E(G)
                                                                e∼v



          – c is equal to 1 when a vertex v is in the tree

                                        ∀v ∈ V (G), ∀e ∈ E(G), e ∼ v, be ≤ cv

          – The tree contains |V (H)| vertices and |E(H)| = |V (H)| − 1 edges
                                        X         X
                                            cv −      be = 1
                                                   v∈G        e∈E(G)


          – No Cycles
                * Each edge sends a flow of 2 if it is taken

                                            ∀e = uv ∈ E(G), xe,u + xe,u = 2be,k

                * Vertices receive strictly less than 2
                                                              X                      2
                                            ∀v ∈ V (G),              xe,v ≤ 2 −
                                                            e∈E(G)
                                                                                  |V (G)|
                                                              e∼v


      ˆ Variables :

          – be binary (is e in the tree ?)
          – cv binary (does the tree contain v ?)
          – xe,v real positive variable (flow sent by the edge)

    Sage method : Graph.steiner_tree()
    Here is the corresponding Sage code:
sage : g = graphs . GridGraph ([10 ,10])
sage : vertices = [(0 ,2) ,(5 ,3)]
sage : from sage . numerical . mip import M i x e d I n t e ge r L i n e a r P r o g r a m
sage : p = M i x e d I n t e g er L i n e a r P r o g r a m ( maximization = False )

sage : # Reorder an edge
sage : R = lambda (x , y ) : (x , y ) if x < y else (y , x )

sage :   # edges used in the Steiner Tree
sage :   edges = p . new_variable ()
sage :   # relaxed edges to test for acyclicity
sage :   r_edges = p . new_variable ()
11.5. Linear arboricity                                                                               279

sage : # Whether a vertex is in the Steiner Tree
sage : vertex = p . new_variable ()
sage : # Which vertices are in the tree ?
sage : for v in g :
...          for e in g . edges_incident (v , labels = False ):
...               p . add_constraint ( vertex [ v ] - edges [ R ( e )] , min = 0)

sage : # We must have the given vertices in our tree
sage : for v in vertices :
...          p . add_constraint (
...              sum ([ edges [ R ( e )] for e in g . edges_incident (v , labels = False )]
...               == 1)
sage : # The number of edges is equal to the number of vertices in our tree minus 1
sage : p . add_constraint (
...        sum ([ vertex [ v ] for v in g ])
...        - sum ([ edges [ R ( e )] for e in g . edges ( labels = None )])
...        == 1)

sage : # There are no cycles in our graph
sage : for u , v in g . edges ( labels = False ):
...            p . add_constraint (
...                r_edges [( u , v )]+ r_edges [( v , u )] - edges [ R (( u , v ))]
...                <= 0 )

sage : eps = 1/(5* Integer ( g . order ()))

sage : for v in g :
...          p . add_constraint ( sum ([ r_edges [( u , v )] for u in g . neighbors ( v )]) , max = 1 - eps )

sage : p . set_objective ( sum ([ edges [ R ( e )] for e in g . edges ( labels = False )]))
sage : p . set_binary ( edges )
sage : p . solve ()                                              # optional - GLPK , CBC , CPLEX
6.0

sage : # We can now build the solution
sage : # found as a tree

sage :   edges = p . get_values ( edges )                                # optional - GLPK , CBC , CPLEX
sage :   st = Graph ()                                                   # optional - GLPK , CBC , CPLEX
sage :   st . add_edges (
...         [ e for e in g . edges ( labels = False )
...         if edges [ R ( e )] == 1])                                   # optional - GLPK , CBC , CPLEX
sage :   st . is_tree ()                                                 # optional - GLPK , CBC , CPLEX
True
sage :   all ([ v in st for v in vertices ])                             # optional - GLPK , CBC , CPLEX
True




11.5         Linear arboricity
The linear arboricity of a graph G is the least number k such that the edges of G can
be partitioned into k classes, each of them being a forest of paths (the disjoints union
of paths – trees of maximal degree 2). The corresponding LP is very similar to the one
giving edge-disjoint spanning trees
    LP Formulation :

    ˆ Maximize : nothing

    ˆ Such that :

          – An edge belongs to exactly one set
                                                            X
                                            ∀e ∈ E(G),                  be,k = 1
                                                          i∈[1,...,k]
280                                         Chapter 11. Graph Problems and Their LP Formulations

            – Each class has maximal degree 2
                                                                               X
                                            ∀v ∈ V (G), ∀i ∈ [1, . . . , k],            be,k ≤ 2
                                                                               e∈E(G)
                                                                                 e∼v


            – No cycles
                   * In each set, each edge sends a flow of 2 if it is taken

                                      ∀i ∈ [1, . . . , k], ∀e = uv ∈ E(G), xe,k,u + xe,k,v = 2be,k

                   * Vertices receive strictly less than 2
                                                                         X                            2
                                      ∀i ∈ [1, . . . , k], ∀v ∈ V (G),            xe,k,v ≤ 2 −
                                                                         e∈E(G)
                                                                                                   |V (G)|
                                                                           e∼v


      ˆ Variables

            – be,k binary (is edge e in set k ?)
            – xe,k,u positive real (flow sent by edge e to vertex u in set k)
     Sage method : sage.graphs.graph_coloring.linear_arboricity()
     Here is the corresponding Sage code :
sage : g = graphs . GridGraph ([4 ,4])
sage : k = 2
sage : p = M i x e d I n t e g e rL i n e a r P r o g r a m ()
sage : # c is a boolean value such that c [ i ][( u , v )] = 1
sage : # if and only if (u , v ) is colored with i
sage : c = p . new_variable ( dim =2)

sage : # relaxed value
sage : r = p . new_variable ( dim =2)

sage : E = lambda x , y : (x , y ) if x < y else (y , x )

sage : MAD = 1 -1/( Integer ( g . order ())*2)
sage : # Partition of the edges
sage : for u , v in g . edges ( labels = None ):
...      p . add_constraint ( sum ([ c [ i ][ E (u , v )] for i in range ( k )]) , max =1 , min =1)

sage : for i in range ( k ):
...      # r greater than c
...      for u , v in g . edges ( labels = None ):
...          p . add_constraint ( r [ i ][( u , v )] + r [ i ][( v , u )] - c [ i ][ E (u , v )] , max =0 , min =0)
...          # Maximum degree 2
...          for u in g . vertices ():
...                p . add_constraint ( sum ([ c [ i ][ E (u , v )] for v in g . neighbors ( u )]) , max = 2)
...                # no cycles
...                p . add_constraint ( sum ([ r [ i ][( u , v )] for v in g . neighbors ( u )]) , max = MAD )

sage : p . set_objective ( None )
sage : p . set_binary ( c )

sage : c = p . get_values ( c )

sage :    gg = g . copy ()
sage :    gg . delete_edges ( g . edges ())
sage :    answer = [ gg . copy () for i in range ( k )]
sage :    add = lambda (u , v ) , i : answer [ i ]. add_edge (( u , v ))
sage : for i in range ( k ):
...          for u , v in g . edges ( labels = None ):
...              if c [ i ][ E (u , v )] == 1:
...                    add (( u , v ) , i )
11.6. H-minor                                                                           281

11.6      H-minor
For more information on minor theory, please see
http://en.wikipedia.org/wiki/Minorw%28graphwtheory%29
It is a wonderful subject, and I do not want to begin talking about it when I know I
couldn’t freely fill pages with remarks :-)
    For our purposes, we will just say that finding a minor H in a graph G, consists in :

  1. Associating to each vertex h ∈ H a set Sh of representants in H, different vertices
     h having disjoints representative sets

  2. Ensuring that each of these sets is connected (can be contracted)

  3. If there is an edge between h1 and h2 in H, there must be an edge between the
     corresponding representative sets

   Here is how we will address these constraints :

  1. Easy

  2. For any h, we can find a spanning tree in Sh (an acyclic set of |Sh | − 1 edges)

  3. This one is very costly.
     To each directed edge g1 g2 (I consider g1 g2 and g2 g1 as different) and every edge
     h1 h2 is associated a binary variable which can be equal to one only if g1 represents
     h1 and g2 represents g2 . We then sum all these variables to be sure there is at least
     one edge from one set to the other.
282                                Chapter 11. Graph Problems and Their LP Formulations

  LP Formulation :
      ˆ Maximize : nothing

      ˆ Such that :

          – A vertex g ∈ V (G) can represent at most one vertex h ∈ V (H)
                                                 X
                                    ∀g ∈ V (G),       rsh,g ≤ 1
                                                                h∈V (H)


          – An edge e can only belong to the tree of h if both its endpoints represent h

                              ∀e = g1 g2 ∈ E(G), te,h ≤ rsh,g1 and te,h ≤ rsh,g2

          – In each representative set, the number of vertices is one more than the number
            of edges in the corresponding tree
                                          X            X
                                    ∀h,       rsh,g −       te,h = 1
                                              g∈V (G)                e∈E(G)


          – No cycles in the union of the spanning trees
               * Each edge sends a flow of 2 if it is taken
                                                                                       X
                                     ∀e = uv ∈ E(G), xe,u + xe,v = 2                           te,h
                                                                                     h∈V (H)

               * Vertices receive strictly less than 2
                                                           X                            2
                                        ∀v ∈ V (G),                 xe,k,v ≤ 2 −
                                                         e∈E(G)
                                                                                     |V (G)|
                                                           e∼v


          – arc(g1 ,g2 ),(h1 ,h2 ) can only be equal to 1 if g1 g2 is leaving the representative set
            of h1 to enter the one of h2 . (note that this constraints has to be written both
            for g1 , g2 , and then for g2 , g1 )

                                    ∀g1 , g2 ∈ V (G), g1 6= g2 , ∀h1 h2 ∈ E(H)

                           arc(g1 ,g2 ),(h1 ,h2 ) ≤ rsh1 ,g1 and arc(g1 ,g2 ),(h1 ,h2 ) ≤ rsh2 ,g2
          – We have the necessary edges between the representative sets

                                                     ∀h1 h2 ∈ E(H)
                                               X
                                                                arc(g1 ,g2 ),(h1 ,h2 ) ≥ 1
                                       ∀g1 ,g2 ∈V (G),g1 6=g2

      ˆ Variables

          – rsh,g binary (does g represent h ? rs = “representative set”)
          – te,h binary (does e belong to the spanning tree of the set representing h ?)
          – xe,v real positive (flow sent from edge e to vertex v)
11.6. H-minor                                                                                            283

            – arc(g1 ,g2 ),(h1 ,h2 ) binary (is edge g1 g2 leaving the representative set of h1 to enter
              the one of h2 ?)

     Here is the corresponding Sage code:
sage : g = graphs . PetersenGraph ()
sage : H = graphs . CompleteGraph (4)

sage : p = M i x e d I n t e g e rL i n e a r P r o g r a m ()
sage : # sorts an edge
sage : S = lambda (x , y ) : (x , y ) if x < y else (y , x )

sage :    # rs = Representative set of a vertex
sage :    # for h in H , v in G is such that rs [ h ][ v ] == 1 if and only if v
sage :    # is a representant of h in g
sage :    rs = p . new_variable ( dim =2)
sage : for v in g :
...          p . add_constraint ( sum ([ rs [ h ][ v ] for h in H ]) , max = 1)

sage : # We ensure that the set of representatives of a
sage : # vertex h contains a tree , and thus is connected

sage : # edges represents the edges of the tree
sage : edges = p . new_variable ( dim = 2)

sage : # there can be a edge for h between two vertices
sage : # only if those vertices represent h
sage : for u , v in g . edges ( labels = None ):
...            for h in H :
...                p . add_constraint ( edges [ h ][ S (( u , v ))] - rs [ h ][ u ] , max = 0 )
...                p . add_constraint ( edges [ h ][ S (( u , v ))] - rs [ h ][ v ] , max = 0 )
sage : # The number of edges of the tree in h is exactly the cardinal
sage : # of its representative set minus 1

sage : for h in H :
...          p . add_constraint (
...              sum ([ edges [ h ][ S ( e )] for e in g . edges ( labels = None )])
...              - sum ([ rs [ h ][ v ] for v in g ])
...              ==1 )

sage : # a tree has no cycle
sage : epsilon = 1/(5* Integer ( g . order ()))
sage : r_edges = p . new_variable ( dim =2)
sage : for h in H :
...          for u , v in g . edges ( labels = None ):
...               p . add_constraint (
...                 r_edges [ h ][( u , v )] + r_edges [ h ][( v , u )] >= edges [ h ][ S (( u , v ))])
...          for v in g :
...               p . add_constraint (
...                    sum ([ r_edges [ h ][( u , v )] for u in g . neighbors ( v )]) <= 1 - epsilon )

sage : # Once the representative sets are described , we must ensure
sage : # there are arcs corresponding to those of H between them
sage : h_edges = p . new_variable ( dim =2)

sage : for h1 , h2 in H . edges ( labels = None ):
...           for v1 , v2 in g . edges ( labels = None ):
...               p . add_constraint ( h_edges [( h1 , h2 )][ S (( v1 , v2 ))]   -   rs [ h2 ][ v2 ] ,   max   =   0)
...               p . add_constraint ( h_edges [( h1 , h2 )][ S (( v1 , v2 ))]   -   rs [ h1 ][ v1 ] ,   max   =   0)
...               p . add_constraint ( h_edges [( h2 , h1 )][ S (( v1 , v2 ))]   -   rs [ h1 ][ v2 ] ,   max   =   0)
...               p . add_constraint ( h_edges [( h2 , h1 )][ S (( v1 , v2 ))]   -   rs [ h2 ][ v1 ] ,   max   =   0)


sage :    p . set_binary ( rs )
sage :    p . set_binary ( edges )
sage :    p . set_objective ( None )
sage :    p . solve ()                                                    # optional - GLPK , CBC , CPLEX
0.0
sage : # We can now build the solution found as a
sage : # dictionary associating to each vertex of H
284                             Chapter 11. Graph Problems and Their LP Formulations

sage : # the corresponding set of vertices in G

sage : rs = p . get_values ( rs )

sage : from sage . sets . set import Set
sage : rs_dict = {}
sage : for h in H :
...          rs_dict [ h ] = [ v for v in g if rs [ h ][ v ]==1]
Appendix A

Asymptotic Growth

  Name            Standard notation    Intuitive notation Meaning
  theta           f (n) = Θ(g(n))      f (n) ∈ Θ(g(n))    f (n) ≈ c · g(n)
  big oh          f (n) = O(g(n))      f (n) ≤ O(g(n))     f (n) ≤ c · g(n)
  omega           f (n) = Ω(g(n))      f (n) ≥ Ω(g(n))     f (n) ≥ c · g(n)
  little oh       f (n) = o(g(n))      f (n)  o(g(n))     f (n)  g(n)
  little omega    f (n) = ω(g(n))      f (n)  ω(g(n))     f (n)  g(n)
  tilde           f (n) = Θ̃(g(n))     f (n) ∈ Θ̃(g(n))    f (n) ≈ logΘ(1) g(n)

                    Table A.1: Meaning of asymptotic notations.


  Class                lim f (n)/g(n) =   Equivalent definition
                      n−→∞
  f (n) = Θ(g(n))     a constant          f (n) = O(g(n)) and f (n) = Ω(g(n))
  f (n) = o(g(n))     zero                f (n) = O(g(n)) but f (n) 6= Ω(g(n))
  f (n) = ω(g(n))     ∞                   f (n) 6= O(g(n)) but f (n) = Ω(g(n))

              Table A.2: Asymptotic behavior in the limit of large n.




                                       285
Appendix B

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290                                     Appendix B. GNU Free Documentation License

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Bibliography

 [1] G. M. Adelson-Velskiı̆ and E. M. Landis. An algorithm for the organization of informa-
     tion. Soviet Math. Doklady, 3:1259–1263, 1962.
 [2] A. V. Aho, J. E. Hopcroft, and J. D. Ullman. The Design and Analysis of Computer
     Algorithms. Addison-Wesley Publishing Company, 1974.
 [3] W. Aiello, F. Chung, and L. Lu. A random graph model for massive graphs. In TOC,
     pages 171–180. ACM, 2000.
 [4] W. Aiello, F. Chung, and L. Lu. Handbook of Massive Data Sets, chapter Random
     evolution of massive graphs, pages 97–122. Kluwer Academic Publishers, 2002.
 [5] R. Albert and A.-L. Barabási. Statistical mechanics of complex networks. Rev. Mod.
     Phys., 74:47–97, 2002.
 [6] R. Albert, H. Jeong, and A.-L. Barabási. Diameter of the World-Wide Web. Nature,
     401:130–131, 1999.
 [7] L. A. N. Amaral, A. Scala, M. Barthélémy, and H. E. Stanley. Classes of small-world
     networks. PNAS, 97:11149–11152, 2000.
 [8] V. Arlazarov, E. Dinic, M. Kronrod, and I. Faradzev. On economical construction of the
     transitive closure of a directed graph. Soviet Math. Doklady, 11:1209–1210, 1970.
 [9] A. S. Asratian, T. M. J. Denley, and R. Häggkvist. Bipartite Graphs and their Applica-
     tions. Cambridge University Press, 1998.
[10] L. Backstrom, D. P. Huttenlocher, J. M. Kleinberg, and X. Lan. Group formation in large
     social networks: membership, growth, and evolution. In T. Eliassi-Rad, L. H. Ungar,
     M. Craven, and D. Gunopulos, editors, KDD, pages 44–54. ACM, 2006.
[11] M. Baker and X. Faber. Quantum Graphs and Their Applications, chapter Metrized
     Graphs, Laplacian Operators, and Electrical Networks, pages 15–33. AMS, 2006.
[12] W. W. R. Ball and H. S. M. Coxeter. Mathematical Recreations and Essays. Dover
     Publications, 13th edition, 1987.
[13] A.-L. Barabási. Linked: The New Science of Networks. Basic Books, 2002.
[14] A.-L. Barabási and R. Albert. Emergence of scaling in random networks. Science,
     286:509–512, 1999.
[15] A.-L. Barabási, R. Albert, and H. Jeong. Mean-field theory for scale-free random net-
     works. Phys. A, 272:173–187, 1999.
[16] A.-L. Barabási, R. Albert, and H. Jeong. Scale-free characteristics of random networks:
     The topology of the world wide web. Phys. A, 281:69–77, 2000.
[17] A. Barrat and M. Weigt. On the properties of small-world network models. Eur. Phys.
     J. B, 13:547–560, 2000.
[18] V. Batagelj and U. Brandes. Efficient generation of large random networks. Phys. Rev.
     E, 71:036113, 2005.
[19] R. A. Beezer. A First Course in Linear Algebra. Robert A. Beezer, University of Puget
     Sound, USA, 2009. http://linear.ups.edu.
[20] J. Bell and B. Stevens. A survey of known results and research areas for n-queens. Disc.
     Math., 309:1–31, 2009.
[21] R. Bellman. Dynamic Programming. Princeton University Press, 1957.

                                           294
Bibliography                                                                                       295

 [22] A. T. Benjamin and C. R. Yerger. Combinatorial interpretations of spanning tree iden-
      tities. Bull. Inst. Comb. App., 47:37–42, 2006.
 [23] N. L. Biggs. Algebraic potential theory on graphs. Bull. London Math. Soc., 29:641–682,
      1997.
 [24] N. L. Biggs. Chip firing and the critical groups of graphs. J. Alg. Combin., 9:25–45,
      1999.
 [25] N. L. Biggs. The critical group from a cryptographic perspective. Bull. London Math.
      Soc., 39:829–836, 2007.
 [26] N. L. Biggs. Codes: An Introduction to Information, Communication, and Cryptography.
      Springer, 2009.
 [27] S. Boccaletti, V. Latora, Y. Moreno, M. Chavez, and D.-U. Hwang. Complex networks:
      Structure and dynamics. Phys. Rep., 424:175–308, 2006.
 [28] B. Bollobás. Random Graphs. Cambridge University Press, 2nd edition, 2001.
 [29] B. Bollobás and O. Riordan. The diameter of a scale-free random graph. Combinatorica,
      24:5–34, 2004.
 [30] B. Bollobás, O. Riordan, J. Spencer, and G. E. Tusnády. The degree sequence of a
      scale-free random graph process. Rand. Struc. Alg., 18:279–290, 2001.
 [31] J. A. Bondy and U. S. R. Murty. Graph Theory with Applications. North-Holland, 1976.
 [32] S. P. Borgatti. Centrality and network flow. Soc. Net., 27:55–71, 2005.
 [33] O. Borůvka. O jistém problému minimálnı́m. Práce Mor. Přı́rodověd. Spol. v Brně III,
      3:37–58, 1926.
 [34] O. Borůvka. Přı́spěvek k řešenı́ otázky ekonomické stavby elektrovodnı́ch sı́tı́. Elektron-
      ický Obzor, 15:153–154, 1926.
 [35] J. M. Boyer and W. J. Myrvold. On the cutting edge: Simplified O(n) planarity by edge
      addition. J. Graph Alg. App., 8:241–273, 2004.
 [36] U. Brandes. A faster algorithm for betweenness centrality. J. Math. Soc., 25:163–177,
      2001.
 [37] K. M. Briggs. The verywnauty graph library (version 1.1), accessed 28th January 2011.
      http://keithbriggs.info/verywnauty.html.
 [38] M. Brinkmeier and T. Schank. Network Analysis: Methodological Foundations, chapter
      Network Statistics, pages 293–317. Springer, 2005.
 [39] A. Broder, R. Kumar, F. Maghoul, P. Raghavan, S. Rajagopalan, R. Stata, A. Tomkins,
      and J. Wiener. Graph structure in the web. Comp. Net., 33:309–320, 2000.
 [40] M. R. Brown. The Analysis of a Practical and Nearly Optimal Priority Queue. PhD
      thesis, Stanford University, USA, 1977.
 [41] M. R. Brown. Implementation and analysis of binomial queue algorithms. SIAM J.
      Comp., 7:298–319, 1978.
 [42] J. Buchmann, E. Dahmen, and M. Schneider. Merkle tree traversal revisited. In J. Buch-
      mann and J. Ding, editors, PQCrypto, pages 63–78. Springer, 2008.
 [43] F. Buckley and F. Harary. Distance in Graphs. Perseus Books, 1990.
 [44] F. Buckley and W. Y. Lau. Mutually eccentric vertices in graphs. Ars Combinatoria,
      67, 2003.
 [45] D. S. Callaway, J. E. Hopcroft, J. M. Kleinberg, M. E. J. Newman, and S. H. Strogatz.
      Are randomly grown graphs really random? Phys. Rev. E, 64:041902, 2001.
 [46] C. Castellano, S. Fortunato, and V. Loreto. Statistical physics of social dynamics. Rev.
      Mod. Phys., 81:591–646, 2009.
 [47] R. D. Castro and J. W. Grossman. Famous trails to Paul Erdős. Math. Intel., 21:51–53,
      1999.
 [48] J.-L. Chabert, editor. A History of Algorithms: From the Pebble to the Microchip.
      Springer, 1999.
 [49] B. Chazelle. A minimum spanning tree algorithm with inverse-Ackermann type com-
      plexity. J. ACM, 47:1028–1047, 2000.
296                                                                               Bibliography

 [50] B. Chazelle. The soft heap: An approximate priority queue with optimal error rate. J.
      ACM, 47:1012–1027, 2000.
 [51] Q. Chen, H. Chang, R. Govindan, S. Jamin, S. Shenker, and W. Willinger. The origin of
      power-laws in internet topologies revisited. In INFOCOM, pages 608–617. IEEE, 2002.
 [52] A. G. Chetwynd and A. J. W. Hilton. Star multigraphs with three vertices of maximum
      degree. Math. Proc. Camb. Phil. Soc., 100:303–317, 1986.
 [53] G. Choquet. Étude de certains réseaux de routes. Comptes Rendus Hebdomadaires des
      Séances de l’Académie des Sciences, 206:310–313, 1938.
 [54] F. Chung. Laplacians and the Cheeger inequality for directed graphs. Ann. Comb.,
      9:1–19, 2005.
 [55] D. Cohen. On holy wars and a plea for peace, 01st April 1980. http://www.ietf.org/rfc/
      ien/ien137.txt.
 [56] D. Cohen. On holy wars and a plea for peace. IEEE Comp. Mag., 14:48–54, 1981.
 [57] T. H. Cormen, C. E. Leiserson, R. L. Rivest, and C. Stein. Introduction to Algorithms.
      MIT Press and McGraw-Hill, 2nd edition, 2001.
 [58] L. da F. Costa, F. A. Rodrigues, G. Travieso, and P. R. Villas Boas. Characterization
      of complex networks: A survey of measurements. Adv. Phys., 56:167–242, 2007.
 [59] L. da Fontoura Costa, O. N. Oliveira Jr., G. Travieso, F. A. Rodrigues, P. R. Villas Boas,
      L. Antiqueira, M. P. Viana, and L. E. C. Rocha. Analyzing and modeling real-world
      phenomena with complex networks: a survey of applications. Adv. Phys., 60:329–412,
      2011.
 [60] D. J. de Solla Price. Networks of scientific papers. Science, 149:510–515, 1965.
 [61] E. W. Dijkstra. A note on two problems in connexion with graphs. Numerische Mathe-
      matik, 1:269–271, 1959.
 [62] S. N. Dorogovtsev and J. F. F. Mendes. Language as an evolving word web. Proc. R.
      Soc. Lond. B, 268:2603–2606, 2001.
 [63] S. N. Dorogovtsev and J. F. F. Mendes. Evolution of networks. Adv. Phys., 51:1079–1187,
      2002.
 [64] H. Dörrie. 100 Great Problems of Elementary Mathematics: Their History and Solution.
      Translated by David Antin. Dover Publications, 1965.
 [65] N. J. Durgin. Abelian sandpile model on symmetric graphs. 2009. Thesis, Harvey
      Mudd, 2009. Available: http://www.math.hmc.edu/seniorthesis/archives/2009/ndurgin/
      ndurgin-2009-thesis.pdf.
 [66] M. Dyer and A. Frieze. Randomly coloring random graphs. Rand. Struc. Alg., 36:251–
      272, 2010.
 [67] D. Easley and J. Kleinberg. Networks, Crowds, and Markets: Reasoning about a Highly
      Connected World. Cambridge University Press, 2010.
 [68] M. Edelberg, M. R. Garey, and R. L. Graham. On the distance matrix of a tree. Disc.
      Math., 14:23–39, 1976.
 [69] N. D. Elkies and R. P. Stanley. The mathematical knight. Math. Intel., 25:22–34, 2003.
 [70] R. C. Entringer, D. E. Jackson, and D. A. Snyder. Distance in graphs. Czech. Math. J.,
      26:283–296, 1976.
 [71] P. Erdős and T. Gallai. Graphs with prescribed degrees of vertices (in Hungarian).
      Matematikai Lopak, 11:264–274, 1960.
 [72] P. Erdős and A. Rényi. On random graphs. Pub. Math., 6:290–297, 1959.
 [73] P. Erdős and A. Rényi. On the evolution of random graphs. Magyar Tud. Akad. Mat.
      Kutató Int. Közl., 5:17–61, 1960.
 [74] P. L. Erdős, I. Miklós, and Z. Toroczkai. A simple Havel-Hakimi type algorithm to realize
      graphical degree sequences of directed graphs. Elec. J. Comb., 17:R66, 2010.
 [75] M. Faloutsos, P. Faloutsos, and C. Faloutsos. On power-law relationships of the Internet
      topology. Comp. Comm. Rev., 29:251–262, 1999.
Bibliography                                                                                297

 [76] R. Ferrer i Cancho and R. V. Solé. The small world of human language. Proc. R. Soc.
      Lond. B, 268:2261–2265, 2001.
 [77] K. Florek, J. Lukaszewicz, J. Perkal, H. Steinhaus, and S. Zubrzycki. Sur la liaison et la
      division des points d’un ensemble fini. Colloquium Mathematicum, 2:282–285, 1951.
 [78] R. W. Floyd. Algorithm 97: Shortest path. Comm. ACM, 5:345, 1962.
 [79] L. R. Ford Jr. Network flow theory. Technical Report P-923, The Rand Corporation,
      USA, 1956.
 [80] L. R. Foulds. Graph Theory Applications. Springer, 1992.
 [81] G. N. Frederickson. An optimal algorithm for selection in a min-heap. Inf. Comp.,
      104:197–214, 1993.
 [82] M. L. Fredman and R. E. Tarjan. Fibonacci heaps and their uses in improved network
      optimization algorithms. J. ACM, 34:596–615, 1987.
 [83] G. Gallo and S. Pallottino. Netflow at Pisa, chapter Shortest path methods: A unifying
      approach, pages 38–64. Springer, 1986.
 [84] D. Garlaschelli. The weighted random graph model. New J. Phys., 11:073005, 2009.
 [85] E. N. Gilbert. Random graphs. Ann. Math. Stat., 30:1141–1144, 1959.
 [86] C. Godsil and G. Royle. Algebraic Graph Theory. Springer, 2004.
 [87] R. L. Graham and P. Hell. On the history of the minimum spanning tree problem. Ann.
      Hist. Comp., 7:43–57, 1985.
 [88] R. L. Graham and H. O. Pollak. On the addressing problem for loop switching. Bell
      Sys. Tech. J., 50:2495–2519, 1971.
 [89] I. Gribkovskaia, Ø. Halskau Sr., and G. Laporte. The bridges of Königsberg—a historical
      perspective. Networks, 49:199–203, 2007.
 [90] J. Gross and J. Yellen. Graph Theory and Its Applications. CRC Press, 1999.
 [91] J. W. Grossman and P. D. F. Ion. On a portion of the well-known collaboration graph.
      Congressus Numerantium, 108:129–131, 1995.
 [92] J. Guare. Six Degrees of Separation: A Play. Vintage, 1990.
 [93] I. Gutman, Y.-N. Yeh, S.-L. Lee, and Y.-L. Luo. Some recent results in the theory of
      the Wiener number. Indian J. Chem., 32A:651–661, 1993.
 [94] S. L. Hakimi. On realizability of a set of integers as degrees of the vertices of a linear
      graph I. SIAM J. App. Math., 10:496–506, 1962.
 [95] S. L. Hakimi. On realizability of a set of integers as degrees of the vertices of a linear
      graph II: Uniqueness. SIAM J. App. Math., 11:135–147, 1963.
 [96] S. L. Hakimi and J. Bredeson. Graph theoretic error-correcting codes. IEEE Trans. Inf.
      Theory, 14:584–591, 1968.
 [97] V. Havel. Poznámka o existenci konečných grafů. Časopis pro Pěstovánı́ Matematiky,
      80:477–480, 1955.
 [98] K. Heinrich and P. Horák. Euler’s theorem. Am. Math. Mont., 101:260–261, 1994.
 [99] C. A. R. Hoare. Quicksort. Comp. J., 5:10–15, 1962.
[100] A. E. Holroyd, L. Levine, K. Meszaros, Y. Peres, J. Propp, and D. B. Wilson. Chip-firing
      and rotor-routing on directed graphs. 2008. http://arxiv.org/abs/0801.3306.
[101] J. E. Hopcroft and R. E. Tarjan. Algorithm 447: Efficient algorithms for graph manip-
      ulation. Comm. ACM, 16:372–378, 1973.
[102] J. E. Hopcroft and R. E. Tarjan. Efficient planarity testing. J. ACM, 21:549–568, 1974.
[103] B. Hopkins and R. Wilson. The truth about Königsberg. College Math. J., 35:198–207,
      2004.
[104] W. G. Horner. A new method of solving numerical equations of all orders, by continuous
      approximation. Phil. Trans. R. Soc. Lond., 109:308–335, 1819.
[105] S. Howard. C algorithms (version 1.2.0), accessed 20th December 2010. http://
      c-algorithms.sourceforge.net.
[106] D. A. Huffman. A method for the construction of minimum-redundancy codes. In
      Proceedings of the I.R.E, volume 40, pages 1098–1102, 1952.
298                                                                              Bibliography

[107] M. Huxham, S. Beaney, and D. Raffaelli. Do parasites reduce the chances of triangulation
      in a real food web? Oikos, 76:284–300, 1996.
[108] V. Jarnı́k. O jistém problému minimálnı́m (Z dopisu panu O. Borůvkovi) (Czech). Práce
      Moravské Přı́rodovědecké Společnosti Brno, 6:57–63, 1930.
[109] T. R. Jensen and B. Toft. Graph Coloring Problems. John Wiley & Sons, 1995.
[110] H. Jeong, S. Mason, A.-L. Barabási, and Z. N. Oltvai. Lethality and centrality in protein
      networks. Nature, 411:41–42, 2001.
[111] H. Jeong, B. Tombor, R. Albert, Z. N. Oltvai, and A.-L. Barabási. The large-scale
      organization of metabolic networks. Nature, 407:651–654, 2000.
[112] D. B. Johnson. Efficient algorithms for shortest paths in sparse networks. J. ACM,
      24:1–13, 1977.
[113] J. H. Jones and M. S. Handcock. An assessment of preferential attachment as a mecha-
      nism for human sexual network formation. Proc. R. Soc. Lond. B, 270:1123–1128, 2003.
[114] C. Jordan. Sur les assemblages de lignes. Journal für die reine und angewandte Mathe-
      matik, 70:185–190, 1869.
[115] D. Jungnickel. Graphs, Networks and Algorithms. Springer, 3rd edition, 2008.
[116] D. Jungnickel and S. A. Vanstone. Graphical codes revisited. IEEE Trans. Inf. Theory,
      43:136–146, 1997.
[117] D. Kalman. Marriages made in the heavens: A practical application of existence. Math.
      Mag., 72:94–103, 1999.
[118] H. Kaplan and U. Zwick. A simpler implementation and analysis of Chazelle’s soft heaps.
      In C. Mathieu, editor, SODA, pages 477–485. SIAM, 2009.
[119] A. Kershenbaum and R. Van Slyke. Computing minimum spanning trees efficiently. In
      Proceedings of the ACM Annual Conference 25, pages 518–527. ACM, 1972.
[120] S. C. Kleene. Automata Studies, chapter Representation of Events in Nerve Nets and
      Finite Automata, pages 3–41. Princeton University Press, 1956.
[121] J. Kleinberg. The small-world phenomenon: An algorithmic perspective. In STOC, pages
      163–170. ACM, 2000.
[122] D. E. Knuth. The Stanford GraphBase: A Platform for Combinatorial Computing.
      Addison-Wesley, 1993.
[123] D. E. Knuth. Seminumerical Algorithms, volume 2 of The Art of Computer Programming.
      Addison-Wesley, 3rd edition, 1998.
[124] D. E. Knuth. Sorting and Searching, volume 3 of The Art of Computer Programming.
      Addison-Wesley, 2nd edition, 1998.
[125] V. F. Kolchin. Random Graphs. Cambridge University Press, 1999.
[126] L. G. Kraft. A device for quantizing, grouping, and coding amplitude-modulated pulses.
      Master’s thesis, Massachusetts Institute of Technology, USA, 1949.
[127] J. B. Kruskal. On the shortest spanning subtree of a graph and the traveling salesman
      problem. Proc. AMS, 7:48–50, 1956.
[128] K. Kuratowski. Sur le problème des courbes gauches en topologie. Fundamenta Mathe-
      maticae, 15:271–283, 1930.
[129] J. C. Lagarias. The 3x + 1 problem and its generalizations. Am. Math. Mont., 92:3–23,
      1985.
[130] J. C. Lagarias. The 3x+1 problem: An annotated bibliography (1963–1999), 03rd August
      2009. arXiv:math/0309224, http://arxiv.org/abs/math.NT/0309224.
[131] J. C. Lagarias. The 3x+1 problem: An annotated bibliography, II (2000-2009), 27th Au-
      gust 2009. arXiv:math/0608208, http://arxiv.org/abs/math.NT/0608208.
[132] V. Latora and M. Marchiori. Economic small-world behavior in weighted networks. Eur.
      Phys. J. B, 32:249–263, 2003.
[133] H. T. Lau. A Java Library of Graph Algorithms and Optimization. Chapman & Hal-
      l/CRC, 2007.
Bibliography                                                                                299

[134] C. Y. Lee. An algorithm for path connections and its applications. IRE Transactions on
      Electronic Computers, EC-10:346–365, 1961.
[135] D. H. Lehmer. Mathematical methods in large-scale computing units. In Proceedings of
      the Second Symposium on Large-Scale Digital Calculating Machinery, 1949.
[136] J. Leskovec, J. M. Kleinberg, and C. Faloutsos. Graphs over time: Densification laws,
      shrinking diameters and possible explanations. In R. Grossman, R. J. Bayardo, and K. P.
      Bennett, editors, KDD, pages 177–187. ACM, 2005.
[137] J. Leskovec, K. J. Lang, A. Dasgupta, and M. W. Mahoney. Statistical properties of
      community structure in large social and information networks. In J. Huai, R. Chen, H.-
      W. Hon, Y. Liu, W.-Y. Ma, A. Tomkins, and X. Zhang, editors, WWW, pages 695–704.
      ACM, 2008.
[138] F. Liljeros, C. R. Edling, L. A. N. Amaral, H. E. Stanley, and Y. Åberg. The web of
      human sexual contacts. Nature, 411:907–908, 2001.
[139] M. Löbbing and I. Wegener. The number of knight’s tours equals 33,439,123,484,294 —
      counting with binary decision diagrams. Elec. J. Comb., 3:R5, 1996.
[140] H. Loberman and A. Weinberger. Formal procedures for connecting terminals with a
      minimum total wire length. J. ACM, 4:428–437, 1957.
[141] M. E. Lucas. Récréations Mathématiques. 4 volumes, Gauthier-Villars, Paris, 1882–94.
[142] M. Mareš. The saga of minimum spanning trees. Comp. Sci. Rev., 2:165–221, 2008.
[143] N. D. Martinez. Artifacts or attributes? Effects of resolution on the Little Rock Lake
      food web. Ecological Monographs, 61:367–392, 1991.
[144] B. McKay. Description of graph6 and sparse6 encodings, accessed 05th April 2010.
      http://cs.anu.edu.au/∼bdm/data/formats.txt.
[145] B. D. McKay. Knight’s tours of an 8 × 8 chessboard. Technical Report TR-CS-97-03,
      Department of Computer Science, Australian National University, Australia, February
      1997.
[146] B. McMillan. Two inequalities implied by unique decipherability. IRE Transactions on
      Information Theory, 2:115–116, 1956.
[147] A. J. Menezes, P. C. van Oorschot, and S. A. Vanstone. Handbook of Applied Cryptog-
      raphy. CRC Press, 1996.
[148] C. Merino. Matroids, the tuttle polynomial, and the chip firing game. 1999. http://
      calli.matem.unam.mx/∼merino/ewpublications.html#2, http://www.dmtcs.org/dmtcs-ojs/
      index.php/proceedings/article/viewArticle/dmAA0118, (The first link is for the thesis (in
      ps format); the second is to a paper.).
[149] R. C. Merkle. A digital signature based on a conventional encryption function. In
      C. Pomerance, editor, CRYPTO, pages 369–378. Springer, 1988.
[150] S. Milgram. The small world problem. Psychology Today, 1:60–67, 1967.
[151] B. Mohar, D. Babić, and N. Trinajstić. A novel definition of the Wiener index for trees.
      J. Chem. Inf. Comp. Sci., 33:153–154, 1993.
[152] E. F. Moore. The shortest path through a maze. In Proceedings of the International
      Symposium on the Theory of Switching, pages 285–292, 1959.
[153] S. Myles, A. R. Boyko, C. L. Owens, P. J. Brown, F. Grassi, M. K. Aradhya, B. Prins,
      A. Reynolds, J.-M. Chia, D. Ware, C. D. Bustamante, and E. S. Buckler. Genetic
      structure and domestication history of the grape. PNAS, 108:3530–3535, 2011.
[154] M. Newman, A.-L. Barabási, and D. J. Watts, editors. The Structure and Dynamics of
      Networks. Princeton University Press, 2006.
[155] M. E. J. Newman. Scientific collaboration networks: I. Network construction and fun-
      damental results. Phys. Rev. E, 64:016131, 2001.
[156] M. E. J. Newman. The structure of scientific collaboration networks. PNAS, 98:404–409,
      2001.
[157] M. E. J. Newman. Mixing patterns in networks. Phys. Rev. E, 67:026126, 2003.
300                                                                             Bibliography

[158] M. E. J. Newman. The structure and function of complex networks. SIAM Rev., 45:167–
      256, 2003.
[159] M. E. J. Newman, S. H. Strogatz, and D. J. Watts. Random graphs with arbitrary degree
      distribution and their applications. Phys. Rev. E, 64:026118, 2001.
[160] E. Nuutila. Efficient Transitive Closure Computation in Large Digraphs. Finnish
      Academy of Technology, 1995. http://www.cs.hut.fi/∼enu/thesis.html.
[161] J. Oxley. What is a matroid? Cubo Matemática Educacional, 5:179–218, 2003.
[162] D. Perkinson, J. Perlman, and J. Wilmes. Primer on the algebraic geometry of sandpiles.
      2009. http://people.reed.edu/∼davidp/412/handouts/primer091810.pdf.
[163] J. G. Perlman. Sandpiles: a bridge between graphs and toric ideals. 2009. Thesis, Reed
      College, http://people.reed.edu/∼davidp/homepage/seniors/perlman.pdf.
[164] J. Petersen. Sur le théorème de tait. L’Intermédiaire des Mathématiciens, 5:225–227,
      1898.
[165] G. Polya. How To Solve It: A New Aspect of Mathematical Method. Princeton University
      Press, 2nd edition, 1957.
[166] R. C. Prim. Shortest connection networks and some generalizations. Bell Sys. Tech. J.,
      36:1389–1401, 1957.
[167] R. Rasmussen. Algorithmic Approaches for Playing and Solving Shannon Games. PhD
      thesis, Queensland University of Technology, Australia, 2007. http://eprints.qut.edu.au/
      18616/.
[168] S. Redner. How popular is your paper? An empirical study of the citation distribution.
      Eur. Phys. J. B, 4:131–134, 1998.
[169] K. H. Rosen. Elementary Number Theory and Its Applications. Addison Wesley Long-
      man, 4th edition, 2000.
[170] B. Roy. Transitivité et connexité. Comptes Rendus des Séances de l’Académie des
      Sciences, 249:216–218, 1959.
[171] V. Runde. A Taste of Topology. Springer, 2005.
[172] R. Sedgewick. Algorithms in C. Addison-Wesley Publishing Company, 1990.
[173] P. O. Seglen. The skewness of science. J. Am. Soc. Inf. Sci., 43:628–638, 1992.
[174] P. Sen, S. Dasgupta, A. Chatterjee, P. A. Sreeram, G. Mukherjee, and S. S. Manna.
      Small-world properties of the Indian railway network. Phys. Rev. E, 67:036106, 2003.
[175] A. Shimbel. Structure in communications nets. In Proceedings of the Symposium on
      Information Networks, pages 199–203, 1955.
[176] S. Shirali and H. L. Vasudeva. Metric Spaces. Springer, 2006.
[177] V. Shoup. A Computational Introduction to Number Theory and Algebra. Cambridge
      University Press, 2nd edition, 2008. http://www.shoup.net/ntb.
[178] G. Sierksma and H. Hoogeveen. Seven criteria for integer sequences being graphic. J.
      Graph Theory, 15:223–231, 1991.
[179] H. A. Simon. On a class of skew distribution functions. Biometrika, 42:425–440, 1955.
[180] D. R. Stinson. Cryptography: Theory and Practice. Chapman & Hall/CRC, 2nd edition,
      2002.
[181] M. Szydlo. Merkle tree traversal in log space and time. In C. Cachin and J. Camenisch,
      editors, EUROCRYPT, pages 541–554. Springer, 2004.
[182] T. Takaoka. O(1) time algorithms for combinatorial generation by tree traversal. Comp.
      J., 42:400–408, 1999.
[183] T. Takaoka. Theory of 2-3 heaps. In T. Asano, H. Imai, D. T. Lee, S.-I. Nakano, and
      T. Tokuyama, editors, COCOON. Springer, 1999.
[184] R. E. Tarjan. Depth-first search and linear graph algorithms. SIAM J. Comp., 1:146–160,
      1972.
[185] G. Tarry. Le problème des labyrinthes. Nouvelles Annales de Mathématique, 14:187–190,
      1895.
Bibliography                                                                             301

[186] W. Trappe and L. C. Washington. Introduction to Cryptography with Coding Theory.
      Pearson Education, 2nd edition, 2006.
[187] J. Travers and S. Milgram. An experimental study of the small world problem. Sociom-
      etry, 32:425–443, 1969.
[188] D. Trietsch. Euler’s problem of polygon division and full steiner topologies–a dual-
      ity. Technical Report 625, Center for Mathematical Studies in Economics and Man-
      agement Science, Northwestern University, USA, October 1984. http://econpapers.repec.
      org/paper/nwucmsems/625.htm.
[189] A. Tripathi and S. Vijay. A note on a theorem of Erdős & Gallai. Disc. Math., 265:417–
      420, 2003.
[190] S. Valverde, R. F. Cancho, and R. V. Solé. Scale-free networks from optimal design.
      Euro. Lett., 60:512–517, 2002.
[191] A. Vázquez, R. Pastor-Satorras, and A. Vespignani. Large-scale topological and dynam-
      ical properties of the Internet. Phys. Rev. E, 65:066130, 2002.
[192] J. S. Vitter. Random sampling with a reservoir. ACM Tran. Math. Soft., 11:37–57, 1985.
[193] J. Vuillemin. A data structure for manipulating priority queues. Comm. ACM, 21:309–
      315, 1978.
[194] H. Walther. Ten Applications of Graph Theory. Kluwer Academic Publishers, 1984.
[195] S. Warshall. A theorem on boolean matrices. J. ACM, 9:11–12, 1962.
[196] D. J. Watts. Networks, dynamics, and the small-world phenomenon. Am. J. Soc.,
      105:493–527, 1999.
[197] D. J. Watts. Small Worlds. Princeton University Press, 1999.
[198] D. J. Watts. Six Degrees: The Science of a Connected Age. W. W. Norton & Company,
      2004.
[199] D. J. Watts and S. H. Strogatz. Collective dynamics of ‘small-world’ networks. Nature,
      393:440–442, 1998.
[200] J. G. White, E. Southgate, J. N. Thompson, and S. Brenner. The structure of the
      nervous system of the nematode Caenorhabditis elegans. Phil. Trans. R. Soc. Lond. B,
      314:1–340, 1986.
[201] H. Whitney. Congruent graphs and the connectivity of graphs. Am. J. Math., 54:150–168,
      1932.
[202] H. Wiener. Structural determination of paraffin boiling points. J. Am. Chem. Soc.,
      69:17–20, 1947.
[203] J. W. J. Williams. Algorithm 232: Heapsort. Comm. ACM, 7:347–348, 1964.
[204] T. Yamada, S. Kataoka, and K. Watanabe. Listing all the minimum spanning trees in
      an undirected graph. Int. J. Comp. Math., 87:3175–3185, 2010.
[205] T. Yamada and H. Kinoshita. Finding all the negative cycles in a directed graph. Disc.
      App. Math., 118:279–291, 2002.
[206] J. Yang and Y. Chen. Fast computing betweenness centrality with virtual nodes on large
      sparse networks. PLoS ONE, 6:e22557, 2011.
[207] V. Yegnanarayanan. Graph theory to pure mathematics: Some illustrative examples.
      Resonance, 10:50–59, 2005.
[208] Y.-N. Yeh and I. Gutman. On the sum of all distances in composite graphs. Disc. Math.,
      135:359–365, 1994.
[209] W. W. Zachary. An information flow model for conflict and fission in small groups. J.
      Anth. Res., 33:452–473, 1977.
Index

A(G), 18             rad(G), 199
C 0 (G, F ), 227     , 34
C 1 (G, F ), 227     td, 90
Cn , 16              ε, 134, 137
En , 48              ϕ(n), 114
Gc , 33              f -augmenting, 239
Kn , 15              f -saturated, 239
Km,n , 17            f -unsaturated, 239
Ln , 34              f -zero, 239
Pn , 16, 34          k-connected, 202
Qn , 34              k-edge-connected, 203
Wn , 29              n-queens problem, 100
∆, 29                n-space, 131
∆(G), 9              graph6, 53, 55, 57, 58
adj, 4               sparse6, 55, 57
L, 21, 41            Lukaszewicz, J., 122
L(G), 8
Ni , 261             edge expander family, 207
∼
=, 22
deg, 5, 8            active vertex, 232
deg+ , 6             acyclic, 104, 116, 145
deg− , 7             Adelson-Velskiı̆, G. M., 179
δ(G), 9              adjacency matrix, 18
depth(v), 105            reduced, 19
diam(G), 199             signed edge, 214
dir, 91              algorithm
, 197                   greedy, 75, 76, 116, 119
, 257                   optimization, 110
height(T ), 105          random, 50, 103, 145–147, 249, 250, 254,
iadj, 5                       256, 257, 259, 266, 268, 269, 272
id, 5                    recursive, 150
κ(G), 202            alphabet, 39, 40, 129, 133
κe (G), 203              binary, 134, 135
κv (G), 201              English, 129, 147
λ(G), 203                weighted, 129, 136
lg, 157              Altito, Noelie, 84
oadj, 5              arcs, 3
od, 5                Argentina, 93, 94
ω, 13                ASCII, 55, 57, 129
G, 33                augmenting path, 239
per(G), 199          Australia, 93, 94

                   302
Index                                                                                303

Australian National University, 55                coefficient, 165, 191
automata theory, 38, 84                           distribution, 249
AVL tree, 179, 195                                random graph, 251
    height-balance property, 179                  tree, 165
                                             binomial heap, 152, 164, 165, 167, 193
backtrack, 65                                     maximum, 193
    algorithm, 101                                minimum, 193
Baker, Matthew, 197                               order property, 167, 168, 193
balanced bracket problem, 97, 98                  properties, 167
Bangkok, 93, 94                                   root-degree property, 167, 168
Barabási-Albert model, 263                  biology, 196
Batagelj, Vladimir, 252, 271                 bipartite graph, 16, 17, 50, 271, 272
Batagelj-Brandes algorithm, 252, 254              complete, 17
Baudot, E., 130                              bit, 57, 129, 134
Beijing, 93, 94                                   least significant, 57
Bell, Jordan, 101                                 most significant, 57
Bellman, Richard E., 76                           parity, 57
Bellman-Ford algorithm, 72, 76–79, 84, 85, bit vector, 55, 57, 58
         92                                       length, 57
Benjamin, Arthur T., 151                     bond, 31, 110, 228
Berlin, 93, 94                               Borůvka
Bernoulli family, 106                             algorithm, 116, 122, 124, 144, 145, 150
BFS, 59–63, 65, 69                                Otakar, 116, 122
big-endian, 57, 58                           bowtie graph, 12
Biggs, Norman, 136                           braille, 129
binary heap, 152, 154, 179                   branch cut, 107, 109
    heap-structure property, 179             Brandes, Ulrik, 252, 271
    maximum, 191                             Brasilia, 93, 94
    minimum, 191                             Brazil, 93, 94
    order property, 155, 193                 breadth-first search, 59–63, 68, 69, 71–73,
    sift-down, 160                                    88, 91, 97, 109, 139, 140
    sift-up, 158                                  tree, 59, 62
    structure property, 155                  bridge, 31, 105, 111, 122, 203
binary search, 88, 90, 174                   bridgeless, 203
binary search tree, 152, 172, 174, 179, 181, Briggs
         182                                      algorithm, 270
    left subtree property, 172                    Keith M., 270
    property, 172, 182, 193                  BST, 172
    recursion property, 172                  bubble sort, 95, 96
    right subtree property, 172              Buenos Aires, 93, 94
binary tree, 107, 109, 126–128, 147, 152     butterfly graph, 12
    complete, 126, 179
    nearly complete, 155, 179                Caenorhabditis elegans, 246
    random, 128, 147                         Canada, 93, 94
Binet                                        canonical label, 24
    formula, 195                             Cantor-Schröder-Bernstein theorem, 50
    Jacques Philippe Marie, 195              capacity, 238
binomial                                          cut, 240
304                                                                        Index

card, 65                                  prefix, 129
cardinality, 8                            prefix-free, 129, 135, 147
Carroll, Lewis, 2                         radix, 150
Cartesian product, 34, 35                 reliability, 129
Catalan                                   security, 129
    number, 48, 127                       tree representation, 134
    recursion, 127                        uniquely decodable, 135
characteristic polynomial, 213            variable-length, 129
Chazelle, Bernard, 193               codeword, 129, 134
check matrix, 20                          length, 136
chemistry, 81, 196                   coding function, 129
chess, 63, 100, 129                  Cohen, Danny, 57
    chessboard, 63                   Collatz
    knight, 63                            conjecture, 148
    knight piece, 63                      graph, 148, 149
    knight’s tour, 63–65, 100             length, 148
    queen, 100, 101                       sequence, 148
child                                     tree, 148, 149
    left, 126, 139, 144              color code, 129
    right, 126, 139, 144             coloring
China, 93, 94                             edge, 37
Chinese ring puzzle, 130, 131             vertex, 37, 38
chip firing game, 232                combinatorial generation, 191
chip-firing game, 232                combinatorial graphs, 2
chip-firing games, 232               combinatorics, 131
CHKNS model, 270                     communications network, 205
Choquet, G., 122                     complement, 33
Chu Shi-Chieh, 191                   complete graph, 15, 146, 147, 249, 254, 256,
Chvátal graph, 145, 146                       259, 260, 268, 269
circuit, 12                          component, 13, 28, 111
    board, 59                             connected, 116
    electronic, 115                  computer science, 38, 139
circulation, 228                     condensed matter, 247
circulation space, 228, 229          configuration, 232, 234
classification tree, 105, 106, 110        critical, 235
claw graph, 202                           level, 238
closed form, 127                          recurrent, 235
cocycle code, 229                         stable, 235
cocycle space, 229                        starting, 232
cocyle, 228                               weight, 238
code, 129, 134                       connected graph, 13, 110
    r-ary, 150                       connectivity, 97
    binary, 129, 134, 135            cost, 70
    block, 129                       Coward, Noel, 11
    economy, 129                     critical configurations, 236
    error-correcting, 20, 129        critical group, 236, 238
    linear, 131                      cryptosystem, 129
    optimal, 136                     cut
Index                                                                      305

    set, 31, 112                                 minimum, 73
cut set, 228                                     total, 90
cut space, 229                               distance distribution, 248
cut-edge, 202, 203                           distribution
cut-point, 201                                   binomial, 254
cut-vertex, 201, 202                             geometric, 253, 255
cycle, 12, 71, 72, 86, 104, 105, 111, 113        Poisson, 255
    fundamental, 113, 147                        uniform, 254
    negative, 71, 72, 77, 79, 84–86, 103     divide and conquer, 103
cycle code, 228                              dollar game, 234
cycle double cover conjecture, 203           Dryden, John, 59
cycle graph, 16, 50                          dynamic programming, 79
cycle space, 228
                                               eccentricity, 197, 198
D’Angelo, Anthony J., 144                          mutual, 215
Dörrie, Heinrich, 48                              path, 215
data structure, 52, 152                            vertex, 215
de Moivre, Abraham, 195                        edge, 3
de Montmort, Pierre Rémond, 99                    boundary, 207
decode, 129                                        capacity, 238
degree, 5, 8                                       contraction, 32
    matrix, 21                                     cut, 31, 110, 209
    maximum, 9, 109                                deletion, 31
    minimum, 9, 114                                deletion subgraph, 31
    sequence, 24, 114                              directed, 4
    weighted, 7                                    endpoint, 116
degree distribution, 244–247, 254, 264, 265        expansion, 207
depth-first search, 59, 63, 65–69, 72, 88, 91,     head, 6
         97, 109, 140                              incident, 3
    tree, 65, 68                                   multigraph, 6
de Moivre, Abraham, 99                             multiple, 3
DFA, 39, 40                                        tagging game, 110
DFS, 63, 65–69                                     tail, 6
diameter, 62, 63                                   weight, 6
Digital Signature Algorithm, 150               edge cut subgraph, 228
digraph, 5, 105                                edge cutset, 228
    weighted, 70                               edge-cut, 202
Dijkstra                                       Edmonds, Jack, 110
    algorithm, 14, 73–77, 84, 85, 92, 152      eigenvalue, 150
    E. W., 73, 119                             element
Dirac’s theorem, 212                               random, 127
directedness, 91                               Elkies, Noam D., 65
disconnected graph, 13                         encode, 129
disconnecting set, 31                          endianness, 57
distance, 52, 62, 63, 70, 71, 73, 77, 79, 105 England, 93, 94, 101
    characteristic, 247                        entropy
    function, 70, 71, 196, 197, 215                encoding, 129
    matrix, 22, 71                                 function, 129
306                                                                             Index

Erdős, Paul, 25                           FRW, 77, 79
error rate, 129                            function plot, 2
Euclidean algorithm, 87                    fundamental cycles, 230
Euler
    Leonhard, 1, 9, 47, 48, 114          Gallai, Tibor, 25
    phi function, 114, 148               Garlaschelli, Diego, 270
    phi sequence, 114, 115               genetic code, 129
    polygon division problem, 47, 48     Germany, 93, 94
    subgraph, 12                         Gilbert, E. N., 255
Euler subgraph, 228                      girth, 12
Eulerian trail, 1                        Goldbach, Christian, 47
expander graph, 207                      Goldberg, R., 77
                                         golden ratio, 151, 195
Faber, Xander, 197                       Graham, Ronald L., 201
family tree, 14, 105, 106                graph, 3
fault-tolerant, 205                          applications, 36
Fermat’s little theorem, 50                  connected, 13, 69, 70
Fibonacci                                    dense, 54, 79
     number, 179                             directed, 5
     sequence, 195                           disconnected, 13
     tree, 179, 181–183, 194                 intersection, 28
FIFO, 60, 65                                 join, 29
filesystem, 105                              line, 8
     hierarchy, 105                          nonisomorphic, 48
finite automaton, 38, 39, 50                 simple, 8
     deterministic, 39, 40                   sparse, 18, 54, 79, 84, 85
     nondeterministic, 40, 41                traversal, 59
first in, first out, 60                      trivial, 114, 122
flag semaphore, 129                          undirected, 3
Florek, K., 122                              union, 28
Florentine families, 37                      unweighted, 3
flow, 228, 239                               weighted, 6, 70, 116, 119
     value, 239                          graph isomorphism, 22, 24
flow chart, 52                           graph minor, 36
flow space, 228                          graphical sequence, 25, 26
Floyd, Robert, 79                        Gray code, 130, 131
Floyd-Roy-Warshall algorithm, 77, 79–81,     m-ary, 130
          83, 84, 92, 200, 201               binary, 130, 131
football, 129                                reflected, 131–133
forbidden minor, 36                      Gray, Frank, 130
Ford, Lester Randolph, Jr., 76           Gribkovskaia, Irina, 1
forest, 104, 105                         grid, 35
Foulds, L. R., 37                            graph, 102, 103, 105, 107, 118, 119, 145,
Franklin graph, 22                                147
Frederickson, Greg N., 193               Gros, L., 130
FreeBSD, 52                              group theory
frequency distribution, 258                  computational, 131
friendship graph, 213                    Gulliver’s Travels, 57
Index                                                                               307

Hakimi, S. L., 25                              structural, 145
Halskau Sr., Øyvind, 1                    infix notation, 98
Hamming distance, 34                      information channel, 129
Hampton Court Palace, 101                 insertion sort, 96
handshaking lemma, 9                      Internet, 263
Havel, Václav, 25                             topology, 264
Havel-Hakimi                              interpolation search, 90
    test, 26                              invariant, 23, 27
    theorem, 25                           isomorphism, 114
heap                                      isoperimetric number, 207
    2-heap, 119
    k-ary, 76                             Japan, 93, 94
    binary, 76                            Jarnı́k, V., 119
    binary minimum, 137                   Johnson
    Fibonacci, 76, 84, 119                    algorithm, 72, 84, 85, 92
heapsort, 154                                 Donald B., 84
Heinrich, Katherine, 50                   join, 113
hierarchical structure, 14, 104, 105      Jordan, Camille, 200
Hoare, C. A. R., 97                       Königsberg, 1
Hopcroft, John E., 63                         graph, 2, 6
Hopkins, Brian, 1                             seven bridges puzzle, 1, 9
Horák, Peter, 50                         Kaliningrad, 1
Horner                                    Kaplan, Haim, 193
    method, 87                            Kataoka, Seiji, 144
    W. G., 87                             Kinoshita, Harunobu, 103
house graph, 3                            Kleene
Huffman                                       algorithm, 84
    David, 136                                Stephen, 84
    tree, 152                             Klein, Felix, 2
Huffman code, 135–138, 140, 147           Kneser graph, 53–55
    binary, 136                           Knuth
    encoding, 139                             Algorithm S, 270
    tree construction, 136                    Donald E., 49, 90, 95, 96, 130, 270
    tree representation, 137, 138, 140    Kraft
Humpty Dumpty, 2                              inequality, 150, 151
hypercube graph, 34, 35, 131                  Leon Gordon, 151
                                              theorem, 151
in-neighbor, 5                            Kruskal
incidence                                     algorithm, 116–119, 144, 145, 150
    function, 6                               Joseph B., 116
    matrix, 21
incidence matrix                          ladder graph, 34
    oriented, 21                          Lagarias, Jeffrey C., 148
    unoriented, 21                        Landis, E. M., 179
indegree, 5                               language, 41
    unweighted, 6, 7                          regular, 41
India, 93, 94                             Laplacian, 236
induction, 111, 114, 126, 135, 136, 145       reduced, 238
308                                                                  Index

Laplacian matrix, 21, 150, 214   McKay, Brendan D., 55, 65
Laporte, Gilbert, 1              McMillan
last in, first out, 65              Brockway, 150
Latora, V., 270                     theorem, 150
Latora-Marchiori model, 270      Menezes, Alfred J., 95
lattice, 35                      Menger’s theorem, 209, 210
Lee, C. Y., 59                   merge sort, 169
legal firing sequence, 235       Merkle, Ralph C., 150
Lehman, A., 110                  Merris-McKay theorem, 150
Lehmer, D. H., 49                mesh, 35, 36
level                            message, 133
     binary tree, 155            metabolic network, 263
     tree, 194                   metric, 71, 197
LIFO, 65                            function, 70
Lima, 93, 94                     metric graph, 197
line graph, 8                    metric space, 71
linear search, 88                   finite, 71
Linux, 105                       Milgram, Stanley, 257
list, 53, 60, 62, 65, 76, 137    minimum cut problem, 240
     adjacency, 53, 54, 62       minimum spanning tree problem, 116
     contiguous edge, 55, 259    molecular graph, 36, 37, 81
     edge, 55                    Montmort-Moivre strategy, 100
     element, 53                 Moore, Edward F., 59, 76
     empty, 53                   Morse code, 130, 135, 147
     length, 53                  Moscow, 93, 94
little-endian, 57                MST, 116
Loberman, H., 116                multi-undirected graph, 5
Loebbing, Martin, 65             multidigraph, 5, 39
London, 93, 94                   multigraph, 5
Lucas                               adjacency, 7
     M. Édouard, 63, 151           in-neighbor, 7
     number, 151                    out-neighbor, 7
                                 Munroe, Randall, 52, 63, 73, 76, 104, 152,
Madrid, 93, 94                           219, 220
Marchiori, M., 270               musical score, 129
marriage ties, 37
matrix, 17                       neighbor graph, 261
   adjacency, 18, 53, 54, 58     network, 38, 238
   bi-adjacency, 19                  biological, 246, 257
   distance, 201                     citation, 264
   main diagonal, 58                 collaboration, 264
   transpose, 47                     communication, 110
   upper triangle, 58                flow, 38
Matthew effect, 263                  information, 257
max-flow min-cut theorem, 240        social, 247, 257, 264
   generalized, 241                  technological, 246, 257
maximum flow problem, 239            Zachary karate club, 245
maze, 59, 63, 101                New Delhi, 93, 94
Index                                                                             309

NFA, 40, 41                                   graph, 37, 38, 68, 69, 202, 203
node, 3                                       Julius, 68
noisy channel, 129                        planar graph, 37, 48
null graph, 4, 263                        plane, 102
Nuutila, Esko, 84                         Pollak, O., 201
                                          postfix notation, 98
operations research, 38                   power grid, 246
order, 3                                  preferential attachment, 262, 263, 266
organism, 106, 110                        prefix-free condition, 129
orientation, 6, 21                        Pregel River, 1
    probability, 91                       Pretoria, 93, 94
oriented graph, 250                       Prim
    random, 250, 253                          algorithm, 116, 119–121, 123, 144, 145,
Ottawa, 93, 94                                     150, 152
out-neighbor, 5, 60, 68, 72, 73               R. C., 116, 119
outdegree, 5                              priority queue, 152, 153
    unweighted, 7                         probability, 136
outer boundary, 207                           expectation, 136
overfull graph, 47                            sample space, 127
Oxley, James, 110                             space, 249
Paley graph, 208                          pseudorandom number, 49, 253
parallel forest-merging, 122              Python, 18
parallelization, 122                      queue, 60, 62, 65, 69, 73, 140
partition, 50                                 dequeue, 60, 62, 140, 142
Pascal                                        end, 60
    formula, 167, 191                         enqueue, 60, 62, 140, 142
path, 12, 104, 105                            front, 60
    closed, 12                                length, 60
    distance, 70                              minimum-priority, 84, 119, 137
    even, 12                                  priority, 137
    geodesic, 13                              rear, 60
    graph, 34                                 start, 60
    Hamiltonian, 131                      quicksort, 97
    internally disjoint, 205
    length, 70, 71, 105                   Ramanujan graph, 208
    odd, 12                               random graph, 244
    shortest, 52, 70–73, 75, 77, 79, 84       Bernoulli, 248
    tree, 112, 113                            binomial, 248, 258
    weighted, 84                              Erdős-Rényi, 255
path graph, 16                                uniform, 255
pendant, 8, 113                               weighted, 270
perfect square, 106                       random variable
Perkal, J., 122                               geometric, 253
permutation                               Rasmussen, Rune, 110
    equivalent, 23                        recurrence relation, 194, 195
    random, 147                           recursion, 79, 110, 111, 122, 124, 136, 142,
Peru, 93, 94                                      144, 145
Petersen                                  reduced Laplacian, 238
310                                                                       Index

regular expression, 41               shortest path, 13
regular graph, 9, 50                 Simon, Herbert, 263
    k-circulant, 50, 51, 258, 259    simple graph, 8, 147, 258
    r-regular, 9, 51                      random, 249, 254, 256, 257, 268, 269
relative complement, 33              single-source shortest path, 73, 76
remainder, 57                        six degrees of separation, 257
Renaissance, 37                      size, 3
reservoir sampling, 270                   component, 271
residual digraph, 240                     tree, 111–113
residual network, 240                small-world, 51, 63, 259
reverse Polish notation, 98               algorithm, 259
rich-get-richer effect, 263               characteristic path length, 259
river crossing problem, 97                clustering coefficient, 259, 261
Robertson, Neil, 36                       effect, 257
Robertson-Seymour theorem, 36             experimental results, 258
Roget’s Thesaurus, 257                    network, 259
root directory, 105                  social network, 196
root list, 168                       social network analysis, 37
rotor-routing model, 232             South Africa, 93, 94
Roy, Bernard, 79                     Spain, 93, 94
RSA, 150                             spanning forest, 122
Runde, Volker, 71                    spanning subgraph, 14
Russia, 1, 93, 94                    spanning tree, 37, 105, 107, 110, 115–117,
                                               145, 147, 151
sandpile model, 234                       maximum, 144
saturated edge, 239                       minimum, 115–117, 119–124, 145
scale-free network, 266, 271, 272         randomized construction, 145, 146, 150
scatterplot, 2, 115, 133             sparse graph, 252
Schulz, Charles M., 189              spectrum, 213
scientific collaboration, 247             Laplacian, 214
Sedgewick, Robert, 90, 95, 96, 101   stack, 65, 68, 69, 140
seg, 228                                  length, 65
selection sort, 95, 96                    pop, 65, 68, 140, 142, 144
self-complementary graph, 33              push, 65, 68, 140, 142, 144
self-loop, 4                         Stanley, Richard P., 65
separating set, 31, 209              star graph, 17
set, 53                              state, 39, 40
     n-set, 2                             accepting, 39, 40
     totally ordered, 153                 diagram, 39, 40
Seymour                                   final, 39, 40, 97
     Paul, 36, 203                        initial, 39, 40, 97
Shannon                              Steinhaus, H., 122
     Claude E., 8, 110               Stevens, Brett, 101
     multigraphs, 8, 9               Stinson, Douglas R., 95
     switching game, 110, 111        string, 39, 129, 133
shellsort, 96                             accepted, 41
Shimbel, A., 76                           empty, 137
Shirali, Satish, 71                  Strogatz, Steven H., 257
Index                                                                          311

subgraph, 11, 14                         binary, 105, 135, 137, 142
    edge-deletion, 115, 116, 150         complete, 105, 110
subtree, 110, 142                        depth, 105
    left, 126, 144                       directed, 105
    right, 126, 144                      expression, 105, 106
supergraph, 14                           height, 105
Swift, Jonathan, 57                      nonisomorphic, 105, 107, 108
Sydney, 93, 94                           ordered, 105, 139
symbol, 133                              recursive definition, 110, 111, 145
symbolic computation, 97                 rooted, 14, 59, 68, 105, 109, 126
symmetric difference, 29                 subtree, 111
Szekeres, G., 203                        traversal, 139, 141
                                     triangle inequality, 71, 86, 197
Takaoka, Tadao, 191, 193             Tripathi, Amitabha, 25
Tanner graph, 20                     trivial graph, 15, 105, 270
Tarjan, Robert Endre, 63             tuple, 2
Tarry, Gaston, 63
telegraph, 130                       union
Thailand, 93, 94                         digraph, 114, 115
The Brain puzzle, 131                union-find, 145
Thoreau, Henry David, 8              Unix, 105
threshold                            unweighted degree, 7
                                     USA, 93, 94, 246, 264
     probability, 91
Through the Looking Glass, 2         value of flow, 239
Tokyo, 93, 94                        van Oorschot, Paul C., 95
topology, 71                         Vandermonde
total order, 153                         Alexandre-Théophile, 191
Tower of Hanoi puzzle, 131               convolution, 191
trail, 11, 12                        Vanstone, Scott A., 95
     closed, 12                      Vasudeva, Harkrishan L., 71
transition                           vending machine, 38–40
     function, 39, 40                vertex, 3
     table, 39                           adjacent, 3
transition probability matrix, 229       child, 105, 109
transitive closure, 83, 84               cut, 31, 209
trapdoor function, 129                   degree, 9
Trappe, Wade, 95                         deletion, 30, 142
traveling salesman problem, 37, 52       deletion subgraph, 29, 201
traversal                                endpoint, 104, 105
     bottom-up, 142, 143, 150            expansion, 207
     in-order, 142–144, 150, 172         head, 4
     level-order, 139–142, 150           internal, 105, 205
     post-order, 140, 142, 150           isolated, 8, 53, 110
     pre-order, 140, 141, 150            isoperimetric number, 207
treasure map, 1                          leaf, 104, 105, 134, 142
tree, 14, 59, 104, 105, 113              multigraph, 6
     2-ary, 126                          parent, 105
     n-ary, 105                          root, 14, 105, 107, 109, 134
312                                                             Index

    set, 3                               number, 81, 150
    source, 73, 86                    Williams, J. W. J., 154
    tail, 4                           Wilson, Robin, 1
    union, 28                         wine, 216, 217
vertex connectivity, 201              word, 39, 133
vertex-cut, 201                       World Wide Web, 263
Vijay, Sujith, 25
Vitter                                Yamada, Takeo, 103, 144
    algorithm, 270                    Yegnanarayanan, V., 50
                                      Yerger, Carl R., 151
    Jeffrey Scott, 270
Vuillemin, Jean, 167                  Zachary, Wayne W., 245
                                      zero padding, 57
Wagner                                Zubrzycki, S., 122
    conjecture, 36                    Zwick, Uri, 193
    Klaus, 36
walk, 11, 12
    closed, 12
    length, 11
    trivial, 11
Walther, Hansjoachim, 37
Warshall, Stephen, 79, 84
Washington DC, 93, 94
Washington, Lawrence C., 95
Watanabe, Kohtaro, 144
Watts, Duncan J., 257
Watts-Strogatz model, 258, 259, 270
Wegener, Ingo, 65
weight, 70, 71, 79, 116
    correcting, 71, 72
    function, 71, 85, 116
    graph, 6
    minimum, 75, 116, 119, 122
    multigraph, 6
    negative, 72, 76, 77
    nonnegative, 70–73, 75, 84
    path, 196
    positive, 71
    reweight, 84, 85
    setting, 71, 72
    unit, 70, 71
Weinberger, A., 116
wheel graph, 29, 37, 151
Whitney
    Hassler, 205
    inequality, 204
    theorem, 212
Wiener
    Harold, 81, 148