statsmodels.stats.weightstats.CompareMeans¶
- class statsmodels.stats.weightstats.CompareMeans(d1, d2)[source]¶
class for two sample comparison
The tests and the confidence interval work for multi-endpoint comparison: If d1 and d2 have the same number of rows, then each column of the data in d1 is compared with the corresponding column in d2.
- Parameters:¶
- d1, d2
instancesofDescrStatsW
- d1, d2
Notes
The result for the statistical tests and the confidence interval are independent of the user specified ddof.
TODO: Extend to any number of groups or write a version that works in that case, like in SAS and SPSS.
- Attributes:¶
- std_meandiff_pooledvar
variance assuming equal variance in both data sets
- std_meandiff_separatevar
Methods
dof_satt()degrees of freedom of Satterthwaite for unequal variance
from_data(data1, data2[, weights1, ...])construct a CompareMeans object from data
summary([use_t, alpha, usevar, value])summarize the results of the hypothesis test
tconfint_diff([alpha, alternative, usevar])confidence interval for the difference in means
ttest_ind([alternative, usevar, value])ttest for the null hypothesis of identical means
ttost_ind(low, upp[, usevar])test of equivalence for two independent samples, base on t-test
zconfint_diff([alpha, alternative, usevar])confidence interval for the difference in means
ztest_ind([alternative, usevar, value])z-test for the null hypothesis of identical means
ztost_ind(low, upp[, usevar])test of equivalence for two independent samples, based on z-test
Properties
variance assuming equal variance in both data sets