statsmodels.stats.weightstats.CompareMeans.ttest_ind¶
- CompareMeans.ttest_ind(alternative='two-sided', usevar='pooled', value=0)[source]¶
ttest for the null hypothesis of identical means
this should also be the same as onewaygls, except for ddof differences
- Parameters:¶
- x1array_like, 1-D or 2-D
first of the two independent samples, see notes for 2-D case
- x2array_like, 1-D or 2-D
second of the two independent samples, see notes for 2-D case
- alternative
str The alternative hypothesis, H1, has to be one of the following ‘two-sided’: H1: difference in means not equal to value (default) ‘larger’ : H1: difference in means larger than value ‘smaller’ : H1: difference in means smaller than value
- usevar
str, ‘pooled’ or ‘unequal’ If
pooled, then the standard deviation of the samples is assumed to be the same. Ifunequal, then Welch ttest with Satterthwait degrees of freedom is used- value
float difference between the means under the Null hypothesis.
- Returns:¶
Notes
The result is independent of the user specified ddof.
Last update:
Jun 10, 2024