# statsmodels.sandbox.stats.multicomp.varcorrection_unbalanced¶

statsmodels.sandbox.stats.multicomp.varcorrection_unbalanced(nobs_all, srange=False)[source]

correction factor for variance with unequal sample sizes

this is just a harmonic mean

Parameters
nobs_allarray_like

The number of observations for each sample

srangebool

if true, then the correction is divided by the number of samples for the variance of the studentized range statistic

Returns
correctionfloat

Correction factor for variance.

Notes

variance correction factor is

1/k * sum_i 1/n_i

where k is the number of samples and summation is over i=0,…,k-1. If all n_i are the same, then the correction factor is 1.

This needs to be multiplied by the joint variance estimate, means square error, MSE. To obtain the correction factor for the standard deviation, square root needs to be taken.