I am trying to conduct a T-test on two unequal samples using the following code.

import pandas as pd
import numpy as np
from scipy import stats

UG = pd.read_csv('Mostfrequentscores.csv')
print('Mean', UG['Iceland'].mean())
print('Mean', UG['Peru'].mean())

I = UG['Iceland']
P = UG['Peru']

t = stats.ttest_ind(I, P, equal_var = False)

The mean prints fine, which I assume means its reading the columns in the file - but the T-test keeps on giving me the following error:

C:\Users\msu\Anaconda3\lib\site-packages\scipy\stats_distn_infrastructure.py:879: RuntimeWarning: invalid value encountered in greater

Could this be due to my data which is a series of numbers from -3 to 3? Do I need to convert it using float?

  • Have you checked if I or P contain nan values ? – Gusto Nov 22 '18 at 7:49
  • Thans for the reply Yes I did. Just negative, positive and 0 values. – MS.TO Nov 22 '18 at 8:12
  • can you tell us what happens if you do convert to float? (would there be some zero integer mean used to divide and get variance or something?) – Silmathoron Nov 22 '18 at 11:01
  • I get the same error. i tried the following for the one column: Per = UG['peru'].astype(float) – MS.TO Nov 22 '18 at 20:08
  • You will have to post some of your data, otherwise it is hard to help. – Cleb Nov 23 '18 at 13:39

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