Chapter 206 Two-Sample T-Test
The typical comparison of two distributions is the comparison of means. If we can safely make the assumption of the data in each group following a normal distribution, we can use a two-sample t-test to compare the means of random samples drawn from these two populations. If these assumptions are severely violated, the nonparametric
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