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The sample should not be normally distributed.

If you have a population of size N from which a random sample of size n is to be drawn, then there are NCn possible samples. Each one of these must have the same probability of being thesample. That is, the sample is uniformly distributed - not Normally.

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Q: Why the sample should be normally distributed?
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