Chi-Square Tests: Crash Course Statistics #29

Today we’re going to talk about Chi-Square Tests – which allow us to measure differences in strictly categorical data like hair color, dog breed, or academic degree. We’ll cover the three main Chi-Square tests: goodness of fit test, test of independence, and test of homogeneity. And explain how we can use each of these tests to make comparisons.

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