Hypothesis Testing

Hypothesis Testing

Hypothesis testing is a way to test whether statistical analysis results are valid or not by checking if the results happened accidentally. If the results have happened accidentally, the experiment won’t be repeatable on another data set, leaving it unusable. The Hypothesis test determines this probability of accidental results by comparing the observed and expected results.
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