Data Science Statistics
The significance level is a threshold used in hypothesis testing to determine whether to reject the null hypothesis. It represents the probability of making a Type I error, which occurs when a true null hypothesis is incorrectly rejected. This level is crucial in making decisions based on statistical evidence, influencing the choice of p-values and the determination of sample sizes, and impacting the interpretation of results from tests such as permutation tests.
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