Statistical Prediction
A Type II Error occurs when a statistical test fails to reject a false null hypothesis, meaning that the test concludes there is no effect or difference when, in fact, there is one. This type of error highlights the limitations of hypothesis testing and emphasizes the importance of the power of a test in accurately detecting true effects. In the context of permutation tests, understanding Type II Errors can help evaluate how well these tests perform in identifying significant differences in data.
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