Which error occurs when the null hypothesis is actually false, but the test fails to reject it?

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Multiple Choice

Which error occurs when the null hypothesis is actually false, but the test fails to reject it?

Explanation:
In hypothesis testing, a Type II error happens when the null hypothesis is false but the test fails to reject it. In real terms, there is a true effect, but the study doesn’t detect it, so you miss it. This is different from a Type I error, which would mean concluding there is an effect when there actually isn’t one. Regression toward the mean is a separate statistical phenomenon, not an error type in hypothesis testing. Power is the test’s ability to detect a true effect; higher power means a lower chance of making a Type II error, and power improves with larger sample sizes or larger actual effects. For example, if a new drug truly lowers blood pressure but the study isn’t able to show significance, that’s a Type II error.

In hypothesis testing, a Type II error happens when the null hypothesis is false but the test fails to reject it. In real terms, there is a true effect, but the study doesn’t detect it, so you miss it. This is different from a Type I error, which would mean concluding there is an effect when there actually isn’t one. Regression toward the mean is a separate statistical phenomenon, not an error type in hypothesis testing. Power is the test’s ability to detect a true effect; higher power means a lower chance of making a Type II error, and power improves with larger sample sizes or larger actual effects. For example, if a new drug truly lowers blood pressure but the study isn’t able to show significance, that’s a Type II error.

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