What does a Type 2 error involve in hypothesis testing?

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Study for the Praxis School Psychology Exam. This comprehensive preparation includes multiple-choice questions with hints and explanations. Get ready to succeed on your exam!

In the context of hypothesis testing, a Type 2 error refers to the failure to reject a null hypothesis that is actually false. This occurs when researchers conclude that there is no effect or difference when, in fact, there is one. Thus, someone might state that something is not true, when it actually is. This misjudgment can lead to missed opportunities for discovering real effects or applying interventions that are necessary.

Understanding Type 2 errors is crucial for researchers because it emphasizes the importance of having adequate power in statistical tests to detect actual effects. When a Type 2 error occurs, it means the test did not have enough sensitivity to identify a significant result, which could have substantial implications in practical applications, whether in education, psychology, or health sciences.

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