True positive means correctly rejected.

TRUE
nan
nan
nan

The correct answer is False.

A true positive is a correct positive identification. In other words, it is a case where the model correctly identifies a positive instance. For example, if the model is trying to identify spam emails, a true positive would be an email that the model correctly identifies as spam.

A false positive is an incorrect positive identification. In other words, it is a case where the model incorrectly identifies a negative instance as positive. For example, if the model is trying to identify spam emails, a false positive would be an email that the model incorrectly identifies as spam, when it is actually a legitimate email.

Therefore, a true positive does not mean correctly rejected. A true positive means correctly identified.

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