📚 node [[recall|recall]]
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⥅ related node [[active recall]]
⥅ related node [[precision recall_curve]]
⥅ related node [[recall]]
⥅ node [[recall]] pulled by Agora

recall

Go back to the [[AI Glossary]]

A metric for classification models that answers the following question: Out of all the possible positive labels, how many did the model correctly identify? That is:

$$ \text Recall = \frac{True Positives}{True Positives + False Negatives} $$

📖 stoas
⥱ context