Jump to content

True positive rate (TPR): Difference between revisions

m
No edit summary
 
Line 22: Line 22:
Similar to a machine learning model, which attempts to identify all positive cases within a dataset. If it succeeds in finding all of them, we can say it did a good job and give it a high true positive rate; on the contrary, if some positive cases are missed, then its accuracy drops off and we attribute a low true positive rate.
Similar to a machine learning model, which attempts to identify all positive cases within a dataset. If it succeeds in finding all of them, we can say it did a good job and give it a high true positive rate; on the contrary, if some positive cases are missed, then its accuracy drops off and we attribute a low true positive rate.


[[Category:Terms]] [[Category:Machine learning terms]]
[[Category:Terms]] [[Category:Machine learning terms]] [[Category:not updated]]