Precision, Recall & F-Measure
In this video, we discuss performance measures for Classification problems in Machine Learning: Simple Accuracy Measure, Precision, Recall, and the F (beta)-Measure. We explain the concepts in detail, highlighting differences between the terms, introducing Confusion Matrices, and analyzing real world examples.
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Видео Precision, Recall & F-Measure канала CodeEmporium
If you like the video, please SHARE. Don't forget to like, comment and SUBSCRIBE on your way out!
If you have any questions, feel free to contact me.
Email: ask.ajhalthor@gmail.com
Видео Precision, Recall & F-Measure канала CodeEmporium
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