Precision-Recall Curves and AUPRC | Confusion Matrix Metrics Part 9 | Machine Learning
#precision #recall #curve #roc #auc #confusion_matrix #metrics #explained #data_science #classification #machine_learning In this Part 9 tutorial on Confusion Matrix Metrics, we'll look at Precision-Recall Curves and the AUC for summarizing and evaluating classification models. I've uploaded all the relevant code and datasets used here (and all other tutorials for that matter) on my github page which is accessible here: Link: https://github.com/rachittoshniwal/ma... If you like my content, please do not forget to upvote this video and subscribe to my channel. If you have any qualms regarding any of the content here, please feel free to comment below and I'll be happy to assist you in whatever capacity possible. Thank you!

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