Performance Measures
Performance Measures • Evaluating a classifier is often significantly trickier than evaluating a regressor. • There are many performance measures available. i. Confusion Matrix ii. True Positive Rate iii. True Negative Rate iv. False Positive Rate v. False Negative Rate vi. Precision vii. Recall viii. Accuracy ix. F1-Score x. Specificity xi. Receiver Operating Characteristic (ROC) xii. Area Under Curve (AUC) YouTube Link: https://youtu.be/jL39fMC_I28