Tags: machine learning* + classification models* + f1 score* + roc curves* + balanced accuracy* + true negatives* + confusion matrix* + evaluation* + true positives* + false negatives*

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  1. Learn about the importance of evaluating classification models and how to use the confusion matrix and ROC curves to assess model performance. This post covers the basics of both methods, their components, calculations, and how to visualize the results using Python.

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