How can you address class imbalance in binary classification datasets?

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Class imbalance is a common problem in binary classification datasets, where one class has significantly more samples than the other. This can lead to biased models that favor the majority class and ignore the minority class, resulting in poor performance and unfair outcomes. In this article, you will learn how to address class imbalance in binary classification datasets using different techniques, such as resampling, weighting, and thresholding.

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