Cross-validation: Revision history

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19 March 2023

  • curprev 19:1419:14, 19 March 2023Walle talk contribs 2,854 bytes +2,854 Created page with "{{see also|Machine learning terms}} ==Cross-validation in Machine Learning== Cross-validation is a widely used technique in machine learning for estimating the performance of a predictive model. It aims to assess how well a model can generalize to an independent dataset by evaluating its performance on multiple subsets of the training data. This approach helps to mitigate overfitting, a common issue in machine learning where the model learns the training data too wel..."