Machine Learning Lecture 17 Regularization

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We talk about various approaches to handle generalization issue in NNs; namely, hyperparameter tuning and various ... We will explain Ridge, Lasso and a Bayesian interpretation of both. ABOUT ME ⭕ : ...

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Last Updated: June 8, 2026

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