6. L1 & L2 Regularization
We introduce "regularization", our main defense against overfitting. We discuss the equivalence of the penalization and constraint forms of regularization (see Hwk 4 Problem 8 for a precise statement). We compare regularization paths of L1- and L2-regularized linear least squares regression (i.e. "lasso" and "ridge" regression, respectively), and give a geometric argument for why lasso often gives "sparse" solutions. Finally, we present "coordinate descent", our second major approach to optimization. When applied to the lasso objective function, coordinate descent takes a particularly clean form and is known as the "shooting algorithm" Access the full course at https://bloom.bg/2ui2T4q

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4. Stochastic Gradient Descent

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23. Gradient Boosting

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20. Classification and Regression Trees

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Regularization Part 1: Ridge (L2) Regression

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12. Feature Extraction

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1. Black Box Machine Learning

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11. Subgradient Descent

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22. Bagging and Random Forests

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26. Gaussian Mixture Models

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3. Introduction to Statistical Learning Theory

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18. Bayesian Methods

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8. Loss Functions for Regression and Classification

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Gil Strang's Final 18.06 Linear Algebra Lecture

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9. Lagrangian Duality and Convex Optimization

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Deep Work Music | Alpha Waves for Focus and Brain Power - Flow State Coding Music Mix 2026

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27. EM Algorithm for Latent Variable Models

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13. Kernel Methods

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Regularization Lasso vs Ridge vs Elastic Net Overfitting Underfitting Bias & Variance Mahesh Huddar

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5. Excess Risk Decomposition

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