SL - Regularization - Weight Decay and L2
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18:17
SL - Regularization - Introduction
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20:26
SL - Regularization - Non-Linear Models and Structural Risk Minimization
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20:50
SL - Regularization - Geometry of L2 Regularization
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27:14
Transformers (how LLMs work) explained visually | DL5
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48:29
Algebraic Methods in Convex Optimization (Kevin Shu, 02.13.2025 at UCLA)
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7:10
NN - 16 - L2 Regularization / Weight Decay (Theory + @PyTorch code)
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11:40
Regularization in a Neural Network | Dealing with overfitting
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26:47