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1
Intro
2
Overfitting in Deep Networks
3
Interpolating Prediction Rules
4
Definitions
5
Interpolating Linear Regression
6
Notions of Effective Rank
7
Benign Overfitting: A Characterization
8
Benign Overfitting: Proof Ideas
9
What kinds of eigenvalues?
10
Implications for deep learning
11
Implications for adversarial examples
12
Benign Overfitting in Linear Regression
Description:
Explore the phenomenon of benign overfitting in linear prediction through this 48-minute lecture by Peter Bartlett from UC Berkeley. Delve into the intricacies of overfitting in deep networks, interpolating prediction rules, and linear regression. Examine various notions of effective rank and gain insights into the characterization and proof ideas behind benign overfitting. Investigate the implications for deep learning and adversarial examples, while focusing on the specific case of linear regression. Part of the Frontiers of Deep Learning series at the Simons Institute, this talk provides a comprehensive analysis of a crucial concept in machine learning and its applications.

Benign Overfitting in Linear Prediction

Simons Institute
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