Главная
Study mode:
on
1
Recap
2
Abstract
3
Random Averages
4
Examples
5
The Big Theorem
6
Losses
7
Deep Networks
8
Sigmoid
9
Maximum Over Functions
Description:
Explore advanced concepts in generalization theory with renowned experts Peter Bartlett from UC Berkeley and Sasha Rakhlin from MIT in this comprehensive lecture from the Deep Learning Boot Camp. Delve into topics such as random averages, abstract examples, and the Big Theorem while examining various loss functions and their applications in deep networks. Gain insights into sigmoid functions and the maximum over functions principle, building upon previously covered material. Enhance your understanding of deep learning fundamentals and their practical implications in this in-depth presentation from the Simons Institute.

Generalization II

Simons Institute
Add to list