Lecture

Diffusion Models and Robustness

Description

This lecture covers the mathematics behind diffusion models and their application in addressing the difficulties of training Generative Adversarial Networks (GANs). It delves into the challenges of GAN training, the formulation of Wasserstein GANs, and the application of diffusion models to improve robustness. The instructor discusses the theoretical foundations of score-based generative models using Stochastic Differential Equations (SDE) and explores the concepts of perturbation stability, Lipschitz constant estimation, and lazy training regimes in deep learning. The lecture concludes with insights on the impact of neural network architecture choices on robustness and the trade-offs between width, depth, and initialization in achieving average-case robustness.

About this result
This page is automatically generated and may contain information that is not correct, complete, up-to-date, or relevant to your search query. The same applies to every other page on this website. Please make sure to verify the information with EPFL's official sources.