Generative Modeling by Estimating Gradients of the Data Distribution - Stefano Ermon
Institute for Advanced Study via YouTube
Overview
Syllabus
Intro
Progress in generative models of text
Implicit Generative Models Implicit models: directly represent the sampling process
Representation of Probability Distributions
Learning Deep Energy-Based Models using Scores
Learning with Sliced Score Matching
Experiments: Scalability and Speed
Experiments: Fitting Deep Kernel Exponential Families
From Score Estimation to Sample Generation
Pitfall 1: Manifold Hypothesis
Pitfall 2: Inaccurate Score Estimation in Low Data-Density Regions
Data Modes
Gaussian Perturbation
Annealed Langevin Dynamics
Joint Score Estimation
Experiments: Sampling
Taught by
Institute for Advanced Study