Viktor Stein (TU Berlin): Accelerated Stein Variational Gradient Descent
Talk at Stan Osher's ULCA level set seminar on the 21.04.2025 Stein variational gradient descent (SVGD) is a kernel-based particle method for sampling from a target distribution, e.g., in generative modeling and Bayesian inference. SVGD does not require estimating the gradient of the log-density, which is called score estimation. In practice, SVGD can be slow compared to score-estimation based sampling algorithms. To design fast and efficient high-dimensional sampling algorithms, we introduce ASVGD, an accelerated SVGD, based on an accelerated gradient flow in a metric space of probability densities following Nesterov's method. We then derive a momentum-based discrete-time sampling algorithm, which evolves a set of particles deterministically. To stabilize the particles' momentum update, we also study a Wasserstein metric regularization. For the generalized bilinear kernel and the Gaussian kernel, toy numerical examples with varied target distributions demonstrate the effectiveness of ASVGD compared to SVGD and other popular sampling methods. This is joint work with Wuchen Li (University of South Carolina) Preprint: https://arxiv.org/abs/2503.23462 Code: https://github.com/ViktorAJStein/Accelerat... Slides: https://speakerdeck.com/viktorajstein/acce...

Stein Variational Gradient Descent

Johan Rockström - Transitioning to stewardship of planet Earth

Geometric View of Variational Autoencoders

Nvidia CEO Jensen Huang Interview| Bloomberg Technology Special

Quantum Consciousness and the Origin of Life

Semiclassics at the Cusp — Jesse Woods, 22-May-2026

How ASML Makes Chips Faster With Its New $400 Million High NA Machine

But how do AI images and videos actually work? | Guest video by Welch Labs

40Hz Binaural Gamma Waves - Ultra Deep Concentration

We're 99.9% sure this pattern is true, but no one can prove it

The Riemann Hypothesis, Explained

What do tech pioneers think about the AI revolution? - The Engineers, BBC World Service

Nikolas Nüsken - On the Geometry of Stein Variational Gradient Descent

Math's Fundamental Flaw

Yann LeCun: World Models: Enabling the next AI revolution

Electrons Don't Actually Orbit Like This

Andrej Karpathy: From Vibe Coding to Agentic Engineering w/ Stephanie Zhan

Clara Mattei: capitalism is not natural - it’s enforced

Transport, Variational Inference and Diffusions | Francisco Vargas

