Yuanchao Xu:Generative Modeling through Koopman Spectral Analysis: An Operator-Theoretic Perspective
Автор: Machine Learning and Dynamical Systems Seminar
Загружено: 2026-02-24
Просмотров: 34
Описание:
Title: Generative Modeling through Koopman Spectral Analysis: An Operator-
Theoretic Perspective
Speaker: Yuanchao Xu (Kyoto University)
Abstract:
We propose Koopman Spectral Wasserstein Gradient Descent (KSWGD), a particle-based generative modeling framework that learns the Langevin generator via Koopman theory and integrates it with Wasserstein gradient descent. Our key insight is that this spectral structure of the underlying distribution can be directly estimated from trajectory data via the Koopman operator, eliminating the need for explicit knowledge of the target potential. Additionally, we prove that KSWGD maintains an approximately constant dissipation rate, thereby establishing linear convergence and overcoming the vanishing-gradient phenomenon that hinders existing kernel-based particle methods. We further provide a Feynman--Kac interpretation that clarifies the method's probabilistic foundation. Experiments on compact manifolds, metastable multi-well systems, and high-dimensional stochastic partial differential equations demonstrate that KSWGD consistently outperforms baselines in both convergence speed and sample quality.
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