Variational Schr\"odinger Momentum Diffusion

Published: 22 Jan 2025, Last Modified: 22 Apr 2025AISTATS 2025 PosterEveryoneRevisionsBibTeXCC BY 4.0
TL;DR: A Variational Formulation of Momentum Schrödinger Bridge with simulation-free training of backward score functions
Abstract: The Momentum Schrödinger Bridge (mSB) (Chen et al., 2023c) has emerged as a leading method for accelerating generative diffusion processes and reducing transport costs. However, the lack of simulation-free properties inevitably results in high training costs and affects scalability. To obtain a trade-off between transport properties and scalability, we introduce variational Schr\"odinger momentum diffusion (VSMD), which employs linearized forward score functions (variational scores) to eliminate the dependence on simulated forward trajectories. Our approach leverages a multivariate diffusion process with adaptively transport-optimized variational scores. Additionally, we apply a critical-damping transform to stabilize training by removing the need for score estimations for both velocity and samples. Theoretically, we prove the convergence of samples generated with optimal variational scores and momentum diffusion. Empirical results demonstrate that VSMD efficiently generates anisotropic shapes while maintaining transport efficacy, outperforming overdamped alternatives, and avoiding complex denoising processes. Our approach also scales effectively to real-world data, achieving competitive results in time series and image generation, both in unconditional and conditional settings.
Submission Number: 1767
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