Generative Path-Finding Method for Wasserstein Gradient Flow
Chengyu Liu, Xiang Zhou

TL;DR
GenWGP is a novel generative framework that efficiently computes Wasserstein gradient paths to equilibrium, overcoming high-dimensional challenges and discretization issues.
Contribution
It introduces a geometric action-based loss for learning Wasserstein paths using normalizing flows, enabling stable, discretization-independent training.
Findings
Matches or exceeds high-fidelity solutions with few discretization points
Enables stable training largely independent of temporal discretization
Effectively captures complex dynamics in Fokker-Planck and aggregation problems
Abstract
Wasserstein gradient flows (WGFs) describe the evolution of probability distributions in Wasserstein space as steepest descent dynamics for a free energy functional. Computing the full path from an arbitrary initial distribution to equilibrium is challenging, especially in high dimensions. Eulerian methods suffer from the curse of dimensionality, while existing Lagrangian approaches based on particles or generative maps do not naturally improve efficiency through time step tuning. We propose GenWGP, a generative path finding framework for Wasserstein gradient paths. GenWGP learns a generative flow that transports mass from an initial density to an unknown equilibrium distribution by minimizing a path loss that encodes the full trajectory and its terminal equilibrium condition. The loss is derived from a geometric action functional motivated by Dawson Gartner large deviation theory for…
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