ICLR2025

Neural Sampling from Boltzmann Densities: Fisher-Rao Curves in the Wasserstein Geometry

Jannis Chemseddine, Christian Wald, Richard Duong, Gabriele Steidl

被引用 1 次

摘要

We deal with the task of sampling from an unnormalized Boltzmann density ρDρ_D by learning a Boltzmann curve given by energies ftf_t starting in a simple density ρZρ_Z. First, we examine conditions under which Fisher-Rao flows are absolutely continuous in the Wasserstein geometry. Second, we address specific interpolations ftf_t and the learning of the related density/velocity pairs (ρt,vt)(ρ_t,v_t). It was numerically observed that the linear interpolation, which requires only a parametrization of the velocity field vtv_t, suffers from a "teleportation-of-mass" issue. Using tools from the Wasserstein geometry, we give an analytical example, where we can precisely measure the explosion of the velocity field. Inspired by Máté and Fleuret, who parametrize both ftf_t and vtv_t, we propose an interpolation which parametrizes only ftf_t and fixes an appropriate vtv_t. This corresponds to the Wasserstein gradient flow of the Kullback-Leibler divergence related to Langevin dynamics. We demonstrate by numerical examples that our model provides a well-behaved flow field which successfully solves the above sampling task.