AI RESEARCH
Preconditioned Regularized Wasserstein Proximal Sampling
arXiv CS.LG
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ArXi:2509.01685v2 Announce Type: replace-cross We consider sampling from a Gibbs distribution by evolving finitely many particles. We propose a preconditioned version of a recently proposed noise-free sampling method, governed by approximating the score function with the numerically tractable score of a regularized Wasserstein proximal operator. This is derived by a Cole--Hopf transformation on coupled anisotropic heat equations, yielding a kernel formulation for the preconditioned regularized Wasserstein proximal.