Lipschitz regularity in Flow Matching and Diffusion Models: sharp sampling rates and functional inequalities

arXiv:2604.06065v1 Announce Type: cross
Abstract: Under general assumptions on the target distribution $p^star$, we establish a sharp Lipschitz regularity theory for flow-matching vector fields and diffusion-model scores, with optimal dependence on time and dimension. As applications, we obtain Wasserstein discretization bounds for Euler-type samplers in dimension $d$: with $N$ discretization steps, the error achieves the optimal rate $sqrt{d}/N$ up to logarithmic factors. Moreover, the constants do not deteriorate exponentially with the spatial extent of $p^star$. We also show that the one-sided Lipschitz control yields a globally Lipschitz transport map from the standard Gaussian to $p^star$, which implies Poincar’e and log-Sobolev inequalities for a broad class of probability measures.

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