Regularity of Solutions to Beckmann’s Parametric Optimal Transport
arXiv:2603.19755v1 Announce Type: cross
Abstract: Beckmann’s problem in optimal transport minimizes the total squared flux in a continuous transport problem from a source to a target distribution. In this article, the regularity theory for solutions to Beckmann’s problem in optimal transport is developed utilizing an unconstrained Lagrangian formulation and solving the variational first order optimality conditions. It turns out that the Lagrangian multiplier that enforces Beckmann’s divergence constraint fulfills a Poisson equation and the flux vector field is obtained as the potential’s gradient. Utilizing Schauder estimates from elliptic regularity theory, the exact H”older regularity of the potential, the flux and the flow generating is derived on the basis of H”older regularity of source and target densities on a bounded, regular domain. If the target distribution depends on parameters, as is the case in conditional (“promptable”) generative learning, we provide sufficient conditions for separate and joint H”older continuity of the resulting vector field in the parameter and the data dimension. Following a recent result by Belomnestny et al., one can thus approximate such vector fields with deep ReQu neural networks in C^(k,alpha)-H”older norm. We also show that this approach generalizes to other probability paths, like Fisher-Rao gradient flows.