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Sobolev Regularized MMD Gradient Flow

Machine Learning 2026-05-13 v1

Abstract

We propose Sobolev-regularized Maximum Mean Discrepancy (SrMMD) gradient flow, a regularized variant of maximum mean discrepancy (MMD) gradient flow based on a gradient penalty on the witness function. The proposed regularization mitigates the non-convexity of the MMD objective and yields provable \emph{global} convergence guarantees in MMD in both continuous and discrete time. A more surprising appeal is that our convergence analysis does not rely on isoperimetric assumptions on the target distribution. Instead, it is based on a regularity condition on the difference between kernel mean embeddings. A key highlight of the proposed flow is that it is applicable in both sampling (from an unnormalized target distribution) -- using Stein kernels -- and generative modeling settings, unlike previous works, where a gradient flow is suitable for only generative modeling or sampling but not both. The effectiveness of the proposed flow is empirically verified on a broad range of tasks in both generative modelling and sampling.

Keywords

Cite

@article{arxiv.2605.11884,
  title  = {Sobolev Regularized MMD Gradient Flow},
  author = {Chenyang Tian and Bharath K. Sriperumbudur and Arthur Gretton and Zonghao Chen},
  journal= {arXiv preprint arXiv:2605.11884},
  year   = {2026}
}