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Minimax-Optimal Two-Sample Test with Sliced Wasserstein

Machine Learning 2025-11-03 v1 Machine Learning Statistics Theory Methodology Statistics Theory

Abstract

We study the problem of nonparametric two-sample testing using the sliced Wasserstein (SW) distance. While prior theoretical and empirical work indicates that the SW distance offers a promising balance between strong statistical guarantees and computational efficiency, its theoretical foundations for hypothesis testing remain limited. We address this gap by proposing a permutation-based SW test and analyzing its performance. The test inherits finite-sample Type I error control from the permutation principle. Moreover, we establish non-asymptotic power bounds and show that the procedure achieves the minimax separation rate n1/2n^{-1/2} over multinomial and bounded-support alternatives, matching the optimal guarantees of kernel-based tests while building on the geometric foundations of Wasserstein distances. Our analysis further quantifies the trade-off between the number of projections and statistical power. Finally, numerical experiments demonstrate that the test combines finite-sample validity with competitive power and scalability, and -- unlike kernel-based tests, which require careful kernel tuning -- it performs consistently well across all scenarios we consider.

Keywords

Cite

@article{arxiv.2510.27498,
  title  = {Minimax-Optimal Two-Sample Test with Sliced Wasserstein},
  author = {Binh Thuan Tran and Nicolas Schreuder},
  journal= {arXiv preprint arXiv:2510.27498},
  year   = {2025}
}
R2 v1 2026-07-01T07:15:40.321Z