English

Bregman-Wasserstein divergence: geometry and applications

Probability 2025-04-14 v2 Differential Geometry

Abstract

The Bregman-Wasserstein divergence is the optimal transport cost when the underlying cost function is given by a Bregman divergence, and arises naturally in fields such as statistics and machine learning. We establish fundamental properties of the Bregman-Wasserstein divergence and propose a novel generalized transport geometry that promotes the Bregman geometry to the space of probability distributions. We provide a probabilistic interpretation involving exponential families and define generalized displacement interpolations compatible with the Bregman geometry. These interpolations are used to derive a generalized Pythagorean inequality, which is of independent interest. Furthermore, we construct a generalized dualistic geometry that lifts the differential geometry of the Bregman divergence to an infinite-dimensional statistical manifold. On the computational side, we demonstrate how Bregman-Wasserstein optimal transport maps can be estimated using neural approaches, establish the well-posedness of Bregman-Wasserstein barycenters, and relate them to Bayesian learning. Finally, we introduce the Bregman-Wasserstein JKO scheme for discretizing Riemannian Wasserstein gradient flows.

Keywords

Cite

@article{arxiv.2302.05833,
  title  = {Bregman-Wasserstein divergence: geometry and applications},
  author = {Amanjit Singh Kainth and Cale Rankin and Ting-Kam Leonard Wong},
  journal= {arXiv preprint arXiv:2302.05833},
  year   = {2025}
}

Comments

57 pages, Significant changes to structure with new sections on applications

R2 v1 2026-06-28T08:37:56.722Z