Transport type metrics on the space of probability measures involving singular base measures
Luca Nenna, Brendan Pass

TL;DR
This paper introduces a new $ u$-based Wasserstein metric on probability measures that generalizes classical optimal transport, especially when the base measure is singular, and explores its properties and applications.
Contribution
It develops the theory of a novel $ u$-based Wasserstein metric, characterizes it through variational and limit formulations, and demonstrates its unique solutions and convexity properties.
Findings
The $ u$-based Wasserstein metric interpolates between classical Wasserstein distances.
Unique solutions exist when $ u$ concentrates on lower-dimensional manifolds.
The metric supports geodesic convexity and convergence of iterative schemes.
Abstract
We develop the theory of a metric, which we call the -based Wasserstein metric and denote by , on the set of probability measures on a domain . This metric is based on a slight refinement of the notion of generalized geodesics with respect to a base measure and is relevant in particular for the case when is singular with respect to -dimensional Lebesgue measure; it is also closely related to the concept of linearized optimal transport. The -based Wasserstein metric is defined in terms of an iterated variational problem involving optimal transport to ; we also characterize it in terms of integrations of classical Wasserstein distance between the conditional probabilities and through limits of certain multi-marginal optimal transport problems. As we vary the base measure , the -based Wasserstein…
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Taxonomy
TopicsGeometric Analysis and Curvature Flows · Bone and Joint Diseases
