2022
DOI: 10.48550/arxiv.2203.04851
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Quasi $α$-Firmly Nonexpansive Mappings in Wasserstein Spaces

Abstract: This paper aims to introduce the concept of quasi α-firmly nonexpansive mappings in Wasserstein-2 spaces over R d and to analyze properties of these mappings. We prove that for quasi α-firmly nonexpansive mappings satisfying a certain quadratic growth condition, the fixed point iterations converge in the narrow topology. As a byproduct, we will get the known convergence of the counterpart of the proximal point algorithm in Wasserstein spaces. Finally, we apply our results to show that cyclic proximal point alg… Show more

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“…There are analogous convergence results for algorithms similar to ours, but in different matrix manifolds [142], to our knowledge there are no convergence results in the case of the Bures-Wasserstein manifold. There appears to be some preliminary work in this field on proximal point algorithms in Wasserstein space [143]. However there is a significant gap between that work and proving convergence of algorithms like BWBML.…”
Section: Learning a Metric With The Bures-wasserstein Distance 75mentioning
confidence: 99%
“…There are analogous convergence results for algorithms similar to ours, but in different matrix manifolds [142], to our knowledge there are no convergence results in the case of the Bures-Wasserstein manifold. There appears to be some preliminary work in this field on proximal point algorithms in Wasserstein space [143]. However there is a significant gap between that work and proving convergence of algorithms like BWBML.…”
Section: Learning a Metric With The Bures-wasserstein Distance 75mentioning
confidence: 99%