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Quantitative stability of optimal transport maps and linearization of the 2-Wasserstein space (1910.05954v1)

Published 14 Oct 2019 in stat.ML, cs.LG, cs.NA, math.MG, and math.NA

Abstract: This work studies an explicit embedding of the set of probability measures into a Hilbert space, defined using optimal transport maps from a reference probability density. This embedding linearizes to some extent the 2-Wasserstein space, and enables the direct use of generic supervised and unsupervised learning algorithms on measure data. Our main result is that the embedding is (bi-)H\"older continuous, when the reference density is uniform over a convex set, and can be equivalently phrased as a dimension-independent H\"older-stability results for optimal transport maps.

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