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A proof of the Caffarelli contraction theorem via entropic regularization (1904.06053v1)

Published 12 Apr 2019 in math.PR, math.FA, and math.OC

Abstract: We give a new proof of the Caffarelli contraction theorem, which states that the Brenier optimal transport map sending the standard Gaussian measure onto a uniformly log-concave probability measure is Lipschitz. The proof combines a recent variational characterization of Lipschitz transport map by the second author and Juillet with a convexity property of optimizers in the dual formulation of the entropy-regularized optimal transport (or Schr{\"o}dinger) problem.

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