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Activity Number: 426 - Statistical Optimal Transport
Type: Invited
Date/Time: Thursday, August 12, 2021 : 4:00 PM to 5:50 PM
Sponsor: IMS
Abstract #316852
Title: Sharp Convergence Rates for Empirical Optimal Transport with Smooth Costs
Author(s): Jonathan Niles-Weed* and Tudor Manole
Companies: New York University and Carnegie Mellon University
Keywords: Wasserstein distance; minimax rate; plug-in estimation; empirical process
Abstract:

We revisit the question of characterizing the convergence rate of plug-in estimators of optimal transport costs. It is well known that an empirical measure comprising independent samples from an absolutely continuous distribution on R^d converges to that distribution at the rate n^{-1/d} in Wasserstein distance, which can be used to prove that plug-in estimators of many optimal transport costs converge at this same rate. However, we show that when the cost is smooth, this analysis is loose: plug-in estimators based on empirical measures converge quadratically faster. As a corollary, we show that the Wasserstein distance between two distributions is significantly easier to estimate when the measures are far apart. We also prove lower bounds, showing not only that our analysis of the plug-in estimator is tight, but also that no other estimator can enjoy significantly faster rates of convergence uniformly over all pairs of measures. As a byproduct of our proofs, we derive estimates on the displacement induced by the optimal coupling between any two measures satisfying suitable moment conditions, for a wide range of cost functions.


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