156
v1v2 (latest)

Minimax convergence rate for estimating the Wasserstein barycenter of random measures on the real line

Abstract

This paper is focused on the statistical analysis of probability measures ν1,,νn\nu_{1},\ldots,\nu_{n} on R\mathbb{R} that can be viewed as independent realizations of an underlying stochastic process. We consider the situation of practical importance where the random measures νi\nu_{i} are absolutely continuous with densities fif_{i} that are not directly observable. In this case, instead of the densities, we have access to datasets of real random variables (Xi,j)1in;  1jpi(X_{i,j})_{1 \leq i \leq n; \; 1 \leq j \leq p_{i} } organized in the form of nn experimental units, such that Xi,1,,Xi,piX_{i,1},\ldots,X_{i,p_{i}} are iid observations sampled from a random measure νi\nu_{i} for each 1in1 \leq i \leq n. In this setting, we focus on first-order statistics methods for estimating, from such data, a meaningful structural mean measure. For the purpose of taking into account phase and amplitude variations in the observations, we argue that the notion of Wasserstein barycenter is a relevant tool. The main contribution of this paper is to characterize the rate of convergence of a (possibly smoothed) empirical Wasserstein barycenter towards its population counterpart in the asymptotic setting where both nn and min1inpi\min_{1 \leq i \leq n} p_{i} may go to infinity. The optimality of this procedure is discussed from the minimax point of view with respect to the Wasserstein metric. We also highlight the connection between our approach and the curve registration problem in statistics. Some numerical experiments are used to illustrate the results of the paper on the convergence rate of empirical Wasserstein barycenters.

View on arXiv
Comments on this paper