Statistical Aspects of Wasserstein Distances

被引:372
|
作者
Panaretos, Victor M. [1 ]
Zemel, Yoav [2 ]
机构
[1] Ecole Polytech Fed Lausanne, Inst Math, CH-1015 Lausanne, Switzerland
[2] Georg August Univ, Inst Math Stochast, D-37077 Gottingen, Germany
基金
欧洲研究理事会;
关键词
deformation map; empirical optimal transport; Frechet mean; goodness-of-fit; inference; Monge-Kantorovich problem; optimal coupling; probability metric; transportation of measure; warping; registration; Wasserstein space; CENTRAL-LIMIT-THEOREM; OPTIMAL TRANSPORT; POLAR FACTORIZATION; ASYMPTOTIC THEORY; GEODESIC PCA; DISTRIBUTIONS; CONVERGENCE; BARYCENTERS; BOUNDS; TESTS;
D O I
10.1146/annurev-statistics-030718-104938
中图分类号
O1 [数学];
学科分类号
0701 ; 070101 ;
摘要
Wasserstein distances are metrics on probability distributions inspired by the problem of optimal mass transportation. Roughly speaking, they measure the minimal effort required to reconfigure the probability mass of one distribution in order to recover the other distribution. They are ubiquitous in mathematics, with a long history that has seen them catalyze core developments in analysis, optimization, and probability. Beyond their intrinsic mathematical richness, they possess attractive features that make them a versatile tool for the statistician: They can be used to derive weak convergence and convergence of moments, and can be easily bounded; they are well-adapted to quantify a natural notion of perturbation of a probability distribution; and they seamlessly incorporate the geometry of the domain of the distributions in question, thus being useful for contrasting complex objects. Consequently, they frequently appear in the development of statistical theory and inferential methodology, and they have recently become an object of inference in themselves. In this review, we provide a snapshot of the main concepts involved in Wasserstein distances and optimal transportation, and a succinct overview of some of their many statistical aspects.
引用
收藏
页码:405 / 431
页数:27
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