LIMIT DISTRIBUTION THEORY FOR SMOOTH p-WASSERSTEIN DISTANCES
成果类型:
Article
署名作者:
Goldfeld, Ziv; Kato, Kengo; Nietert, Sloan; Rioux, Gabriel
署名单位:
Cornell University; Cornell University; Cornell University; Cornell University
刊物名称:
ANNALS OF APPLIED PROBABILITY
ISSN/ISSBN:
1050-5164
DOI:
10.1214/23-AAP2028
发表日期:
2024
页码:
2447-2487
关键词:
regularized optimal transport
empirical measures
minimum distance
CONVERGENCE
asymptotics
cost
approximation
inequalities
functionals
convexity
摘要:
The Wasserstein distance is a metric on a space of probability measures that has seen a surge of applications in statistics, machine learning, and applied mathematics. However, statistical aspects of Wasserstein distances are bottlenecked by the curse of dimensionality, whereby the number of data points needed to accurately estimate them grows exponentially with dimension. Gaussian smoothing was recently introduced as a means to alleviate the curse of dimensionality, giving rise to a parametric convergence rate in any dimension, while preserving the Wasserstein metric and topological structure. To facilitate valid statistical inference, in this work, we develop a comprehensive limit distribution theory for the empirical smooth Wasserstein distance. The limit distribution results leverage the functional delta method after embedding the domain of the Wasserstein distance into a certain dual Sobolev space, characterizing its Hadamard directional derivative for the dual Sobolev norm, and establishing weak convergence of the smooth empirical process in the dual space. To estimate the distributional limits, we also establish consistency of the nonparametric bootstrap. Finally, we use the limit distribution theory to study applications to generative modeling via minimum distance estimation with the smooth Wasserstein distance, showing asymptotic normality of optimal solutions for the quadratic cost.
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