Hypothesis Test and Confidence Analysis With Wasserstein Distance on General Dimension.

Journal: Neural computation
Published Date:

Abstract

We develop a general framework for statistical inference with the 1-Wasserstein distance. Recently, the Wasserstein distance has attracted considerable attention and has been widely applied to various machine learning tasks because of its excellent properties. However, hypothesis tests and a confidence analysis for it have not been established in a general multivariate setting. This is because the limit distribution of the empirical distribution with the Wasserstein distance is unavailable without strong restriction. To address this problem, in this study, we develop a novel nonasymptotic gaussian approximation for the empirical 1-Wasserstein distance. Using the approximation method, we develop a hypothesis test and confidence analysis for the empirical 1-Wasserstein distance. We also provide a theoretical guarantee and an efficient algorithm for the proposed approximation. Our experiments validate its performance numerically.

Authors

  • Masaaki Imaizumi
    The University of Tokyo, Meguro, Tokyo 153-0041, Japan.
  • Hirofumi Ota
  • Takuo Hamaguchi
    The University of Tokyo, Meguro, Tokyo 153-0041, Japan takuo-h@g.ecc.u-tokyo.ac.jp.