Measuring association with Wasserstein distances

Let be a coupling between two probability measures and on a Polish space. In this article we propose and study a class of nonparametric measures of association between and . The analysis is based on the Wasserstein distance between and the disintegration of with respect to the first coordinate. We also establish basic statistical properties of this new class of measures: we develop a statistical theory for strongly consistent estimators and determine their convergence rate. Throughout our analysis we make use of the so-called adapted/causal Wasserstein distance, in particular we rely on results established in [Backhoff, Bartl, Beiglb\"ock, Wiesel. Estimating processes in adapted Wasserstein distance. 2020]. Our class of measures offers on alternative to the correlation coefficient proposed by [Dette, Siburg and Stoimenov (2013). A copula-based non-parametric measure of regression dependence. Scandinavian Journal of Statistics 40(1), 21-41] and [Chatterjee (2020). A new coefficient of correlation. Journal of the American Statistical Association, 1-21]. In contrast to these works, our approach also applies to probability laws on general Polish spaces.
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