A Wasserstein-based measure of conditional dependence

Author:

Etesami JalalORCID,Zhang Kun,Kiyavash Negar

Abstract

AbstractMeasuring conditional dependencies among the variables of a network is of great interest to many disciplines. This paper studies some shortcomings of the existing dependency measures in detecting direct causal influences or their lack of ability for group selection to capture strong dependencies and accordingly introduces a new statistical dependency measure to overcome them. This measure is inspired by Dobrushin’s coefficients and based on the fact that there is no dependency between X and Y given another variable Z, if and only if the conditional distribution of Y given $$X=x$$ X = x and $$Z=z$$ Z = z does not change when X takes another realization $$x'$$ x while Z takes the same realization z. We show the advantages of this measure over the related measures in the literature. Moreover, we establish the connection between our measure and the integral probability metric (IPM) that helps to develop estimators of the measure with lower complexity compared to other relevant information theoretic-based measures. Finally, we show the performance of this measure through numerical simulations.

Funder

Office of Naval Research Global

Swiss Re Foundation

EPFL Lausanne

Publisher

Springer Science and Business Media LLC

Subject

Applied Mathematics,Clinical Psychology,Experimental and Cognitive Psychology,Analysis

Reference30 articles.

1. Alfred Müller (1997) Integral probability metrics and their generating classes of functions. Advances in applied probability. Springer, Berlin, pp 429–443

2. Aronszajn N (1950) Theory of reproducing kernels. Trans Am Math Soc 68(3):337–404

3. Arthur G, Karsten MB, Malte R, Bernhard S, Smola AJ (2006) A kernel method for the two-sample-problem. Advances in neural information processing systems. Springer, Berlin, pp 513–520

4. Arthur G, Kenji F, Choon HT, Le S, Bernhard S, Smola AJ (2007) A kernel statistical test of independence. Advances in neural information processing systems. Springer, Berlin, pp 585–592

5. Ay N, Polani D (2008) Information flows in causal networks. Adv Complex Syst 11(01):17–41

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