4.5 Article

Estimating the Directed Information and Testing for Causality

Journal

IEEE TRANSACTIONS ON INFORMATION THEORY
Volume 62, Issue 11, Pages 6053-6067

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TIT.2016.2604842

Keywords

Entropy; mutual information; directed information; maximum likelihood; plug-in estimator; causality; hypothesis testing; Markov chain; conditional independence; likelihood ratio; chi(2) test

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The problem of estimating the directed information rate between two discrete processes {X-n} and {Y-n} via the plug-in (or maximum-likelihood) estimator is considered. When the joint process {(X-n, Y-n)} is a Markov chain of a given memory length, the plug-in estimator is shown to be asymptotically Gaussian and to converge at the optimal rate O(1/v n) under appropriate conditions; this is the first estimator that has been shown to achieve this rate. An important connection is drawn between the problem of estimating the directed information rate and that of performing a hypothesis test for the presence of causal influence between the two processes. Under fairly general conditions, the null hypothesis, which corresponds to the absence of causal influence, is equivalent to the requirement that the directed information rate be equal to zero. In that case, a finer result is established, showing that the plug-in converges at the faster rate O(1/n) and that it is asymptotically chi(2)-distributed. This is proved by showing that this estimator is equal to (a scalar multiple of) the classical likelihood ratio statistic for the above hypothesis test. Finally, it is noted that these results facilitate the design of an actual likelihood ratio test for the presence or absence of causal influence.

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