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Exponential Concentration for Mutual Information Estimation with Application to Forests

2012-12-01NeurIPS 2012Unverified0· sign in to hype

Han Liu, Larry Wasserman, John D. Lafferty

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Abstract

We prove a new exponential concentration inequality for a plug-in estimator of the Shannon mutual information. Previous results on mutual information estimation only bounded expected error. The advantage of having the exponential inequality is that, combined with the union bound, we can guarantee accurate estimators of the mutual information for many pairs of random variables simultaneously. As an application, we show how to use such a result to optimally estimate the density function and graph of a distribution which is Markov to a forest graph.

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