MIND: Inductive Mutual Information Estimation, A Convex Maximum-Entropy Copula Approach
Yves-Laurent Kom Samo

TL;DR
The paper introduces MIND, a new convex maximum-entropy copula-based estimator for mutual information that is data-efficient, consistent, and invariant to marginals, with applications in GAN mode collapse mitigation.
Contribution
It presents a novel inductive mutual information estimator based on copula entropy and maximum-entropy principles, avoiding full joint distribution estimation.
Findings
MIND estimator is marginal-invariant and non-negative.
It achieves an MSE rate of O(1/n).
It is more data-efficient than existing methods.
Abstract
We propose a novel estimator of the mutual information between two ordinal vectors and . Our approach is inductive (as opposed to deductive) in that it depends on the data generating distribution solely through some nonparametric properties revealing associations in the data, and does not require having enough data to fully characterize the true joint distributions . Specifically, our approach consists of (i) noting that where and are the copula-uniform dual representations of and (i.e. their images under the probability integral transform), and (ii) estimating the copula entropies , and by solving a maximum-entropy problem over the space of copula densities under a constraint of the type . We prove…
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Taxonomy
TopicsAdversarial Robustness in Machine Learning · Domain Adaptation and Few-Shot Learning · Machine Learning and Algorithms
