Nonlinear Information Bottleneck

May 06, 2017 Β· Declared Dead Β· πŸ› Entropy

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Authors Artemy Kolchinsky, Brendan D. Tracey, David H. Wolpert arXiv ID 1705.02436 Category cs.IT: Information Theory Cross-listed cs.LG, stat.ML Citations 179 Venue Entropy Last Checked 4 months ago
Abstract
Information bottleneck (IB) is a technique for extracting information in one random variable $X$ that is relevant for predicting another random variable $Y$. IB works by encoding $X$ in a compressed "bottleneck" random variable $M$ from which $Y$ can be accurately decoded. However, finding the optimal bottleneck variable involves a difficult optimization problem, which until recently has been considered for only two limited cases: discrete $X$ and $Y$ with small state spaces, and continuous $X$ and $Y$ with a Gaussian joint distribution (in which case optimal encoding and decoding maps are linear). We propose a method for performing IB on arbitrarily-distributed discrete and/or continuous $X$ and $Y$, while allowing for nonlinear encoding and decoding maps. Our approach relies on a novel non-parametric upper bound for mutual information. We describe how to implement our method using neural networks. We then show that it achieves better performance than the recently-proposed "variational IB" method on several real-world datasets.
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