Relevant sparse codes with variational information bottleneck

Chalk, Matthew, Marre, Olivier, Tkacik, Gasper

arXiv.org Machine Learning 

Gasper Tkacik IST Austria Am Campus 1 A - 3400 Klosterneuburg, Austria In many applications, it is desirable to extract only the relevant aspects of data. A principled way to do this is the information bottleneck (IB) method, where one seeks a code that maximizes information about a'relevance' variable, Y, while constraining the information encoded about the original data, X. Unfortunately however, the IB method is computationally demanding when data are high-dimensional and/or non-gaussian. Here we propose an approximate variational scheme for maximizing a lower bound on the IB objective, analogous to variational EM. Using this method, we derive an IB algorithm to recover features that are both relevant and sparse. Finally, we demonstrate how kernelized versions of the algorithm can be used to address a broad range of problems with nonlinear relation between X and Y.

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