Variational Information Maximization for Feature Selection
Abstract
Feature selection is one of the most fundamental problems in machine learning. An extensive body of work on information-theoretic feature selection exists which is based on maximizing mutual information between subsets of features and class labels. Practical methods are forced to rely on approximations due to the difficulty of estimating mutual information. We demonstrate that approximations made by existing methods are based on unrealistic assumptions. We formulate a more flexible and general class of assumptions based on variational distributions and use them to tractably generate lower bounds for mutual information. These bounds define a novel information-theoretic framework for feature selection, which we prove to be optimal under tree graphical models with proper choice of variational distributions. Our experiments demonstrate that the proposed method strongly outperforms existing information-theoretic feature selection approaches.
Cite
Text
Gao et al. "Variational Information Maximization for Feature Selection." Neural Information Processing Systems, 2016.Markdown
[Gao et al. "Variational Information Maximization for Feature Selection." Neural Information Processing Systems, 2016.](https://mlanthology.org/neurips/2016/gao2016neurips-variational/)BibTeX
@inproceedings{gao2016neurips-variational,
title = {{Variational Information Maximization for Feature Selection}},
author = {Gao, Shuyang and Steeg, Greg Ver and Galstyan, Aram},
booktitle = {Neural Information Processing Systems},
year = {2016},
pages = {487-495},
url = {https://mlanthology.org/neurips/2016/gao2016neurips-variational/}
}