Explaining a black-box using Deep Variational Information Bottleneck Approach
Abstract
Interpretable machine learning has gained much attention recently. Briefness and comprehensiveness are necessary in order to provide a large amount of information concisely when explaining a black-box decision system. However, existing interpretable machine learning methods fail to consider briefness and comprehensiveness simultaneously, leading to redundant explanations. We propose the variational information bottleneck for interpretation, VIBI, a system-agnostic interpretable method that provides a brief but comprehensive explanation. VIBI adopts an information theoretic principle, information bottleneck principle, as a criterion for finding such explanations. For each instance, VIBI selects key features that are maximally compressed about an input (briefness), and informative about a decision made by a black-box system on that input (comprehensive). We evaluate VIBI on three datasets and compare with state-of-the-art interpretable machine learning methods in terms of both interpretability and fidelity evaluated by human and quantitative metrics
Cite
@article{arxiv.1902.06918,
title = {Explaining a black-box using Deep Variational Information Bottleneck Approach},
author = {Seojin Bang and Pengtao Xie and Heewook Lee and Wei Wu and Eric Xing},
journal= {arXiv preprint arXiv:1902.06918},
year = {2019}
}