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Explaining a black-box using Deep Variational Information Bottleneck Approach

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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

Seojin Bang, Pengtao Xie, Heewook Lee, Wei Wu, Eric Xing• 2019

Related benchmarks

TaskDatasetResultRank
Environmental Sound ClassificationESC-50 (test)
Top-1 Fidelity27.7
14
multi-label urban sound taggingSONYC-UST
Macro AUPRC60.8
4
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