2020
DOI: 10.48550/arxiv.2006.13913
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Generative causal explanations of black-box classifiers

Abstract: We develop a method for generating causal post-hoc explanations of black-box classifiers based on a learned low-dimensional representation of the data. The explanation is causal in the sense that changing learned latent factors produces a change in the classifier output statistics. To construct these explanations, we design a learning framework that leverages a generative model and information-theoretic measures of causal influence. Our objective function encourages both the generative model to faithfully repr… Show more

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References 19 publications
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