Identifying the Most Explainable ClassifierDownload PDFOpen Website

Published: 01 Jan 2019, Last Modified: 10 May 2023CoRR 2019Readers: Everyone
Abstract: We introduce the notion of pointwise coverage to measure the explainability properties of machine learning classifiers. An explanation for a prediction is a definably simple region of the feature space sharing the same label as the prediction, and the coverage of an explanation measures its size or generalizability. With this notion of explanation, we investigate whether or not there is a natural characterization of the most explainable classifier. According with our intuitions, we prove that the binary linear classifier is uniquely the most explainable classifier up to negligible sets.
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