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2022
DOI: 10.7557/18.6294
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Uncertainty Quantification of Surrogate Explanations: an Ordinal Consensus Approach

Abstract: Explainability of black-box machine learning models is crucial, in particular when deployed in critical applications such as medicine or autonomous cars. Existing approaches produce explanations for the predictions of models, however, how to assess the quality and reliability of such explanations remains an open question. In this paper we take a step further in order to provide the practitioner with tools to judge the trustworthiness of an explanation. To this end, we produce estimates of the uncertainty of a … Show more

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