2022
DOI: 10.48550/arxiv.2203.09852
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Decision-Making under Miscalibration

Abstract: ML-based predictions are used to inform consequential decisions about individuals. How should we use predictions (e.g., risk of heart attack) to inform downstream binary classification decisions (e.g., undergoing a medical procedure)? When the risk estimates are perfectly calibrated, the answer is well understood: a classification problem's cost structure induces an optimal treatment threshold j . In practice, however, some amount of miscalibration is unavoidable, raising a fundamental question: how should one… Show more

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