2023
DOI: 10.48550/arxiv.2303.04809
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Learning Human-Compatible Representations for Case-Based Decision Support

Abstract: Algorithmic case-based decision support provides examples to aid people in decision making tasks by providing contexts for a test case. Despite the promising performance of supervised learning, representations learned by supervised models may not align well with human intuitions: what models consider similar examples can be perceived as distinct by humans. As a result, they have limited effectiveness in case-based decision support. In this work, we incorporate ideas from metric learning with supervised learnin… Show more

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