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Algorithmic Fairness in AI Surrogates for End-of-Life Decision-Making

2025·0 Zitationen·ArXiv.orgOpen Access
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1

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2025

Jahr

Abstract

Artificial intelligence surrogates are systems designed to infer preferences when individuals lose decision-making capacity. Fairness in such systems is a domain that has been insufficiently explored. Traditional algorithmic fairness frameworks are insufficient for contexts where decisions are relational, existential, and culturally diverse. This paper explores an ethical framework for algorithmic fairness in AI surrogates by mapping major fairness notions onto potential real-world end-of-life scenarios. It then examines fairness across moral traditions. The authors argue that fairness in this domain extends beyond parity of outcomes to encompass moral representation, fidelity to the patient's values, relationships, and worldview.

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Themen

Ethics and Social Impacts of AIArtificial Intelligence in Healthcare and EducationNeuroethics, Human Enhancement, Biomedical Innovations
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