Intentional machines: A defence of trust in medical artificial intelligence

能力(人力资源) 心理学 背景(考古学) 计算机科学 渲染(计算机图形) 人工智能应用 人工智能 社会心理学 古生物学 生物
作者
Georg Starke,R. van den Brule,Bernice S. Elger,Pim Haselager
出处
期刊:Bioethics [Wiley]
卷期号:36 (2): 154-161 被引量:37
标识
DOI:10.1111/bioe.12891
摘要

Trust constitutes a fundamental strategy to deal with risks and uncertainty in complex societies. In line with the vast literature stressing the importance of trust in doctor-patient relationships, trust is therefore regularly suggested as a way of dealing with the risks of medical artificial intelligence (AI). Yet, this approach has come under charge from different angles. At least two lines of thought can be distinguished: (1) that trusting AI is conceptually confused, that is, that we cannot trust AI; and (2) that it is also dangerous, that is, that we should not trust AI-particularly if the stakes are as high as they routinely are in medicine. In this paper, we aim to defend a notion of trust in the context of medical AI against both charges. To do so, we highlight the technically mediated intentions manifest in AI systems, rendering trust a conceptually plausible stance for dealing with them. Based on literature from human-robot interactions, psychology and sociology, we then propose a novel model to analyse notions of trust, distinguishing between three aspects: reliability, competence, and intentions. We discuss each aspect and make suggestions regarding how medical AI may become worthy of our trust.
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