Responsibility Gaps and Black Box Healthcare AI: Shared Responsibilization as a Solution


연구 분야: Artificial Intelligence



학회: Digital Society


초록

As sophisticated artificial intelligence software becomes more ubiquitously and more intimately integrated within domains of traditionally human endeavor, many are raising questions over how responsibility (be it moral, legal, or causal) can be understood for an AI’s actions or influence on an outcome. So called “responsibility gaps” occur whenever there exists an apparent chasm in the ordinary attribution of moral blame or responsibility when an AI automates physical or cognitive labor otherwise performed by human beings and commits an error. Healthcare administration is an industry ripe for responsibility gaps produced by these kinds of AI. The moral stakes of healthcare are often life and death, and the demand for reducing clinical uncertainty while standardizing care incentivizes the development and integration of AI diagnosticians and prognosticators. In this paper, we argue that (1) responsibility gaps are generated by “black box” healthcare AI, (2) the presence of responsibility gaps (if unaddressed) creates serious moral problems, (3) a suitable solution is for relevant stakeholders to voluntarily responsibilize the gaps, taking on some moral responsibility for things they are not, strictly speaking, blameworthy for, and (4) should this solution be taken, black box healthcare AI will be permissible in the provision of healthcare.


Author Profile
Benjamin H. Lang

University of Oxford Oxford UK

정보 없음
Author Profile
Sven Nyholm

Baylor College of Medicine Houston TX USA

United States
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Jennifer Blumenthal-Barby

LMU Munich Munich Germany

Germany

📄 논문 정보

발행 연도 2023년
인용수 24
출판 국가 Germany, United States
사이트 Springer
좋아요 수 0

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