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Explainable AI under contract and tort law: legal incentives and technical challenges

Philipp Hacker, Ralf Krestel, Stefan Grundmann, Felix Naumann

2020Artificial Intelligence and Law174 citationsDOIOpen Access PDF

Abstract

Abstract This paper shows that the law, in subtle ways, may set hitherto unrecognized incentives for the adoption of explainable machine learning applications. In doing so, we make two novel contributions. First, on the legal side, we show that to avoid liability, professional actors, such as doctors and managers, may soon be legally compelled to use explainable ML models. We argue that the importance of explainability reaches far beyond data protection law, and crucially influences questions of contractual and tort liability for the use of ML models. To this effect, we conduct two legal case studies, in medical and corporate merger applications of ML. As a second contribution, we discuss the (legally required) trade-off between accuracy and explainability and demonstrate the effect in a technical case study in the context of spam classification.

Topics & Concepts

TortIncentiveContext (archaeology)Legal aspects of computingLiabilityPhilosophy of lawLegal liabilityBusinessLaw and economicsDelictSet (abstract data type)LawPolitical scienceEconomicsPrivate lawComputer sciencePublic lawThe InternetBlack letter lawMicroeconomicsWorld Wide WebBiologyPaleontologyProgramming languageExplainable Artificial Intelligence (XAI)Artificial Intelligence in Healthcare and EducationEthics and Social Impacts of AI
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