侵权法、矫正正义与自主机器致害问题

IF 0.4 Q3 LAW
Pinchas Huberman
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引用次数: 1

摘要

人工智能和机器人技术的发展有望增加人类与自主机器之间的互动,给个人和财产带来意外伤害的新风险。1本文将自主机器造成的伤害问题置于侵权法的理论和理论框架内,并将其视为矫正司法的实践。自主机器造成损害的可能性为确定侵权责任产生了新的理论和理论问题。由于机器学习能力,设计者、制造商或用户的侵权行为可能无法追踪自主机器的有害影响。2因此,传统的侵权原则——以可预见性和近因关系为框架——不会成为责任的基础。3如果没有赔偿,无过错的受害者将承担自主机器的事故成本。这一理论结果反映了侵权行为矫正正义的理论结构与涉及自动机器的事故之间可能存在的不相容性。作为矫正司法的一种实践,侵权责任在特定的被告和原告之间建立了规范性的联系,作为同一侵权损害的实施者和受害者,从而奠定了被告特定代理人修复损害的义务。有人认为,如果事故是由自动机器引起的,被告和原告之间的基本联系就会被切断;由于由此造成的损害在法律上不可归责于设计者、制造商或用户的人为代理,受害者在侵权行为中没有任何补救措施。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Tort Law, Corrective Justice and the Problem of Autonomous-Machine-Caused Harm
Developments in artificial intelligence and robotics promise increased interaction between humans and autonomous machines, presenting novel risks of accidental harm to individuals and property.1 This essay situates the problem of autonomous-machine-caused harm within the doctrinal and theoretical framework of tort law, conceived of as a practice of corrective justice. The possibility of autonomous-machine-caused harm generates fresh doctrinal and theoretical issues for assigning tort liability. Due to machine-learning capabilities, harmful effects of autonomous machines may be untraceable to tortious actions of designers, manufacturers or users.2 As a result, traditional tort doctrine—framed by conditions of foreseeability and proximate causation—would not ground liability.3 Without recourse to compensation, faultless victims bear the accident costs of autonomous machines. This doctrinal outcome reflects possible incompatibility between tort’s theoretical structure of corrective justice and accidents involving autonomous machines. As a practice of corrective justice, tort liability draws a normative link between particular defendants and plaintiffs, as doers and sufferers of the same tortious harm, grounding defendants’ agent-specific obligations to repair the harm. Where accidents are caused by autonomous machines, the argument goes, the essential link between defendants and plaintiffs is severed; since resulting harm is not legally attributable to the human agency of designers, manufacturers or users, victims have no remedy in tort.
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来源期刊
CiteScore
1.10
自引率
16.70%
发文量
32
期刊介绍: The Canadian Journal of Law & Jurisprudence serves as a forum for special and general jurisprudence and legal philosophy. It publishes articles that address the nature of law, that engage in philosophical analysis or criticism of legal doctrine, that examine the form and nature of legal or judicial reasoning, that investigate issues concerning the ethical aspects of legal practice, and that study (from a philosophical perspective) concrete legal issues facing contemporary society. The journal does not use case notes, nor does it publish articles focussing on issues particular to the laws of a single nation. The Canadian Journal of Law & Jurisprudence is published on behalf of the Faculty of Law, Western University.
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