A Unified Framework of Five Principles for AI in Society

L. Floridi, Josh Cowls
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引用次数: 356

Abstract

Artificial Intelligence (AI) is already having a major impact on society. As a result, many organizations have launched a wide range of initiatives to establish ethical principles for the adoption of socially beneficial AI. Unfortunately, the sheer volume of proposed principles threatens to overwhelm and confuse. How might this problem of ‘principle proliferation’ be solved? In this paper, we report the results of a fine-grained analysis of several of the highest-profile sets of ethical principles for AI. We assess whether these principles converge upon a set of agreed-upon principles, or diverge, with significant disagreement over what constitutes ‘ethical AI.’ Our analysis finds a high degree of overlap among the sets of principles we analyze. We then identify an overarching framework consisting of five core principles for ethical AI. Four of them are core principles commonly used in bioethics: beneficence, non-maleficence, autonomy, and justice. On the basis of our comparative analysis, we argue that a new principle is needed in addition: explicability, understood as incorporating both the epistemological sense of intelligibility (as an answer to the question ‘how does it work?’) and in the ethical sense of accountability (as an answer to the question: ‘who is responsible for the way it works?’). In the ensuing discussion, we note the limitations and assess the implications of this ethical framework for future efforts to create laws, rules, technical standards, and best practices for ethical AI in a wide range of contexts.KeywordsAccountability; Autonomy; Artificial Intelligence; Beneficence; Ethics; Explicability; Fairness; Intelligibility; Justice; Non-maleficence.
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社会人工智能五大原则的统一框架
人工智能(AI)已经对社会产生了重大影响。因此,许多组织已经发起了广泛的倡议,为采用对社会有益的人工智能建立道德原则。不幸的是,大量提出的原则可能会压倒和混淆。如何解决这个“原则扩散”的问题?在本文中,我们报告了对几组最引人注目的人工智能伦理原则进行细粒度分析的结果。我们评估这些原则是否会聚在一组商定的原则上,或者在什么构成“道德人工智能”方面存在重大分歧。“我们的分析发现,我们分析的原则之间存在高度重叠。然后,我们确定了一个由道德人工智能的五个核心原则组成的总体框架。其中四个是生命伦理学中常用的核心原则:善、无害、自主和正义。在我们的比较分析的基础上,我们认为还需要一个新的原则:可解释性,理解为结合认识论意义上的可解性(作为对“它是如何工作的”这个问题的回答)和伦理意义上的问责性(作为对“谁对它的工作方式负责?”这个问题的回答)。在随后的讨论中,我们注意到这一道德框架的局限性,并评估了这一道德框架对未来在广泛背景下为道德人工智能制定法律、规则、技术标准和最佳实践的影响。自治;人工智能;善行;道德规范;Explicability;公平;可理解性;正义;没有恶行。
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