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引用次数: 0
摘要
随着自主系统的迅速普及,人们越来越需要一个法律和监管框架来解决此类系统何时以及如何对他人造成伤害的问题。哲学文献曾多次尝试对伤害进行定义,但事实证明,这些定义都无法应对所提出的众多实例,因此有人建议放弃伤害的概念,"代之以更规范的概念"。由于危害通常是由原因造成的,因此这些定义大多在一定程度上涉及因果关系。然而,令人惊讶的是,这些定义都没有利用因果模型及其所能表达的实际因果关系的定义。本文是 Beckers 等人的会议论文(Adv Neural Inform Process Syst 35:2365-2376, 2022)的扩充版,我们正式定义了一个定性的伤害概念,该概念使用因果模型,并基于众所周知的实际因果关系定义。我们定义的主要特点是,它基于对比因果关系,并使用默认效用与实际结果的效用进行比较。我们展示了我们的定义能够处理文献中的例子,并说明了它对涉及自主系统的情况进行推理的重要性。
As autonomous systems rapidly become ubiquitous, there is a growing need for a legal and regulatory framework that addresses when and how such a system harms someone. There have been several attempts within the philosophy literature to define harm, but none of them has proven capable of dealing with the many examples that have been presented, leading some to suggest that the notion of harm should be abandoned and “replaced by more well-behaved notions”. As harm is generally something that is caused, most of these definitions have involved causality at some level. Yet surprisingly, none of them makes use of causal models and the definitions of actual causality that they can express. In this paper, which is an expanded version of the conference paper Beckers et al. (Adv Neural Inform Process Syst 35:2365–2376, 2022), we formally define a qualitative notion of harm that uses causal models and is based on a well-known definition of actual causality. The key features of our definition are that it is based on contrastive causation and uses a default utility to which the utility of actual outcomes is compared. We show that our definition is able to handle the examples from the literature, and illustrate its importance for reasoning about situations involving autonomous systems.
期刊介绍:
Minds and Machines, affiliated with the Society for Machines and Mentality, serves as a platform for fostering critical dialogue between the AI and philosophical communities. With a focus on problems of shared interest, the journal actively encourages discussions on the philosophical aspects of computer science.
Offering a global forum, Minds and Machines provides a space to debate and explore important and contentious issues within its editorial focus. The journal presents special editions dedicated to specific topics, invites critical responses to previously published works, and features review essays addressing current problem scenarios.
By facilitating a diverse range of perspectives, Minds and Machines encourages a reevaluation of the status quo and the development of new insights. Through this collaborative approach, the journal aims to bridge the gap between AI and philosophy, fostering a tradition of critique and ensuring these fields remain connected and relevant.