Non-Determinism and the Lawlessness of Machine Learning Code

A. Cooper, Jonathan Frankle, Chris De Sa
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引用次数: 1

Abstract

Legal literature on machine learning (ML) tends to focus on harms, and thus tends to reason about individual model outcomes and summary error rates. This focus has masked important aspects of ML that are rooted in its reliance on randomness --- namely, stochasticity and non-determinism. While some recent work has begun to reason about the relationship between stochasticity and arbitrariness in legal contexts, the role of non-determinism more broadly remains unexamined. In this paper, we clarify the overlap and differences between these two concepts, and show that the effects of non-determinism, and consequently its implications for the law, become clearer from the perspective of reasoning about ML outputs as distributions over possible outcomes. This distributional viewpoint accounts for randomness by emphasizing the possible outcomes of ML. Importantly, this type of reasoning is not exclusive with current legal reasoning; it complements (and in fact can strengthen) analyses concerning individual, concrete outcomes for specific automated decisions. By illuminating the important role of non-determinism, we demonstrate that ML code falls outside of the cyberlaw frame of treating "code as law,'' as this frame assumes that code is deterministic. We conclude with a brief discussion of what work ML can do to constrain the potentially harm-inducing effects of non-determinism, and we indicate where the law must do work to bridge the gap between its current individual-outcome focus and the distributional approach that we recommend.
机器学习代码的非决定论和无法无天
关于机器学习(ML)的法律文献倾向于关注危害,因此倾向于对单个模型结果和总结错误率进行推理。这种关注掩盖了机器学习的重要方面,这些方面植根于对随机性的依赖,即随机性和非确定性。虽然最近的一些工作已经开始对法律背景下的随机性和随意性之间的关系进行推理,但非决定论的作用仍未得到更广泛的研究。在本文中,我们澄清了这两个概念之间的重叠和差异,并表明,从将ML输出作为可能结果的分布进行推理的角度来看,非确定性的影响及其对定律的含义变得更加清晰。这种分布观点通过强调ML的可能结果来解释随机性。重要的是,这种类型的推理并不局限于当前的法律推理;它补充(实际上可以加强)针对特定自动化决策的个人具体结果的分析。通过阐明非决定论的重要作用,我们证明ML代码不属于将“代码视为法律”的网络法框架,因为该框架假设代码是确定性的。最后,我们简要讨论了机器学习可以做些什么来限制非确定性的潜在有害影响,并指出法律必须在哪些方面做些工作,以弥合其当前的个人结果焦点与我们推荐的分配方法之间的差距。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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