可解释机器的直觉吸引力

IF 1 3区 社会学 Q2 LAW
Andrew D. Selbst, Solon Barocas
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引用次数: 234

摘要

算法决策已经成为莫名其妙的决策的代名词,但是什么让算法如此难以解释?这篇文章探讨了机器学习与其他制定决策规则的方法的区别,以及这些特性带来的解释问题。我们证明了机器学习模型既可以是不可理解的,也可以是非直觉的,这些都是相关但不同的特性。要求解释的呼声将这些问题视为一个问题,但将两者分开表明,它们需要截然不同的回应。处理神秘性需要对规则进行合理的描述;解决非直觉性问题需要提供一个令人满意的解释,解释为什么规则是这样的。现有的法律,如《公平信用报告法》(FCRA)、《平等信贷机会法》(ECOA)和《通用数据保护条例》(GDPR),以及机器学习中的技术,几乎完全集中在神秘性问题上。虽然这些技术可以让机器学习系统遵守现有法律,但如果目标是评估决策的基础是否符合规范,那么这样做可能没有帮助。在大多数情况下,直觉是描述性描述和规范性评价之间未被承认的桥梁。但是,由于机器学习通常因其揭示违背直觉的统计关系的能力而受到重视,因此依赖直觉并不是一种令人满意的方法。因此,本条主张建立其他规范性评价机制。要想知道规则为什么是这样,必须寻求对模型开发背后过程的解释,而不仅仅是对模型本身的解释。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Intuitive Appeal of Explainable Machines
Algorithmic decision-making has become synonymous with inexplicable decision-making, but what makes algorithms so difficult to explain? This Article examines what sets machine learning apart from other ways of developing rules for decision-making and the problem these properties pose for explanation. We show that machine learning models can be both inscrutable and nonintuitive and that these are related, but distinct, properties. Calls for explanation have treated these problems as one and the same, but disentangling the two reveals that they demand very different responses. Dealing with inscrutability requires providing a sensible description of the rules; addressing nonintuitiveness requires providing a satisfying explanation for why the rules are what they are. Existing laws like the Fair Credit Reporting Act (FCRA), the Equal Credit Opportunity Act (ECOA), and the General Data Protection Regulation (GDPR), as well as techniques within machine learning, are focused almost entirely on the problem of inscrutability. While such techniques could allow a machine learning system to comply with existing law, doing so may not help if the goal is to assess whether the basis for decision-making is normatively defensible. In most cases, intuition serves as the unacknowledged bridge between a descriptive account and a normative evaluation. But because machine learning is often valued for its ability to uncover statistical relationships that defy intuition, relying on intuition is not a satisfying approach. This Article thus argues for other mechanisms for normative evaluation. To know why the rules are what they are, one must seek explanations of the process behind a model’s development, not just explanations of the model itself.
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来源期刊
CiteScore
1.10
自引率
12.50%
发文量
0
期刊介绍: The Fordham Law Review is a scholarly journal serving the legal profession and the public by discussing current legal issues. Approximately 75 articles, written by students or submitted by outside authors, are published each year. Each volume comprises six books, three each semester, totaling over 3,000 pages. Managed by a board of up to eighteen student editors, the Law Review is a working journal, not merely an honor society. Nevertheless, Law Review membership is considered among the highest scholarly achievements at the Law School.
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