What's Fair about Individual Fairness?

W. Fleisher
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引用次数: 31

Abstract

One of the main lines of research in algorithmic fairness involves individual fairness (IF) methods. Individual fairness is motivated by an intuitive principle, similar treatment, which requires that similar individuals be treated similarly. IF offers a precise account of this principle using distance metrics to evaluate the similarity of individuals. Proponents of individual fairness have argued that it gives the correct definition of algorithmic fairness, and that it should therefore be preferred to other methods for determining fairness. I argue that individual fairness cannot serve as a definition of fairness. Moreover, IF methods should not be given priority over other fairness methods, nor used in isolation from them. To support these conclusions, I describe four in-principle problems for individual fairness as a definition and as a method for ensuring fairness: (1) counterexamples show that similar treatment (and therefore IF) are insufficient to guarantee fairness; (2) IF methods for learning similarity metrics are at risk of encoding human implicit bias; (3) IF requires prior moral judgments, limiting its usefulness as a guide for fairness and undermining its claim to define fairness; and (4) the incommensurability of relevant moral values makes similarity metrics impossible for many tasks. In light of these limitations, I suggest that individual fairness cannot be a definition of fairness, and instead should be seen as one tool among several for ameliorating algorithmic bias.
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什么是个人公平?
算法公平性研究的主要方向之一是个体公平性方法。个人公平是由一个直观的原则驱动的,即相似的待遇,这要求相似的个人得到相似的对待。IF用距离度量来评估个体的相似性,提供了对这一原理的精确描述。个人公平的支持者认为,它给出了算法公平的正确定义,因此它应该比其他确定公平的方法更受欢迎。我认为个人公平不能作为公平的定义。此外,中频方法不应优先于其他公平性方法,也不应与其他公平性方法隔离使用。为了支持这些结论,我描述了个人公平作为定义和确保公平的方法的四个原则上的问题:(1)反例表明,类似的处理(因此IF)不足以保证公平;(2)学习相似度量的IF方法存在编码人类内隐偏见的风险;(3) IF需要事先的道德判断,限制了它作为公平指导的有用性,削弱了它定义公平的主张;(4)相关道德价值观的不可通约性使得相似性度量不可能用于许多任务。鉴于这些限制,我认为个人公平不能被定义为公平,而应该被视为改善算法偏见的几种工具之一。
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