On the apparent conflict between individual and group fairness

Reuben Binns
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引用次数: 202

Abstract

A distinction has been drawn in fair machine learning research between 'group' and 'individual' fairness measures. Many technical research papers assume that both are important, but conflicting, and propose ways to minimise the trade-offs between these measures. This paper argues that this apparent conflict is based on a misconception. It draws on discussions from within the fair machine learning research, and from political and legal philosophy, to argue that individual and group fairness are not fundamentally in conflict. First, it outlines accounts of egalitarian fairness which encompass plausible motivations for both group and individual fairness, thereby suggesting that there need be no conflict in principle. Second, it considers the concept of individual justice, from legal philosophy and jurisprudence, which seems similar but actually contradicts the notion of individual fairness as proposed in the fair machine learning literature. The conclusion is that the apparent conflict between individual and group fairness is more of an artefact of the blunt application of fairness measures, rather than a matter of conflicting principles. In practice, this conflict may be resolved by a nuanced consideration of the sources of 'unfairness' in a particular deployment context, and the carefully justified application of measures to mitigate it.
论个人公平与群体公平的明显冲突
在公平机器学习研究中,“群体”和“个人”公平措施之间存在区别。许多技术研究论文假设两者都很重要,但相互冲突,并提出了将这些措施之间的权衡最小化的方法。本文认为,这种明显的冲突是基于一种误解。它借鉴了公平机器学习研究内部的讨论,以及政治和法律哲学,认为个人和群体的公平并不是从根本上冲突的。首先,它概述了平等主义公平的描述,其中包含了群体和个人公平的合理动机,从而表明原则上不需要冲突。其次,它考虑了来自法律哲学和法理学的个人正义的概念,这看起来类似,但实际上与公平机器学习文献中提出的个人公平的概念相矛盾。结论是,个人公平和群体公平之间的明显冲突更多是公平措施生硬应用的产物,而不是原则冲突的问题。在实践中,这种冲突可以通过对特定部署环境中“不公平”的来源进行细致入微的考虑来解决,并仔细合理地应用措施来减轻这种不公平。
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