论文标题
关于统计平等的道德理由
On the Moral Justification of Statistical Parity
论文作者
论文摘要
算法公平的一个至关重要但经常被忽视的方面是我们如何证明从道德的角度来实施一定的公平度量的问题。当提出公平度指标时,通常通过突出其数学属性来争论它们。所解释的公制下的道德假设很少。本文我们的目的是考虑与独立性统计公平标准相关的道德方面(统计平等)。为此,我们考虑了以前的工作,它讨论了两个世界观“您看到的是您得到的”(Wysiwyg)和“我们都是平等的”(WAE),并通过这样做为阐明算法设计中可能的假设提供了一些指导。我们介绍了这项工作的延伸,该作品集中在道德上。最自然的道德延伸是,只有当社会人口统计学组之间的预测特征(例如高中等级和标准化考试成绩)的差异(例如,高中等级和标准化考试成绩是大学表现)时,才需要实现独立性。通过两个反例,我们证明了这一扩展不是普遍正确的。这意味着,仅考虑预测特征中差异的公正性,就不能通过令人满意地回答有关使用独立性的问题。
A crucial but often neglected aspect of algorithmic fairness is the question of how we justify enforcing a certain fairness metric from a moral perspective. When fairness metrics are proposed, they are typically argued for by highlighting their mathematical properties. Rarely are the moral assumptions beneath the metric explained. Our aim in this paper is to consider the moral aspects associated with the statistical fairness criterion of independence (statistical parity). To this end, we consider previous work, which discusses the two worldviews "What You See Is What You Get" (WYSIWYG) and "We're All Equal" (WAE) and by doing so provides some guidance for clarifying the possible assumptions in the design of algorithms. We present an extension of this work, which centers on morality. The most natural moral extension is that independence needs to be fulfilled if and only if differences in predictive features (e.g. high school grades and standardized test scores are predictive of performance at university) between socio-demographic groups are caused by unjust social disparities or measurement errors. Through two counterexamples, we demonstrate that this extension is not universally true. This means that the question of whether independence should be used or not cannot be satisfactorily answered by only considering the justness of differences in the predictive features.