Algorithmic Fairness from a Non-ideal Perspective

S. Fazelpour, Zachary Chase Lipton
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引用次数: 68

Abstract

Inspired by recent breakthroughs in predictive modeling, practitioners in both industry and government have turned to machine learning with hopes of operationalizing predictions to drive automated decisions. Unfortunately, many social desiderata concerning consequential decisions, such as justice or fairness, have no natural formulation within a purely predictive framework. In the hopes of mitigating these problems, researchers have proposed a variety of metrics for quantifying deviations from various statistical parities that we might hope to observe in a fair world, offering a variety of algorithms that attempt to satisfy subsets of these parities or to trade off the degree to which they are satisfied against utility. In this paper, we connect this approach to fair machine learning to the literature on ideal and non-ideal methodological approaches in political philosophy. The ideal approach requires positing the principles according to which a just world would operate. In the most straightforward application of ideal theory, one supports a proposed policy by arguing that it closes a discrepancy between the real and ideal worlds. However, by failing to account for the mechanisms by which our non-ideal world arose, the responsibilities of various decision-makers, and the impacts of their actions, naive applications of ideal thinking can lead to misguided policies. In this paper, we demonstrate a connection between the recent literature on fair machine learning and the ideal approach in political philosophy, and show that some recently uncovered shortcomings in proposed algorithms reflect broader troubles faced by the ideal approach. We work this analysis through for different formulations of fairness and conclude with a critical discussion of real-world impacts and directions for new research.
非理想视角下的算法公平
受预测建模最新突破的启发,行业和政府的从业者都转向机器学习,希望将预测操作化,以推动自动化决策。不幸的是,许多关于后果性决策的社会期望,如正义或公平,在纯粹的预测框架内没有自然的公式。为了缓解这些问题,研究人员提出了各种度量标准,用于量化我们可能希望在公平世界中观察到的各种统计奇偶的偏差,并提供了各种算法,试图满足这些奇偶的子集,或者权衡它们对效用的满意程度。在本文中,我们将这种公平机器学习方法与政治哲学中关于理想和非理想方法论方法的文献联系起来。理想的方法需要提出一个公正的世界赖以运作的原则。在理想理论最直接的应用中,人们支持一项被提议的政策,认为它缩小了现实世界和理想世界之间的差距。然而,由于没有考虑到我们的非理想世界产生的机制、各种决策者的责任以及他们行动的影响,天真地应用理想思维可能会导致错误的政策。在本文中,我们展示了最近关于公平机器学习的文献与政治哲学中的理想方法之间的联系,并表明最近发现的一些算法中的缺点反映了理想方法面临的更广泛的问题。我们对公平的不同表述进行了分析,并对现实世界的影响和新研究的方向进行了批判性的讨论。
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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