机器学习中公平增强干预的比较研究

Sorelle A. Friedler, C. Scheidegger, Suresh Venkatasubramanian, Sonam Choudhary, Evan P. Hamilton, Derek Roth
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引用次数: 492

摘要

计算机越来越多地用于做出对人们生活有重大影响的决策。通常,这些预测会不成比例地影响不同的人口亚群。因此,公平性问题最近受到了很多关注,并且在文献中出现了许多公平性增强的分类器。本文试图研究以下问题:这些不同的技术如何从根本上相互比较,是什么导致了这些差异?具体而言,我们试图引起人们对这种增强公平性干预措施的许多未被重视的方面的关注,这些干预措施需要对这些算法进行调查,以获得广泛的采用。我们展示了我们开发的一个开放基准的结果,该基准可以让我们在各种公平度量和现有数据集下比较许多不同的算法。我们发现,尽管不同的算法倾向于选择特定的公平保护公式,但这些措施中的许多都彼此密切相关。此外,我们发现保持公平性的算法往往对数据集组成的波动(在我们的基准中通过不同的训练测试分割模拟)和不同形式的预处理敏感,这表明公平性干预可能比以前认为的更脆弱。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A comparative study of fairness-enhancing interventions in machine learning
Computers are increasingly used to make decisions that have significant impact on people's lives. Often, these predictions can affect different population subgroups disproportionately. As a result, the issue of fairness has received much recent interest, and a number of fairness-enhanced classifiers have appeared in the literature. This paper seeks to study the following questions: how do these different techniques fundamentally compare to one another, and what accounts for the differences? Specifically, we seek to bring attention to many under-appreciated aspects of such fairness-enhancing interventions that require investigation for these algorithms to receive broad adoption. We present the results of an open benchmark we have developed that lets us compare a number of different algorithms under a variety of fairness measures and existing datasets. We find that although different algorithms tend to prefer specific formulations of fairness preservations, many of these measures strongly correlate with one another. In addition, we find that fairness-preserving algorithms tend to be sensitive to fluctuations in dataset composition (simulated in our benchmark by varying training-test splits) and to different forms of preprocessing, indicating that fairness interventions might be more brittle than previously thought.
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