算法公平-精度权衡研究中的突现不公平

A. Feder Cooper, Ellen Abrams, NA Na
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引用次数: 37

摘要

在机器学习(ML)子学科中,研究人员做出明确的数学假设,以促进证明写作。我们注意到,特别是在公平-准确性权衡优化学术领域,没有对这种方法的规范性假设给予类似的关注。这些假设假设1)准确性和公平性是内在对立的,2)严格的数学平等概念可以充分地模拟公平性,3)独立于历史背景来衡量决策的准确性和公平性是可能的,4)收集更多边缘化个体的数据是减轻权衡影响的合理解决方案。我们认为,这些假设通常是隐含的和未经检验的,导致结论不一致:虽然这项工作的预期目标可能是提高机器学习模型的公平性,但这些未经检验的隐含假设实际上可能导致紧急不公平。最后,我们提出了一个可能解决问题的具体途径。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Emergent Unfairness in Algorithmic Fairness-Accuracy Trade-Off Research
Across machine learning (ML) sub-disciplines, researchers make explicit mathematical assumptions in order to facilitate proof-writing. We note that, specifically in the area of fairness-accuracy trade-off optimization scholarship, similar attention is not paid to the normative assumptions that ground this approach. Such assumptions presume that 1) accuracy and fairness are in inherent opposition to one another, 2) strict notions of mathematical equality can adequately model fairness, 3) it is possible to measure the accuracy and fairness of decisions independent from historical context, and 4) collecting more data on marginalized individuals is a reasonable solution to mitigate the effects of the trade-off. We argue that such assumptions, which are often left implicit and unexamined, lead to inconsistent conclusions: While the intended goal of this work may be to improve the fairness of machine learning models, these unexamined, implicit assumptions can in fact result in emergent unfairness. We conclude by suggesting a concrete path forward toward a potential resolution.
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