Building Nondiscriminatory Algorithms in Selected Data.

IF 8.1 1区 经济学 Q1 ECONOMICS
David Arnold, Will Dobbie, Peter Hull
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引用次数: 0

Abstract

We develop new quasi-experimental tools to understand algorithmic discrimination and build non-discriminatory algorithms when the outcome of interest is only selectively observed. We first show that algorithmic discrimination arises when the available algorithmic inputs are systematically different for individuals with the same objective potential outcomes. We then show how algorithmic discrimination can be eliminated by measuring and purging these conditional input disparities. Leveraging the quasi-random assignment of bail judges in New York City, we find that our new algorithms not only eliminate algorithmic discrimination but also generate more accurate predictions by correcting for the selective observability of misconduct outcomes.

在选定数据中构建非歧视性算法。
我们开发了新的准实验工具来理解算法歧视,并在只选择性地观察感兴趣的结果时构建非歧视性算法。我们首先表明,当可用的算法输入对于具有相同客观潜在结果的个体系统地不同时,算法歧视就会产生。然后,我们展示了如何通过测量和清除这些条件输入差异来消除算法歧视。利用纽约市保释法官的准随机分配,我们发现我们的新算法不仅消除了算法歧视,而且通过纠正不当行为结果的选择性可观察性,生成了更准确的预测。
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来源期刊
自引率
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期刊介绍: The journal American Economic Review: Insights (AER: Insights) is a publication that caters to a wide audience interested in economics. It shares the same standards of quality and significance as the American Economic Review (AER) but focuses specifically on papers that offer important insights communicated concisely. AER: Insights releases four issues annually, covering a diverse range of topics in economics.
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