Fair Decision-making Under Uncertainty

Wenbin Zhang, Jeremy C. Weiss
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引用次数: 19

Abstract

There has been concern within the artificial intelligence (AI) community and the broader society regarding the potential lack of fairness of AI-based decision-making systems. Surprisingly, there is little work quantifying and guaranteeing fairness in the presence of uncertainty which is prevalent in many socially sensitive applications, ranging from marketing analytics to actuarial analysis and recidivism prediction instruments. To this end, we study a longitudinal censored learning problem subject to fairness constraints, where we require that algorithmic decisions made do not affect certain individuals or social groups negatively in the presence of uncertainty on class label due to censorship. We argue that this formulation has a broader applicability to practical scenarios concerning fairness. We show how the newly devised fairness notions involving censored information and the general framework for fair predictions in the presence of censorship allow us to measure and mitigate discrimination under uncertainty that bridges the gap with real-world applications. Empirical evaluations on real-world discriminated datasets with censorship demonstrate the practicality of our approach.
不确定性下的公平决策
人工智能(AI)社区和更广泛的社会一直担心基于人工智能的决策系统可能缺乏公平性。令人惊讶的是,在许多社会敏感应用(从市场分析到精算分析和累犯预测工具)中普遍存在的不确定性中,很少有量化和保证公平性的工作。为此,我们研究了一个受公平约束的纵向审查学习问题,其中我们要求在审查导致的类别标签不确定性存在的情况下,算法决策不会对某些个人或社会群体产生负面影响。我们认为,这一公式对有关公平的实际情况具有更广泛的适用性。我们展示了新设计的涉及审查信息的公平概念和审查存在下公平预测的一般框架如何使我们能够在不确定性下衡量和减轻歧视,从而弥合与现实世界应用的差距。对具有审查制度的真实世界歧视性数据集的经验评估证明了我们方法的实用性。
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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