An empirical study on the perceived fairness of realistic, imperfect machine learning models

Galen Harrison, Julia Hanson, Christine Jacinto, Julio Ramirez, Blase Ur
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引用次数: 70

Abstract

There are many competing definitions of what statistical properties make a machine learning model fair. Unfortunately, research has shown that some key properties are mutually exclusive. Realistic models are thus necessarily imperfect, choosing one side of a trade-off or the other. To gauge perceptions of the fairness of such realistic, imperfect models, we conducted a between-subjects experiment with 502 Mechanical Turk workers. Each participant compared two models for deciding whether to grant bail to criminal defendants. The first model equalized one potentially desirable model property, with the other property varying across racial groups. The second model did the opposite. We tested pairwise trade-offs between the following four properties: accuracy; false positive rate; outcomes; and the consideration of race. We also varied which racial group the model disadvantaged. We observed a preference among participants for equalizing the false positive rate between groups over equalizing accuracy. Nonetheless, no preferences were overwhelming, and both sides of each trade-off we tested were strongly preferred by a non-trivial fraction of participants. We observed nuanced distinctions between participants considering a model "unbiased" and considering it "fair." Furthermore, even when a model within a trade-off pair was seen as fair and unbiased by a majority of participants, we did not observe consensus that a machine learning model was preferable to a human judge. Our results highlight challenges for building machine learning models that are perceived as fair and broadly acceptable in realistic situations.
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对现实的、不完美的机器学习模型的感知公平性的实证研究
关于什么样的统计属性使机器学习模型公平,有许多相互竞争的定义。不幸的是,研究表明一些关键的属性是相互排斥的。因此,现实的模型必然是不完美的,在权衡中选择一方或另一方。为了衡量人们对这种现实的、不完美的模型的公平性的看法,我们对502名机械土耳其工人进行了一项受试者之间的实验。每位与会者都比较了两种决定是否允许刑事被告保释的模式。第一个模型平衡了一个潜在的理想模型属性,而其他属性在种族群体中是不同的。第二个模型正好相反。我们测试了以下四个属性之间的两两权衡:准确性;假阳性率;结果;以及对种族的考虑。我们还改变了模型中处于劣势的种族群体。我们观察到,参与者更倾向于在组间平衡假阳性率,而不是平衡准确性。尽管如此,没有压倒性的偏好,我们测试的每一种权衡的双方都受到了相当一部分参与者的强烈偏好。我们观察到参与者认为模型“无偏见”和认为模型“公平”之间的细微差别。此外,即使大多数参与者认为权衡对中的模型是公平和公正的,我们也没有观察到机器学习模型优于人类判断的共识。我们的研究结果强调了构建在现实情况下被认为是公平和广泛接受的机器学习模型的挑战。
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