论文标题

合法扎根的公平目标

Legally grounded fairness objectives

论文作者

Holden-Sim, Dylan, Leech, Gavin, Aitchison, Laurence

论文摘要

最近的工作已经确定了许多机器学习(ML)系统不公平的正式不兼容的操作措施。由于这些措施都捕获了公平系统的直觉上理想的方面,因此不可能选择“一个真实的”度量,而是一种合理的方法是最大程度地减少措施的加权组合。但是,这只是提出了如何选择权重的问题。在这里,我们制定了合法扎根的公平目标(LGFO),该目标使用从法律体系中的信号来衡量特定不公平程度的社会成本。 LGFO是根据推定的诉讼预期的损害赔偿,可能会判给那些错误地分类的人,从某种意义上说,ML系统做出了与法院首选措施做出的决定不同的决定。值得注意的是,计算LGFO所需的两个数量,法院对公平措施的偏好以及预期的损害,是未知但定义明确的,可以通过法律建议来估算。此外,由于法律制度判给的损害赔偿旨在衡量和弥补因不公平分类而造成的伤害,因此LGFO与社会对社会成本的估计紧密相符。

Recent work has identified a number of formally incompatible operational measures for the unfairness of a machine learning (ML) system. As these measures all capture intuitively desirable aspects of a fair system, choosing "the one true" measure is not possible, and instead a reasonable approach is to minimize a weighted combination of measures. However, this simply raises the question of how to choose the weights. Here, we formulate Legally Grounded Fairness Objectives (LGFO), which uses signals from the legal system to non-arbitrarily measure the social cost of a specific degree of unfairness. The LGFO is the expected damages under a putative lawsuit that might be awarded to those who were wrongly classified, in the sense that the ML system made a decision different to that which would have be made under the court's preferred measure. Notably, the two quantities necessary to compute the LGFO, the court's preferences about fairness measures, and the expected damages, are unknown but well-defined, and can be estimated by legal advice. Further, as the damages awarded by the legal system are designed to measure and compensate for the harm caused to an individual by an unfair classification, the LGFO aligns closely with society's estimate of the social cost.

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