Any decision, such as one about who to hire, involves two components. First, a rational component, i.e., they have a good education, they speak clearly. Second, an affective component, based on observables such as visual features of race and gender, and possibly biased by stereotypes. Here we propose a method for measuring the affective, socially biased, component, thus enabling its removal. That is, given a decision-making process, these affective measurements remove the affective bias in the decision, rendering it fair across a set of categories defined by the method itself. We thus propose that this may solve three key problems in intersectional fairness: (1) the definition of categories over which fairness is a consideration; (2) an infinite regress into smaller and smaller groups; and (3) ensuring a fair distribution based on basic human rights or other prior information. The primary idea in this paper is that fairness biases can be measured using affective coherence, and that this can be used to normalize outcome mappings. We aim for this conceptual work to expose a novel method for handling fairness problems that uses emotional coherence as an independent measure of bias that goes beyond statistical parity.
翻译:任何决定,例如关于谁雇用的决定,都涉及两个组成部分。首先,理性的成分,即他们受过良好的教育,他们讲得很清楚。第二,基于种族和性别的视觉特征等可见特征,并可能受到陈规定型观念的偏见的感性成分。在这里,我们提出了一个衡量情感、社会偏见和组成部分的方法,从而使其得以消除。也就是说,鉴于一个决策过程,这些影响性测量方法消除了决定中的情感偏见,使之在方法本身界定的一组类别中变得公平。因此,我们提议,这可以解决交叉公平方面的三个关键问题:(1) 公平所考虑的类别的定义;(2) 无限地倒退到较小群体;(3) 确保根据基本人权或其他先前信息进行公平的分配。本文的主要思想是,公平偏见可以用影响一致性来衡量,这可以用来使结果绘图正常化。我们的目标是,开展这一概念性工作,以新的方法来处理公平问题,将情感上的一致性作为超越统计对等的偏见的独立衡量标准。