Algorithmic fairness has attracted increasing attention in the machine learning community. Various definitions are proposed in the literature, but the differences and connections among them are not clearly addressed. In this paper, we review and reflect on various fairness notions previously proposed in machine learning literature, and make an attempt to draw connections to arguments in moral and political philosophy, especially theories of justice. We also consider fairness inquiries from a dynamic perspective, and further consider the long-term impact that is induced by current prediction and decision. In light of the differences in the characterized fairness, we present a flowchart that encompasses implicit assumptions and expected outcomes of different types of fairness inquiries on the data generating process, on the predicted outcome, and on the induced impact, respectively. This paper demonstrates the importance of matching the mission (which kind of fairness one would like to enforce) and the means (which spectrum of fairness analysis is of interest, what is the appropriate analyzing scheme) to fulfill the intended purpose.
翻译:计算机学习界日益重视算法公平,文献中提出了各种定义,但其中的差别和联系没有得到明确解决。本文中,我们回顾并思考机器学习文献中以前提出的各种公平概念,试图将道德和政治哲学,特别是司法理论的论据联系起来。我们还从动态的角度考虑公平调查,并进一步考虑当前预测和决定引起的长期影响。根据典型的公平性差异,我们提出了一个流程图,其中包含关于数据产生过程、预测结果和所引起影响的各类公平性调查的隐含假设和预期结果。这份文件表明,必须将任务(人们希望执行的那种公平性)与实现预期目的的手段(即公平性分析的范围很有意义,什么是适当的分析计划)相匹配。