Measures of algorithmic fairness often do not account for human perceptions of fairness that can substantially vary between different sociodemographics and stakeholders. The FairCeptron framework is an approach for studying perceptions of fairness in algorithmic decision making such as in ranking or classification. It supports (i) studying human perceptions of fairness and (ii) comparing these human perceptions with measures of algorithmic fairness. The framework includes fairness scenario generation, fairness perception elicitation and fairness perception analysis. We demonstrate the FairCeptron framework by applying it to a hypothetical university admission context where we collect human perceptions of fairness in the presence of minorities. An implementation of the FairCeptron framework is openly available, and it can easily be adapted to study perceptions of algorithmic fairness in other application contexts. We hope our work paves the way towards elevating the role of studies of human fairness perceptions in the process of designing algorithmic decision making systems.
翻译:算法公平措施往往没有考虑到人类对公平的看法,这种看法在不同的社会人口和利益相关者之间差别很大。公平中心框架是研究算法决策(如排名或分类)中公平看法的一种方法,它支持(一)研究人类对公平的看法,和(二)将人类的这些看法与算法公平措施相比较。框架包括公平设想的产生、公平看法的启发和公平看法的分析。我们通过将公平中心框架应用于一个假设的大学招生环境来展示这个框架,在这个环境中,我们收集人类对少数群体的公平看法。公平中心框架的实施是公开的,可以很容易地用于研究其他应用环境中的算法公平看法。我们希望我们的工作为在设计算法决策系统的过程中提升人类公平观念研究的作用铺平了道路。