We consider the problem of designing affirmative action policies for selecting the top-k candidates from a pool of applicants. We assume that for each candidate we have socio-demographic attributes and a series of variables that serve as indicators of future performance (e.g., results on standardized tests). We further assume that we have access to historical data including the actual performance of previously selected candidates. Critically, performance information is only available for candidates who were selected under some previous selection policy. In this work we assume that due to legal requirements or voluntary commitments, an organization wants to increase the presence of people from disadvantaged socio-demographic groups among the selected candidates. Hence, we seek to design an affirmative action or positive action policy. This policy has two concurrent objectives: (i) to select candidates who, given what can be learnt from historical data, are more likely to perform well, and (ii) to select candidates in a way that increases the representation of disadvantaged socio-demographic groups. Our motivating application is the design of university admission policies to bachelor's degrees. We use a causal model as a framework to describe several families of policies (changing component weights, giving bonuses, and enacting quotas), and compare them both theoretically and through extensive experimentation on a large real-world dataset containing thousands of university applicants. Our paper is the first to place the problem of affirmative-action policy design within the framework of algorithmic fairness. Our empirical results indicate that simple policies could favor the admission of disadvantaged groups without significantly compromising on the quality of accepted candidates.
翻译:我们考虑制定扶持行动政策,从申请人中挑选顶尖候选人的问题。我们假定,对于每一个候选人,我们都有社会人口特征和一系列变量,作为未来业绩的指标(例如标准化测试的结果)。我们进一步假设,我们能够获得历史数据,包括以前选定的候选人的实际业绩。关键是,只能向根据以前的一些甄选政策挑选的候选人提供业绩信息。在这项工作中,我们假定,由于法律要求或自愿承诺,一个组织希望增加来自弱势社会人口群体的人在选定候选人中的存在。因此,我们力求设计一种扶持行动或积极行动政策。这一政策有两个并行的目标:(一) 挑选那些从历史数据中可以学到的更可能表现良好的候选人,以及(二) 选择候选人的方式可以增加处境不利的社会人口群体的代表性。我们的激励应用是设计大学录取政策达到学士学位。我们可以用一个因果模型来描述一些政策家庭(改变弱势群体的份量、给予奖金和实行定额),并且通过广泛的实验将我们的大学质量政策的质量框架加以比较。我们从理论上和从广义的角度,将我们接受的大学政策的质量分析结果的申请人置于一个广泛的试验之中。