论文标题
基于配额的证据可以减少已经代表性不足的组的表示
Quota-based debiasing can decrease representation of already underrepresented groups
论文作者
论文摘要
在学校录取,招聘或选举等社会中,许多重要的决定都是基于从较大的候选人中选择顶级个人的选择。这个过程通常受到偏见的影响,通常表现为对所选个体或被接受个体中某些群体的代表性不足。解决这个问题的最常见方法是借鉴,例如,通过引入配额,以确保相对于某个特定的,通常是二进制属性的组比例表示。案件包括在公司董事会上的妇女配额或选举中的种族配额。但是,这有可能引起相对于其他属性的表示变化。对于两个相关的二进制属性的情况,我们表明,基于配额的单个属性基于配额的偏差可能会使已经代表性不足的组的表示会恶化,并降低了选择的整体公平性。我们使用从累犯风险评估到科学引用的广泛领域的几个数据集,以评估现实世界中的这种效果。我们的结果表明,将所有相关属性纳入偏见程序中的重要性,并且需要做出更多的努力来消除不平等的根本原因,因为纯粹的数值解决方案(例如基于配额的偏见)可能会导致意外后果。
Many important decisions in societies such as school admissions, hiring, or elections are based on the selection of top-ranking individuals from a larger pool of candidates. This process is often subject to biases, which typically manifest as an under-representation of certain groups among the selected or accepted individuals. The most common approach to this issue is debiasing, for example via the introduction of quotas that ensure proportional representation of groups with respect to a certain, often binary attribute. Cases include quotas for women on corporate boards or ethnic quotas in elections. This, however, has the potential to induce changes in representation with respect to other attributes. For the case of two correlated binary attributes we show that quota-based debiasing based on a single attribute can worsen the representation of already underrepresented groups and decrease overall fairness of selection. We use several data sets from a broad range of domains from recidivism risk assessments to scientific citations to assess this effect in real-world settings. Our results demonstrate the importance of including all relevant attributes in debiasing procedures and that more efforts need to be put into eliminating the root causes of inequalities as purely numerical solutions such as quota-based debiasing might lead to unintended consequences.