We study the role of correlation in matching markets, where multiple decision-makers simultaneously face selection problems from the same pool of candidates. We propose a model in which a candidate's priority scores across different decision-makers exhibit varying levels of correlation dependent on the candidate's sociodemographic group. Such differential correlation can arise in school choice due to the varying prevalence of selection criteria, in college admissions due to test-optional policies, or due to algorithmic monoculture, that is, when decision-makers rely on the same algorithms and data sets to evaluate candidates. We show that higher correlation for one of the groups generally improves the outcome for all groups, leading to higher efficiency. However, students from a given group are more likely to remain unmatched as their own correlation level increases. This implies that it is advantageous to belong to a low-correlation group. Finally, we extend the tie-breaking literature to multiple priority classes and intermediate levels of correlation. Overall, our results point to differential correlation as a previously overlooked systemic source of group inequalities in school, university, and job admissions.
翻译:我们研究了相关性在匹配市场中的作用,其中多个决策者同时从同一候选池中面临选择问题。我们提出了一个模型,在该模型中,候选人在不同决策者间的优先级得分呈现出与其社会人口学群体相关的不同相关性水平。这种差异性相关性可能源于学校选择中选拔标准的普及程度差异、大学招生中的考试可选政策,或算法单一化现象——即决策者依赖相同的算法和数据集评估候选人。我们证明,某一群体的较高相关性通常能改善所有群体的结果,从而提高整体效率。然而,随着自身相关性水平升高,特定群体的学生更可能无法获得匹配。这意味着属于低相关性群体具有优势。最后,我们将平局裁决机制的研究拓展至多优先级类别及中间相关性水平。总体而言,我们的研究结果表明,差异性相关性是学校、大学及职位录取中先前被忽视的系统性群体不平等来源。