Many applications such as hiring and university admissions involve evaluation and selection of applicants. These tasks are fundamentally difficult, and require combining evidence from multiple different aspects (what we term "attributes"). In these applications, the number of applicants is often large, and a common practice is to assign the task to multiple evaluators in a distributed fashion. Specifically, in the often-used holistic allocation, each evaluator is assigned a subset of the applicants, and is asked to assess all relevant information for their assigned applicants. However, such an evaluation process is subject to issues such as miscalibration (evaluators see only a small fraction of the applicants and may not get a good sense of relative quality), and discrimination (evaluators are influenced by irrelevant information about the applicants). We identify that such attribute-based evaluation allows alternative allocation schemes. Specifically, we consider assigning each evaluator more applicants but fewer attributes per applicant, termed segmented allocation. We compare segmented allocation to holistic allocation on several dimensions via theoretical and experimental methods. We establish various tradeoffs between these two approaches, and identify conditions under which one approach results in more accurate evaluation than the other.
翻译:聘用和大学录取等许多申请涉及对申请人的评价和选择。这些任务基本上困难重重,需要综合来自多个不同方面的证据(我们称之为“归属”)。在这些申请中,申请者人数往往很多,通常的做法是以分配方式将任务分配给多个评价人员。具体地说,在经常使用的整体分配办法中,每个评价人员被分配到申请人的一组,并被要求评估分配给申请人的所有相关信息。然而,这种评价过程要受到一些问题的影响,例如区分错误(评价人员只看到申请人的一小部分,可能得不到较好的相对质量感知),以及歧视(评价人员受到与申请人无关的信息的影响)等。我们发现,这种基于属性的评价可以采用不同的分配办法。具体地说,我们考虑给每个评价人员分配更多的申请人,但每个申请人的属性较少,称为分部分分配办法。我们比较了分门别类的分配办法与通过理论和实验方法对几个方面的整体分配。我们在这两种办法之间作出各种权衡,并查明一种办法在哪些条件下产生比其他更准确的评价。