English

The Initial Screening Order Problem

Machine Learning 2025-01-03 v5 Computers and Society

Abstract

We investigate the role of the initial screening order (ISO) in candidate screening. The ISO refers to the order in which the screener searches the candidate pool when selecting kk candidates. Today, it is common for the ISO to be the product of an information access system, such as an online platform or a database query. The ISO has been largely overlooked in the literature, despite its impact on the optimality and fairness of the selected kk candidates, especially under a human screener. We define two problem formulations describing the search behavior of the screener given an ISO: the best-kk, where it selects the top kk candidates; and the good-kk, where it selects the first good-enough kk candidates. To study the impact of the ISO, we introduce a human-like screener and compare it to its algorithmic counterpart, where the human-like screener is conceived to be inconsistent over time. Our analysis, in particular, shows that the ISO, under a human-like screener solving for the good-kk problem, hinders individual fairness despite meeting group fairness, and hampers the optimality of the selected kk candidates. This is due to position bias, where a candidate's evaluation is affected by its position within the ISO. We report extensive simulated experiments exploring the parameters of the best-kk and good-kk problems for both screeners. Our simulation framework is flexible enough to account for multiple candidate screening tasks, being an alternative to running real-world procedures.

Cite

@article{arxiv.2307.15398,
  title  = {The Initial Screening Order Problem},
  author = {Jose M. Alvarez and Antonio Mastropietro and Salvatore Ruggieri},
  journal= {arXiv preprint arXiv:2307.15398},
  year   = {2025}
}

Comments

Forthcoming in the Eighteenth ACM International Conference on Web Search and Data Mining (WSDM'25)

R2 v1 2026-06-28T11:42:40.313Z