English

Efficient candidate screening under multiple tests and implications for fairness

Machine Learning 2019-05-28 v1 Computers and Society Machine Learning

Abstract

When recruiting job candidates, employers rarely observe their underlying skill level directly. Instead, they must administer a series of interviews and/or collate other noisy signals in order to estimate the worker's skill. Traditional economics papers address screening models where employers access worker skill via a single noisy signal. In this paper, we extend this theoretical analysis to a multi-test setting, considering both Bernoulli and Gaussian models. We analyze the optimal employer policy both when the employer sets a fixed number of tests per candidate and when the employer can set a dynamic policy, assigning further tests adaptively based on results from the previous tests. To start, we characterize the optimal policy when employees constitute a single group, demonstrating some interesting trade-offs. Subsequently, we address the multi-group setting, demonstrating that when the noise levels vary across groups, a fundamental impossibility emerges whereby we cannot administer the same number of tests, subject candidates to the same decision rule, and yet realize the same outcomes in both groups.

Keywords

Cite

@article{arxiv.1905.11361,
  title  = {Efficient candidate screening under multiple tests and implications for fairness},
  author = {Lee Cohen and Zachary C. Lipton and Yishay Mansour},
  journal= {arXiv preprint arXiv:1905.11361},
  year   = {2019}
}
R2 v1 2026-06-23T09:27:11.486Z