Algorithmic Hiring and Diversity: Reducing Human-Algorithm Similarity for Better Outcomes
Journal:
arXiv
Published Date:
May 20, 2025
Abstract
Algorithmic tools are increasingly used in hiring to improve fairness and
diversity, often by enforcing constraints such as gender-balanced candidate
shortlists. However, we show theoretically and empirically that enforcing equal
representation at the shortlist stage does not necessarily translate into more
diverse final hires, even when there is no gender bias in the hiring stage. We
identify a crucial factor influencing this outcome: the correlation between the
algorithm's screening criteria and the human hiring manager's evaluation
criteria -- higher correlation leads to lower diversity in final hires. Using a
large-scale empirical analysis of nearly 800,000 job applications across
multiple technology firms, we find that enforcing equal shortlists yields
limited improvements in hire diversity when the algorithmic screening closely
mirrors the hiring manager's preferences. We propose a complementary
algorithmic approach designed explicitly to diversify shortlists by selecting
candidates likely to be overlooked by managers, yet still competitive according
to their evaluation criteria. Empirical simulations show that this approach
significantly enhances gender diversity in final hires without substantially
compromising hire quality. These findings highlight the importance of
algorithmic design choices in achieving organizational diversity goals and
provide actionable guidance for practitioners implementing fairness-oriented
hiring algorithms.