Hiring as Exploration
This paper views hiring as a contextual bandit problem: to find the best workers over time, firms must balance exploitation (selecting from groups with proven track records) with exploration (selecting from under-represented groups to learn about quality). Yet modern hiring algorithms, based on supe...
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Zusammenfassung: | This paper views hiring as a contextual bandit problem: to find the best
workers over time, firms must balance exploitation (selecting from groups with
proven track records) with exploration (selecting from under-represented groups
to learn about quality). Yet modern hiring algorithms, based on supervised
learning approaches, are designed solely for exploitation. Instead, we build a
resume screening algorithm that values exploration by evaluating candidates
according to their statistical upside potential. Using data from professional
services recruiting within a Fortune 500 firm, we show that this approach
improves the quality (as measured by eventual hiring rates) of candidates
selected for an interview, while also increasing demographic diversity,
relative to the firm's existing practices. The same is not true for traditional
supervised learning based algorithms, which improve hiring rates but select far
fewer Black and Hispanic applicants.
Together, our results highlight the importance of incorporating exploration
in developing decision-making algorithms that are potentially both more
efficient and equitable. |
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DOI: | 10.48550/arxiv.2411.03616 |