Does artificial intelligence help or hurt gender diversity? : evidence from two field experiments on recruitment in tech
Mallory Avery, Andreas Leibbrandt, Joseph Vecci
The use of Artificial Intelligence (AI) in recruitment is rapidly increasing and drastically changing how people apply to jobs and how applications are reviewed. In this paper, we use two field experiments to study how AI recruitment tools can impact gender diversity in the male-dominated technology sector, both overall and separately for labor supply and demand. We find that the use of AI in recruitment changes the gender distribution of potential hires, in some cases more than doubling the fraction of top applicants that are women. This change is generated by better outcomes for women in both supply and demand. On the supply side, we observe that the use of AI reduces the gender gap in application completion rates. Complementary survey evidence suggests that anticipated bias is a driver of increased female application completion when assessed by AI instead of human evaluators. On the demand side, we find that providing evaluators with applicants' AI scores closes the gender gap in assessments that otherwise disadvantage female applicants. Finally, we show that the AI tool would have to be substantially biased against women to result in a lower level of gender diversity than found without AI.
Year of publication: |
March 2024
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Authors: | Avery, Mallory ; Leibbrandt, Andreas ; Vecci, Joseph |
Publisher: |
Munich, Germany : CESifo |
Subject: | artificial intelligence | gender | diversity | field experiment | Künstliche Intelligenz | Artificial intelligence | Feldforschung | Field research | Geschlecht | Gender | Diversity Management | Diversity management | Personalbeschaffung | Recruitment | Experiment | Geschlechterdiskriminierung | Gender discrimination | Weibliche Führungskräfte | Women managers |
Saved in:
freely available
Extent: | 1 Online-Ressource (circa 72 Seiten) Illustrationen |
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Series: | CESifo working papers. - München : [Verlag nicht ermittelbar], ISSN 2364-1428, ZDB-ID 2065232-X. - Vol. 10996 (2024) |
Type of publication: | Book / Working Paper |
Type of publication (narrower categories): | Graue Literatur ; Non-commercial literature ; Arbeitspapier ; Working Paper |
Language: | English |
Other identifiers: | hdl:10419/296085 [Handle] |
Classification: | C93 - Field Experiments ; J23 - Employment Determination; Job Creation; Demand for Labor; Self-Employment ; J71 - Discrimination ; J78 - Public Policy |
Source: | ECONIS - Online Catalogue of the ZBW |
Persistent link: https://www.econbiz.de/10014496439