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Examining potential gender bias in automated-job alerts in the Spanish market

Abstract: Numerous field experiments based on the correspondence testing procedure have documented that gender bias influences personnel selection processes. Nowadays, algorithms and job platforms are used for personnel selection processes because of their supposed neutrality, efficiency, and costs savings. However, previous research has shown that algorithms can exhibit and even amplify gender bias. The present research aimed to explore a possible gender bias in automated-job alerts generated in InfoJobs, a popular job platform in Spain. Based on the correspondence testing procedure, we designed eight matched resumes in which we manipulated the gender of the candidate for two different professional sectors (female-dominated vs. male-dominated) and two different levels of age (24 vs. 38). We examined the 3,438 offers received. No significant differences were observed in the automated-job alerts received by female and male candidates as a function of occupation category, salary, and the number of long-term contracts included in the alerts. However, we found significant differences between the female-dominated and the male-dominated sectors in all the mentioned variables. Some limitations and implications of the study are discussed. The data and materials for this research are available at the Open Science Framework, https://osf.io/kptca/

 Fuente: PLoS One, 2021, 16(12), e0260409

 Editorial: Public Library of Science

 Año de publicación: 2021

 Nº de páginas: 15

 Tipo de publicación: Artículo de Revista

 DOI: 10.1371/journal.pone.0260409

 ISSN: 1932-6203

Autoría

VINAS, ARANZAZU

MATUTE, HELENA