Women in economics: the role of gendered references at entry in the profession
Audinga Baltrunaite,
Alessandra Casarico and
Lucia Rizzica
No 17474, CEPR Discussion Papers from C.E.P.R. Discussion Papers
Abstract:
We study the presence and the extent of gender differences in reference letters for graduate students in economics and finance, and how they relate to early labor market outcomes. To these ends, we build a novel rich dataset and combine Natural Language Processing techniques with standard regression analysis. We find that men are described more often as brilliant and women as hardworking and diligent. We show that the former (latter) characteristics relate positively (negatively) with various subsequent career outcomes. We provide evidence that the observed differences in the way candidates are described are driven by implicit gender stereotypes.
Keywords: Gender bias; Research institutions; Professional labor markets; Word embeddings (search for similar items in EconPapers)
JEL-codes: I23 J16 J44 (search for similar items in EconPapers)
Date: 2022-07
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Working Paper: Women in economics: the role of gendered references at entry in the profession (2024) 
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