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Quantifying patenting by women in the U.S., 1845-1924

Gozen, Ruveyda, Andrews, Mike and Berkes, Enrico 2026. Quantifying patenting by women in the U.S., 1845-1924. Social Science History

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Abstract

U.S. patents do not report inventors’ gender, requiring researchers to infer the gender of inventors. To conduct these inferences, researchers must make several choices. We show how these researcher choices can affect conclusions about the role of women inventors in the U.S. from 1845 to 1924. More specifically, we compare two automated methods to determine inventor gender for the universe of U.S. patents: inferring gender from inventors’ first names and linking inventors to census data. These methods paint similar pictures about aggregate patterns of patenting by women, but often give different predictions about the gender of particular inventors. Both automated methods identify a larger number of patents by women inventors than have previously been identified in the literature. Using the gender inferred by these two methods, we study how the characteristics of patents and inventors differ by gender.

Item Type: Article
Status: In Press
Schools: Schools > Business (Including Economics)
Publisher: Cambridge University Press
ISSN: 0145-5532
Date of First Compliant Deposit: 3 July 2025
Date of Acceptance: 13 May 2025
Last Modified: 03 Jul 2025 10:15
URI: https://orca.cardiff.ac.uk/id/eprint/178489

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