Reference : Avoiding bias when inferring race using name-based approaches
Scientific journals : Article
Social & behavioral sciences, psychology : Library & information sciences
Computational Sciences
http://hdl.handle.net/10993/50495
Avoiding bias when inferring race using name-based approaches
English
Kozlowski, Diego mailto [University of Luxembourg > Faculty of Science, Technology and Medicine (FSTM) > Department of Engineering (DoE) >]
Murray, Dakota S. []
Bell, Alexis []
Husley, Will []
Larivière, Vincent []
Sugmioto, Cassidy R. []
1-Mar-2022
PLoS ONE
Public Library of Science
3
17
e0264270
Yes (verified by ORBilu)
International
1932-6203
San Franscisco
CA
[en] Census ; Ethnicity ; Racial discrimination
[en] Racial disparity in academia is a widely acknowledged problem. The quantitative understanding of racial-based systemic inequalities is an important step towards a more equitable research system. However, because of the lack of robust information on authors’ race, few large-scale analyses have been performed on this topic. Algorithmic approaches offer one solution, using known information about authors, such as their names, to infer their perceived race. As with any other algorithm, the process of racial inference can generate biases if it is not carefully considered. The goal of this article is to assess the extent to which algorithmic bias is introduced using different approaches for name-based racial inference. We use information from the U.S. Census and mortgage applications to infer the race of U.S. affiliated authors in the Web of Science. We estimate the effects of using given and family names, thresholds or continuous distributions, and imputation. Our results demonstrate that the validity of name-based inference varies by race/ethnicity and that threshold approaches underestimate Black authors and overestimate White authors. We conclude with recommendations to avoid potential biases. This article lays the foundation for more systematic and less-biased investigations into racial disparities in science.
University of Luxembourg
Fonds National de la Recherche - FnR
Researchers ; Professionals
http://hdl.handle.net/10993/50495
10.1371/journal.pone.0264270
https://journals.plos.org/plosone/article?id=10.1371/journal.pone.0264270
FnR ; FNR12252781 > Andreas Zilian > DRIVEN > Data-driven Computational Modelling And Applications > 01/09/2018 > 28/02/2025 > 2017

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