2023
DOI: 10.3389/fdata.2022.989469
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A machine learning approach to quantify gender bias in collaboration practices of mathematicians

Abstract: Collaboration practices have been shown to be crucial determinants of scientific careers. We examine the effect of gender on coauthorship-based collaboration in mathematics, a discipline in which women continue to be underrepresented, especially in higher academic positions. We focus on two key aspects of scientific collaboration—the number of different coauthors and the number of single authorships. A higher number of coauthors has a positive effect on, e.g., the number of citations and productivity, while si… Show more

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