BIBLIOGRAPHY

Publications, working papers, and other research using data resources from IPUMS.

Full Citation

Title: Inferring gender from name: a large scale performance evaluation study

Citation Type: Miscellaneous

Publication Year: 2023

Abstract: A person's gender is a crucial piece of information when performing research across a wide range of scientific disciplines, such as medicine, sociology, political science, and economics, to name a few. However, in increasing instances, especially given the proliferation of big data, gender information is not readily available. In such cases researchers need to infer gender from readily available information, primarily from persons' names. While inferring gender from name may raise some ethical questions, the lack of viable alternatives means that researchers have to resort to such approaches when the goal justifies the means-in the majority of such studies the goal is to examine patterns and determinants of gender disparities. The necessity of name-to-gender inference has generated an ever-growing domain of algorithmic approaches and software products. These approaches have been used throughout the world in academia, industry, governmental and non-governmental organizations. Nevertheless, the existing approaches have yet to be systematically evaluated and compared, making it challenging to determine the optimal approach for future research. In this work, we conducted a large scale performance evaluation of existing approaches for name-to-gender inference. Analysis are performed using a variety of large annotated datasets of names. We further propose two new hybrid approaches that achieve better performance than any single existing approach.

Url: https://arxiv.org/pdf/2308.12381.pdf

User Submitted?: No

Authors: Krstovski, Kriste; Lu, Yao; Xu, Ye

Publisher:

Data Collections: IPUMS USA

Topics: Gender, Methodology and Data Collection

Countries:

IPUMS NHGIS NAPP IHIS ATUS Terrapop