Publications

Quantifying Gender Disparity in Pre-Modern English Literature using Natural Language Processing.

Abstract

Research has continued to shed light on the extent and significance of gender disparity in social, cultural and economic spheres. More recently, computational tools from the data science and Natural Language Processing (NLP) communities have been proposed for measuring such disparity at scale using empirically rigorous methodologies. In this article, we contribute to this line of research by studying gender disparity in 2,443 copyright-expired literary texts published in the pre-modern period, defined in this work as the period ranging from the beginning of the nineteenth through the early twentieth century. Using a replicable data science methodology relying on publicly available and established NLP components, we extract three different gendered character prevalence measures within these texts. We use an extensive set of statistical tests to robustly demonstrate a significant disparity between the prevalence …

Date
January 1, 2024
Authors
Mayank Kejriwal, Akarsh Nagaraj
Journal
Journal of Data Science
Volume
22
Issue
1