TL;DR
This study employs text mining to analyze 2,362 workplace sexism and harassment experiences from the Everyday Sexism Project, revealing common themes and providing insights into real-world gender discrimination and harassment.
Contribution
It introduces a computational framework combining quantitative and qualitative text mining methods to analyze large-scale online reports of workplace sexism and harassment.
Findings
Identified 23 topics grouped into 3 themes of sexism and harassment.
Unwanted sexual attention, especially touching, was the most common topic.
Themes align with existing literature on workplace gender discrimination.
Abstract
Objective: The goal of this study is to understand how people experience sexism and sexual harassment in the workplace by discovering themes in 2,362 experiences posted on the Everyday Sexism Project's website everydaysexism.com. Method: This study used both quantitative and qualitative methods. The quantitative method was a computational framework to collect and analyze a large number of workplace sexual harassment experiences. The qualitative method was the analysis of the topics generated by a text mining method. Results: Twenty-three topics were coded and then grouped into three overarching themes from the sex discrimination and sexual harassment literature. The Sex Discrimination theme included experiences in which women were treated unfavorably due to their sex, such as being passed over for promotion, denied opportunities, paid less than men, and ignored or talked over in…
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