Enhancing gender-based violence research: holistic approaches to data collection and analysis

Shrestha, Subeksha, Patel, Preeti, Longchar, Sentirenla and Xavier, Aiswarya Francis (2025) Enhancing gender-based violence research: holistic approaches to data collection and analysis. Women, 5 (2) (19). pp. 1-18. ISSN 2673-4184

Abstract

Gender-based violence (GBV) is a profound and pervasive societal issue, disproportionately affecting women across diverse settings, including homes, workplaces, and public spaces. Despite its prevalence, significant challenges impede research on GBV, particularly regarding data collection, analysis, and ethical handling. This study investigates the complexities inherent in GBV research, focusing on the obstacles posed by under-reporting, ethical considerations, data quality, and the need for cross-comparative standards. Using a combination of police records, web scraping, news reports, and survey data from USAID’s Demographic and Health Surveys (DHS), our study examines strategies to work with sensitive GBV datasets, while maintaining data integrity. Our study advocates for improved demographic surveying and data integration methodologies that can enhance data accuracy and comparability. The findings suggest that while technological advancements, particularly generative AI and machine learning approaches, offer promising avenues for automating survey processes, reducing costs, and enhancing data collection efficiency, they present the limitations of secondary datasets, a lack of data disaggregation, and discrepancies in data coding systems, which highlight the necessity of refining global data standards.

Documents
10493:53160
[thumbnail of women-05-00019.pdf]
Preview
women-05-00019.pdf - Published Version
Available under License Creative Commons Attribution 4.0.

Download (4MB) | Preview
Details
Record
View Item View Item