A latent variable approach to measuring wartime sexual violence

Journal article

Kruger, Jule & Ragnhild Nordås (2020) A latent variable approach to measuring wartime sexual violence, Journal of Peace Research 57 (6): 728–739.

Download Final publication
.pdf

This is the Version of Record of the publication, available here in accordance with the publisher’s self-archiving policy. This version is free to view and download for private research and study only. This publication may be subject to copyright: please visit the publisher’s website for details. All rights reserved.

Download Reviewed, pre-typeset version
.pdf

This is the Reviewed, pre-typeset version of the article. The final, definitive version can be found at the journal’s website. This publication may be subject to copyright: please visit the publisher’s website for details. All rights reserved.

Read the article here

Conflict-related sexual violence is an international security problem and is sometimes used as a weapon of war. It is also a complex and hard-to-observe phenomenon, constituting perhaps one of the most hidden forms of wartime violence. Latent variable models (LVM) offer a promising avenue to account for differences in observed measures. Three annual human rights sources report on the sexual violence practices of armed conflict actors around the world since 1989 and were coded into ordinal indicators of conflict-year prevalence. Because information diverges significantly across these measures, we currently have a poor scientific understanding with regard to trends and patterns of the problem. In this article, we use an LVM approach to leverage information across multiple indicators of wartime sexual violence to estimate its true extent, to express uncertainty in the form of a credible interval, and to account for temporal trends in the underlying data. We argue that a dynamic LVM parametrization constitutes the best fit in this context. It outperforms a static latent variable model, as well as analysis of observed indicators. Based on our findings, we argue that an LVM approach currently constitutes the best practice for this line of inquiry and conclude with suggestions for future research.

An error has occurred. This application may no longer respond until reloaded. Reload 🗙