Measuring interpersonal firearm violence: natural language processing methods to address limitations in criminal charge data

Author:

Kafka Julie M12ORCID,Schleimer Julia P13,Toomet Ott4,Chen Kaidi4,Ellyson Alice12,Rowhani-Rahbar Ali13

Affiliation:

1. Firearm Injury & Policy Research Program, University of Washington , Seattle, WA 98195, United States

2. Department of Pediatrics, School of Medicine , University of Washington, Seattle, WA 98195, United States

3. Department of Epidemiology, School of Public Health, University of Washington , Seattle, WA 98195, United States

4. Information School, University of Washington Seattle , WA 98195, United States

Abstract

Abstract Objective Firearm violence constitutes a public health crisis in the United States, but comprehensive data infrastructure is lacking to study this problem. To address this challenge, we used natural language processing (NLP) to classify court record documents from alleged violent crimes as firearm-related or non-firearm-related. Materials and Methods We accessed and digitized court records from the state of Washington (n = 1472). Human review established a gold standard label for firearm involvement (yes/no). We developed a key term search and trained supervised machine learning classifiers for this labeling task. Results were evaluated in a held-out test set. Results The decision tree performed best (F1 score: 0.82). The key term list had perfect recall (1.0) and a modest F1 score (0.65). Discussion and Conclusion This case report highlights the accuracy, feasibility, and potential time-saved by using NLP to identify firearm involvement in alleged violent crimes based on digitized narratives from court documents.

Funder

University of Washington

Firearm Injury and Policy Research Program

Fund For a Safer Future

Publisher

Oxford University Press (OUP)

Reference26 articles.

1. Costs of fatal and nonfatal firearm injuries in the US, 2019 and 2020;Miller;Am J Prev Med,2023

2. The impact of exposure to gun violence fatality on mental health outcomes in four urban US settings;Smith;Soc Sci Med,2020

3. Firearm violence exposure and health in 2 national samples of Black and American Indian/Alaska Native adults;Semenza;Health Affairs Scholar,2023

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