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Text mining police narratives for mentions of mental disorders in family and domestic violence events

Publisher
Mental health Perpetrator characteristics Family violence Victims of family violence Data mining New South Wales
Description

In this paper, the authors describe the feasibility of using a text-mining method to generate new insights relating to family and domestic violence (FDV) from free-text police event narratives. Despite the rich descriptive content of the event narratives regarding the context and individuals involved in FDV events, the police narratives are untapped as a source of data to generate research evidence. They used text mining to automatically identify mentions of mental disorders for both persons of interest (POIs) and victims of FDV in 492,393 police event narratives created between January 2005 and December 2016. Mentions of mental disorders for both POIs and victims were identified in nearly 15.8 percent (77,995) of all FDV events. Of all events with mentions of mental disorder, 76.9 percent (60,032) and 16.4 percent (12,852) were related to either POIs or victims, respectively. The next step will be to use actual diagnoses from NSW Health records to determine concordance between the two data sources. The authors will also use text mining to extract information about the context of FDV events among key at-risk groups.

Publication Details
DOI:
10.52922/ti04930
ISBN:
978-1-925304-93-0
License type:
All Rights Reserved
Access Rights Type:
open
Series:
Trends and issues in crime and criminal justice, no.629