Early Intervention Systems: Predicting Adverse Interactions Between Police and the Public

Adverse interactions between police and the public hurt police legitimacy, cause harm to both officers and the public, and result in costly litigation. Early intervention systems (EISs) that flag officers considered most likely to be involved in one of these adverse events are an important tool for...

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Authors: Helsby, Jennifer (Author) ; Carton, Samuel (Author) ; Haynes, Lauren (Author) ; Ackermann, Klaus (Author) ; Cody, Crystal (Author) ; Joseph, Kenneth (Author) ; Mahmud, Ayesha (Author) ; Navarrete, Andrea (Author) ; Park, Youngsoo (Author) ; Patterson, Major Estella (Author) ; Walsh, Joe (Author)
Format: Electronic Article
Language:English
Published: 2018
In: Criminal justice policy review
Year: 2018, Volume: 29, Issue: 2, Pages: 190-209
Online Access: Volltext (Resolving-System)
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