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Therapeutic Justice

Crime, Treatment Courts and Mental Illness

Erschienen am 29.06.2018, 1. Auflage 2018
213,99 €
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Bibliografische Daten
ISBN/EAN: 9783319789019
Sprache: Englisch
Umfang: xxi, 329 S., 2 s/w Illustr., 329 p. 2 illus.
Einband: gebundenes Buch

Beschreibung

This book examines Mental Health Courts (MHC) within a socio-legal framework. Placing these courts within broader trends in criminal justice, especially problem-solving courts, the author draws from two case studies with a mixed-methods design. While court observational and interview data highlight the role of rituals and procedural justice in the practices of the court, quantitative data demonstrates the impact of incentives, mental health treatment compliance and graduating patterns from MHC in altering patterns of criminal recidivism. In utilising these methods, this book provides a new understanding of the social processes by which MHCs operate, while narrative stories from MHC participants illustrate both the potential and limitations of these courts. Concluding by charting potential improvements for the functioning and effectiveness of MHCs, the author suggests potential reforms and 'best practices' for the future in tandem with rigorous analysis. This book will be of value and interest to students and scholars of criminology, law, and social work, as well as practitioners.

Produktsicherheitsverordnung

Hersteller:
Springer Verlag GmbH
[email protected]
Tiergartenstr. 17
DE 69121 Heidelberg

Autorenportrait

Karen A. Snedker is Associate Professor of Sociology at Seattle Pacific University, USA. She is also Clinical Assistant Professor in the School of Nursing, Affiliate Faculty in Sociology and a CSDE Research Affiliate at the University of Washington, USA. Her research interests focus on mental health, homelessness, crime and violence and neighbourhood effects, and she has published widely on these topics.

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