Fr. 70.00

Using Modeling to Predict and Prevent Victimization

English · Paperback / Softback

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Description

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This work provides clear application of a new statistical modeling technique that can be used to recognize patterns in victimization and prevent repeat victimization. The history of crime prevention techniques range from offender-based, to environment/situation-based, to victim-based. The authors of this work have found more accurate ways to predict and prevent victimization using a statistical modeling, based around crime concentration and sub-group profiling with regard to crime vulnerability levels, to predict areas and individuals vulnerable to crime. Following from this prediction, they propose policing strategies to improve crime prevention based on these predictions. With a combination of immediate actions and longer-term research recommendations, this work will be of interest to researchers and policy makers in focused on crime prevention, police studies, victimology and statistical applications.

List of contents

Introduction.- Crime Concentration.- Preventing Repeat Victimization.- Predicting Frequent Victimization.- Preventing Recurring Victimization.- Conclusions.

About the author

Professor Andromachi Tseloni teaches quantitative methodology for applied social research to undergraduate and especially graduate students. She is currently responsible for research generation and mentoring in the Division and contributes to the Research Committees of the Division and the School. She serves on the Editorial Board of Journal of Quantitative Criminology. Apart from single – dependent variable (preferably hierarchical) modeling of counts or risks, her current interests include cross-national comparisons; multivariate hierarchical modeling of associated outcomes, such as violence and property crimes; and Poisson mixtures for counts, such as victimization and/or offending events. These methodologies are most relevant for studying the ecology of crime as well as other socio-economic issues such as mental health, education and social services. Ken Pease is Emeritus Professor of Criminology at the University of Huddersfield, where he established the Applied Criminology Group in 1995. He is also Visiting Professor at the Jill Dando Institute of Crime Science at University College London. Professor Pease has acted as a consultant to a number of international organizations including the United Nations, the Council of Europe and the Customs Co-operation Council. He is a former Parole Board member. He has worked intermittently on repeat victimization for 18 years and has been involved with the British Crime Survey for 14; his work has concerned the anticipation of crime trends and he has been responsible for some of the most innovative, rigorous, yet practical work in crime reduction in the last few decades. He helped to coin the term 'crime science' and has striven to integrate serious scientific methods into crime reduction.

Summary

This work provides clear application of a new statistical modeling technique that can be used to recognize patterns in victimization and prevent repeat victimization. The history of crime prevention techniques range from offender-based, to environment/situation-based, to victim-based. The authors of this work have found more accurate ways to predict and prevent victimization using a statistical modeling, based around crime concentration and sub-group profiling with regard to crime vulnerability levels, to predict areas and individuals vulnerable to crime. Following from this prediction, they propose policing strategies to improve crime prevention based on these predictions. With a combination of immediate actions and longer-term research recommendations, this work will be of interest to researchers and policy makers in focused on crime prevention, police studies, victimology and statistical applications.

Product details

Authors Ke Pease, Ken Pease, Andromachi Tseloni
Publisher Springer, Berlin
 
Languages English
Product format Paperback / Softback
Released 15.10.2013
 
EAN 9783319031842
ISBN 978-3-31-903184-2
No. of pages 80
Dimensions 156 mm x 8 mm x 236 mm
Weight 158 g
Illustrations VIII, 80 p. 11 illus.
Series SpringerBriefs in Criminology
SpringerBriefs in Criminology
Subjects Social sciences, law, business > Law > Criminal law, criminal procedural law, criminology

C, Sozialforschung und -statistik, Criminology, Social Sciences, Statistics for Social Sciences, Humanities, Law, Criminology and Criminal Justice, general, Social research and statistics, Social sciences—Statistical methods

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