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Fragment of BN model |
Probation officers, clinicians, and forensic medical
practitioners have for several years sought improved decision support
for determining whether and when to release prisoners with mental health
problems and a history of violence. It is critical that the risk of
violent re-offending is accurately measured and, more importantly, well
managed with causal interventions to reduce this risk after release. The
well-established 'risk predictors' in this area of research are
typically based on statistical regression models and their results are
less than convincing. But recent work undertaken at Queen Mary
University of London has resulted in Bayesian network (BN) models that
not only have much greater accuracy, but which are also much more useful
for decision support. The work has been developed as part of a
collaboration between the
Risk and Information Management group and the medical practitioners of the
Violence Prevention Research Unit (VPRU) of the Wolfson Institute of Preventative Medicine.
The
(BN) model, called DSVM-P (Decision Support for Violence Management –
Prisoners) captures the causal relationships between risk factors,
interventions and violence. It also allows for specific risk factors to
be targeted for causal intervention for risk management of future
re-offending. These decision support features are not available in the
previous generation of models used by practitioners and forensic
psychiatrists.
Full reference:
Constantinou,
A., Freestone M., Marsh, W., Fenton, N. E. , Coid, J. (2015) "Risk
assessment and risk management of violent reoffending among prisoners",
Expert Systems With Applications 42 (21), 7511-7529. Published
version:
http://dx.doi.org/10.1016/j.eswa.2015.05.025.
Download Pre-publication draft.
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