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Published byQuentin Lawrence Modified over 8 years ago
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A statistical model for predicting risk of re-imprisonment
The Criminal Re-imprisonment Estimate Scale (CRES) A statistical model for predicting risk of re-imprisonment
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CSNSW Vision
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LSI-R
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Percentage of Recidivists and Non-Recidivists Administered an LSI-R
Current Practice Percentage of Recidivists and Non-Recidivists Administered an LSI-R False Positive True Positives False Positives
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Risk Screening Tools LSI-R: SV OASys (ORGS) RoR-PV GRAM ROC ROI
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The Criminal Re-imprisonment Estimate Scale (CRES)
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Model Development 23,000 DYNAMIC STATIC EMPLOYMENT EDUCATION HOUSING
SUBSTANCE MENTAL HEALTH STATIC GENDER INDIGENOUS AGE SENTENCE LENGTH TIME IN COMMUNITY ADAPTED COPAS RATE PRIOR INCARCERATION OFFENCE 23,000
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Adapted Copas rate n = # full-time custodial sentences
t = age at end current imprisonment – age first adult imprisonment +5 makes the distribution closer to normal and makes it comparable for those offenders who are at the beginning of their criminal career.
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Final Model Adjusted Odds Ratios of Re-imprisonment
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Area under the curve indicated acceptable fit for the model
Model Adequacy ROC AUC Area under the curve indicated acceptable fit for the model auc = 0.79 CRES LSI-R (Watkins, 2011) Female Indigenous Australian Female Non-Indigenous Australian Male Indigenous Australian Male Non-Indigenous Australian
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Reimprisonment by predicted probability
% not re-imprisoned % re-imprisoned
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Application of the Criminal Re-imprisonment Estimate Scale (CRES) to CSNSW Offender Management
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Model Thresholds Optimal Threshold True positives vs False Positives
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Model Thresholds
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Classification Accuracy
Screening Tool Number of Released Inmates with an LSI-R % Sensitivity (True Positives) Specificity (True Negatives) Not Applied 15317 (67) 68 34 >=.15 19337 (84) 97 25 >=.25 15322 89 50 >=.35 12972 (56) 81 62 False Positive
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Classification Accuracy
Current Practice CRES >=.25 Total Inmate Population 23,000 Total Inmate Population 23,000 LSI-R Administration 15,317 LSI-R Administration 15,317 Recidivists 9,826 Recidivists 9,826 True Positive 68% False Positive 64% True Positive 89% False Positive 50%
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Reductions in re-imprisonment
Conclusions and Implications Application of the CRES model to practice Redistribution of resources to higher risk offenders Reductions in re-imprisonment
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Questions?
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Classification Accuracy
Screening Tool Number of LSI-R Administrations % Sensitivity Specificity Positive predictive value Negative predictive value Not Applied 15317 (100) 94 24 49 85 >=.10 13975 (91) 93 36 51 89 >=.15 12901 (84) 92 38 53 86 >=.2 11793 (77) 45 55 False Positive
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