Summary: Offender rehabilitation seeks to minimise recidivism. Using their experience and actuarial-type risk assessment tools, probation officers in Singapore make recommendations on the sentencing outcomes so as to achieve this objective. However, it is difficult for them to maximise the utility of the large amounts of data collected, which could be resolved by using predictive modelling informed by statistical learning methods.
Findings: Data of youth offenders ( = 3744) referred to the Probation Service, Ministry of Social and Family Development for rehabilitation were used to create a random forests model to predict recidivism. No assumptions were made on how individual predictor values within the risk assessment tool and other administrative data on an individual's socio-economic status such as level of education attained and dwelling type collected in line with organisational requirements influenced the outcome. Sixty per cent of the data was used to develop the model, which was then tested against the remaining 40%. With a classification accuracy of approximately 65%, and an Area under the Curve value of 0.69, it outperformed existing models analysing aggregated data using conventional statistical methods.
Application: This article identifies how analysis of administrative data at the discrete level using statistical learning methods is more accurate in predicting recidivism than using conventional statistical methods. This provides an opportunity to direct intervention efforts at individuals who are more likely to reoffend.
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http://www.ncbi.nlm.nih.gov/pmc/articles/PMC6210571 | PMC |
http://dx.doi.org/10.1177/1468017317743137 | DOI Listing |
Recidivism among individuals who have sexually offended poses a significant public health and safety concern. It is crucial to assess the predictive validity of traditional risk factors in individuals engaged in online child exploitation. This study examines recidivism rates and risk factors among individuals involved in online child sexual exploitation, analyzing data from a sample of 228 adult males who had committed sexual and nonsexual offenses at their index crime.
View Article and Find Full Text PDFSurg Endosc
December 2024
Department of Surgery, New York University Langone Medical Center/Bellevue Hospital Center, New York University School of Medicine, 550 1st Ave., New York, NY, 10016, USA.
Background: Conversion from sleeve gastrectomy (SG) to Roux-en-Y gastric bypass (RYGB) may be indicated for patients due to insufficient weight loss or weight regain.
Objectives: To assess weight loss outcomes and factors predictive of improved weight loss in patients undergoing RYGB after SG and create an algorithm to estimate postoperative weight loss in these patients.
Setting: University Hospital.
Behav Sci Law
December 2024
Centre for Forensic Behavioral Science, Swinburne University of Technology and Victorian Institute of Forensic Mental Health, Melbourne, Australia.
Despite increases in online child sexual exploitation (OCSE) internationally, no study has examined risk factors for re-offending among females who perpetrate OCSE, resulting in limited knowledge regarding the idiosyncratic needs of this cohort. This study explored factors predictive of further police contact among 116 females known to police for OCSE offenses in Victoria, Australia. Four binary regressions were run for each of Any, Violent, and Non-Violent re-offending, with one regression each focusing on characteristics related to offending history, index offending, co-offending, and victimization.
View Article and Find Full Text PDFArch Public Health
November 2024
Department of Trauma Surgery, Emergency Surgery & Surgical Critical, Tongji Trauma Center, Tongji Hospital, Tongji Medical College, Huazhong University of Science and Technology, Wuhan, 430030, China.
Int J Pediatr Otorhinolaryngol
December 2024
Department of Otolaryngology, University of Minnesota, Minneapolis, MN, USA; HealthPartners Medical Group, St. Paul, MN, USA. Electronic address:
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