在社区监督下对罪犯的逮捕风险进行更准确的分类:机器学习与逻辑回归的应用

IF 1.1 4区 医学 Q3 CRIMINOLOGY & PENOLOGY Criminal Behaviour and Mental Health Pub Date : 2023-04-26 DOI:10.1002/cbm.2289
Brandy R. Maynard, Michael G. Vaughn, Sweta Prasad-Srivastava, Abdullaziz Alsolami, Matthew DeLisi, Dyan McGuire
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引用次数: 1

摘要

虽然人们普遍认为行为、临床和社会人口学变量是再犯的危险因素,但这些变量的最佳统计模型尚不清楚。机器学习技术提供了一种比传统方法更准确的方法。目的比较先进的机器学习技术(分类树和随机森林)与逻辑回归在分类美国成年缓刑犯和假释犯再逮捕相关因素方面的性能。方法数据来自2015-2019年参加全国药物使用与健康调查的缓刑或假释人员亚组。我们比较了逻辑回归、分类树和随机森林的性能,使用接受者工作特征曲线来检查过去12个月内逮捕的相关性。我们发现机器学习技术,特别是随机森林,在对逮捕相关因素进行分类方面比逻辑回归具有更高的准确性。结论我们的研究结果提示有可能加强风险分类。下一步将是开发刑事司法和临床实践的应用程序,以便为社区中的前罪犯提供更好的支持和管理策略。
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Towards more accurate classification of risk of arrest among offenders on community supervision: An application of machine learning versus logistic regression

Background

Although there is general consensus about the behavioural, clinical and sociodemographic variables that are risk factors for reoffending, optimal statistical modelling of these variables is less clear. Machine learning techniques offer an approach that may provide greater accuracy than traditional methods.

Aim

To compare the performance of advanced machine learning techniques (classification trees and random forests) to logistic regression in classifying correlates of rearrest among adult probationers and parolees in the United States.

Method

Data were from the subgroup of people on probation or parole who had taken part in the National Survey on Drug Use and Health for the years 2015–2019. We compared the performance of logistic regression, classification trees and random forests, using receiver operating characteristic curves, to examine the correlates of arrest within the past 12 months.

Results

We found that machine learning techniques, specifically random forests, possessed significantly greater accuracy than logistic regression in classifying correlates of arrest.

Conclusions

Our findings suggest the potential for enhanced risk classification. The next step would be to develop applications for criminal justice and clinical practice to inform better support and management strategies for former offenders in the community.

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来源期刊
CiteScore
1.60
自引率
0.00%
发文量
40
期刊介绍: Criminal Behaviour & Mental Health – CBMH – aims to publish original material on any aspect of the relationship between mental state and criminal behaviour. Thus, we are interested in mental mechanisms associated with offending, regardless of whether the individual concerned has a mental disorder or not. We are interested in factors that influence such relationships, and particularly welcome studies about pathways into and out of crime. These will include studies of normal and abnormal development, of mental disorder and how that may lead to offending for a subgroup of sufferers, together with information about factors which mediate such a relationship.
期刊最新文献
Addiction behind bars: Swiss symposium insights. Exploration of a virtual reality exercise to help train police with responding to mental health crises in the community. Barriers to discharge: A retrospective study of factors associated with stays of longer than 2 years in a French secure hospital unit. An exploration into the prevalence and experience of neurodiversity among staff at a UK high-secure psychiatric hospital. Low sense of mattering in society and delinquency among young people: An initial investigation.
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