Homicidality risk prediction based on ecological systems theory in an early adolescent cohort using machine learning

IF 3.3 1区 社会学 Q1 CRIMINOLOGY & PENOLOGY Journal of Criminal Justice Pub Date : 2024-08-20 DOI:10.1016/j.jcrimjus.2024.102261
Min Li , Ting Tang , Yuheng He , Yingying Tong , Mengyuan Yuan , Yonghan Li , Xueying Zhang , Gengfu Wang , Puyu Su
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Abstract

Purpose

Identifying high-risk adolescents prone to homicidality, linked to serious criminal activities and homicide, offers vital avenues for homicide prevention.

Methods

This study analyzed data from 1596, 1596, and 1526 students at baseline, one-year, and two-year follow-ups, respectively, drawn from the Chinese Early Adolescent Cohort study. Based on Bronfenbrenner's ecological systems theory, predictors of adolescent homicidality were categorized into individual, family, and school and peer levels. Five machine learning methods were utilized to construct prediction models for homicidality risk and to pinpoint predictive factors.

Results

Logistic regression models using only significant features effectively predicted adolescent homicidality and new onsets in the short term, as well as homicidal trajectories throughout early adolescence. Key factors identified included suicidal ideation, emotional abuse, life satisfaction, physical violence, and verbal violence, with suicidal ideation and emotional abuse emerging as the most critical predictors.

Conclusions

This study successfully developed risk-predictive models for adolescent homicidality using machine learning, emphasizing suicidal ideation and emotional abuse as primary predictors. These findings highlight the importance of targeted interventions focused on these key variables for the early prevention of adolescent homicide.

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利用机器学习,基于生态系统论预测青少年群体的躁狂症风险
本研究分析了来自中国青少年队列研究的 1596 名、1596 名和 1526 名学生在基线、一年和两年随访中的数据。根据布朗芬布伦纳的生态系统论,青少年犯罪倾向的预测因素分为个人、家庭、学校和同伴三个层面。结果仅使用重要特征的逻辑回归模型就能有效预测青少年短期内的嗜凶行为和新的嗜凶行为,以及整个青春期早期的嗜凶行为轨迹。确定的关键因素包括自杀意念、情感虐待、生活满意度、身体暴力和语言暴力,其中自杀意念和情感虐待是最关键的预测因素。 结论 本研究利用机器学习成功开发了青少年杀人倾向风险预测模型,强调自杀意念和情感虐待是主要预测因素。这些发现凸显了针对这些关键变量进行有针对性干预对于早期预防青少年杀人的重要性。
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来源期刊
Journal of Criminal Justice
Journal of Criminal Justice CRIMINOLOGY & PENOLOGY-
CiteScore
6.90
自引率
9.10%
发文量
93
审稿时长
23 days
期刊介绍: The Journal of Criminal Justice is an international journal intended to fill the present need for the dissemination of new information, ideas and methods, to both practitioners and academicians in the criminal justice area. The Journal is concerned with all aspects of the criminal justice system in terms of their relationships to each other. Although materials are presented relating to crime and the individual elements of the criminal justice system, the emphasis of the Journal is to tie together the functioning of these elements and to illustrate the effects of their interactions. Articles that reflect the application of new disciplines or analytical methodologies to the problems of criminal justice are of special interest. Since the purpose of the Journal is to provide a forum for the dissemination of new ideas, new information, and the application of new methods to the problems and functions of the criminal justice system, the Journal emphasizes innovation and creative thought of the highest quality.
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