Predicting Juvenile Delinquency and Criminal Behavior in Adulthood Using Machine Learning.

IF 2.7 2区 心理学 Q2 PSYCHOLOGY, DEVELOPMENTAL
Ulrich Schroeders, Antonia Mariss, Julia Sauter, Kristin Jankowsky
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引用次数: 0

Abstract

By violating social norms, deviant behavior is an important issue that affects society as a whole and has serious consequences for its individuals. Different scientific disciplines have proposed theories of deviant behavior that often fall short of predicting actual behavior. In this registered report, we used data from the longitudinal National Study of Adolescent to Adult Health (Add Health) to examine the predictability of juvenile delinquency (Wave I) and adult criminal behavior (Wave V), distinguishing between drug, property, and violent offenses. Comparing the predictive accuracy of traditional regression models with different machine learning algorithms (elastic net regression and gradient boosting machines), we found the elastic net regressions with item-level data performed best. The prediction of juvenile delinquency was relatively accurate for drug offenses (R 2 = .57), violent offenses (R 2 = .44), and property offenses (R 2 = .39), while the performance declined significantly for adult delinquency, with R 2 values ranging from .16 to .13. Key predictors of juvenile delinquency versus adult criminal behavior were clearly different from each other. Early risk factors for adult criminal behavior included prior juvenile delinquency, particularly drug-related offenses, sex, and school-related issues such as suspension or expulsion. We discuss the findings in the context of relevant theories on the causes and development of criminal behavior and explore potential approaches for prevention and early intervention, particularly within the framework of the "Central Eight".

使用机器学习预测青少年犯罪和成年后的犯罪行为。
越轨行为违反社会规范,是影响整个社会并对个人造成严重后果的重要问题。不同的科学学科提出的偏差行为理论往往不能预测实际行为。在这篇注册报告中,我们使用了来自青少年到成人健康纵向国家研究(Add Health)的数据来检验青少年犯罪(第一波)和成人犯罪行为(第五波)的可预测性,并区分了毒品、财产和暴力犯罪。对比传统回归模型与不同机器学习算法(弹性网络回归和梯度增强机器)的预测精度,我们发现具有项目级数据的弹性网络回归表现最好。青少年犯罪对毒品犯罪(r2 = 0.57)、暴力犯罪(r2 = 0.44)和财产犯罪(r2 = 0.39)的预测相对准确,而对成人犯罪的预测显著下降,r2值为。16到。13。青少年犯罪与成人犯罪行为的主要预测因子存在显著差异。成人犯罪行为的早期风险因素包括先前的青少年犯罪,特别是与毒品有关的犯罪、性行为和与学校有关的问题,如停学或开除。我们在犯罪行为的成因和发展的相关理论背景下讨论了这些发现,并探讨了预防和早期干预的潜在方法,特别是在“中央八项”的框架内。
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来源期刊
CiteScore
6.80
自引率
0.00%
发文量
48
期刊介绍: The International Journal of Behavioral Development is the official journal of the International Society for the Study of Behavioural Development, which exists to promote the discovery, dissemination and application of knowledge about developmental processes at all stages of the life span - infancy, childhood, adolescence, adulthood and old age. The Journal is already the leading international outlet devoted to reporting interdisciplinary research on behavioural development, and has now, in response to the rapidly developing fields of behavioural genetics, neuroscience and developmental psychopathology, expanded its scope to these and other related new domains of scholarship. In this way, it provides a truly world-wide platform for researchers which can facilitate a greater integrated lifespan perspective. In addition to original empirical research, the Journal also publishes theoretical and review papers, methodological papers, and other work of scientific interest that represents a significant advance in the understanding of any aspect of behavioural development. The Journal also publishes papers on behaviour development research within or across particular geographical regions. Papers are therefore considered from a wide range of disciplines, covering all aspects of the lifespan. Articles on topics of eminent current interest, such as research on the later life phases, biological processes in behaviour development, cross-national, and cross-cultural issues, and interdisciplinary research in general, are particularly welcome.
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