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首页> 外文期刊>Journal of youth and adolescence >Can We Make Accurate Long-term Predictions About Patterns of De-escalation in Offending Behavior?
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Can We Make Accurate Long-term Predictions About Patterns of De-escalation in Offending Behavior?

机译:我们可以对犯罪行为的降级模式做出准确的长期预测吗?

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This study consists of a comparative analysis of patterns of de-escalation between ages 17–18 and 32, based on data from two well-known prospective longitudinal studies, the Cambridge Study in Delinquent Development (a study of 411 working-class males in London) and the Montreal Two Samples Longitudinal Study (a sample of 470 adjudicated French-Canadian males). Analyses focus on within-individual change, with individuals serving as their own controls. In this regard, the magnitude of measured change is relative to the past degree of involvement in offending. These results are contrasted with predictors of between-individual differences in offending behavior at age 32. We investigate the respective roles of cognitive predispositions and social bonds in the prediction of patterns of de-escalation, and assess whether it is possible to make relatively long-term predictions (over a 15-year period) about offending in adulthood. Findings suggest that traditional measures of social bonds and cognitive predispositions measured at age 17–18 are generally weak predictors of de-escalation up to age 32. However, these measures are stronger predictors of between-individual differences in offending gravity. These findings highlight the difficulties in making accurate long-term predictions about changes in individual offending patterns early in the criminal career.
机译:这项研究基于对两个著名的前瞻性纵向研究的数据-剑桥拖欠发展研究(伦敦对411名工人阶级男性的研究)的数据,对17-18至32岁之间的降级模式进行了比较分析。 )和蒙特利尔两个样本纵向研究(样本为470名经判决的法裔加拿大男性)。分析重点放在个人内部的变化上,以个人作为自己的控制。在这方面,衡量的变化的幅度与过去参与犯罪的程度有关。这些结果与32岁时犯罪行为的个体差异之间的预测进行了对比。有关成年犯罪的长期预测(超过15年)。研究结果表明,在17至18岁时测量的传统的社会纽带和认知倾向的度量标准通常是到32岁时降级的较弱预测指标。然而,这些度量标准对于个人在犯罪引力方面的差异具有较强的预测意义。这些发现凸显了在犯罪职业早期就就个人犯罪模式的变化做出准确的长期预测所面临的困难。

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