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首页> 外文期刊>International journal of applied decision sciences >Preventing crimes ahead of time by predicting crime propensity in released prisoners using data mining techniques
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Preventing crimes ahead of time by predicting crime propensity in released prisoners using data mining techniques

机译:通过使用数据挖掘技术预测已释放囚犯的犯罪倾向,提前预防犯罪

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摘要

Criminologists and psychologists around the world are finding new initiatives to identify criminals and understand crime scenes. This work focuses on predicting the occurrence of crimes for a released prisoner, based on crime propensity prediction, using a supervised machine learning technique. This original research is intended to design and develop a new dataset of 30 attributes that exists nowhere and is exclusively created to define prisoners so as to differentiate them by their propensity to crime using psychological and behavioural factors obtained from jails and assorted sources. The research incorporates an analysis of seven search methods, in tandem with seven subset evaluation techniques, to undertake feature selection, and nine classification algorithms for the classification of prisoners. It is found that the wolf search algorithm, used with the correlation-based feature subset evaluation technique and radial basis function classifier, performs best providing 97.8% precision, 97.5% recall and low error values.
机译:世界各地的犯罪学家和心理学家正在寻找新的举措,以识别罪犯并了解犯罪现场。这项工作着重于使用有监督的机器学习技术,根据犯罪倾向预测来预测释放囚犯的犯罪情况。这项原始研究旨在设计和开发30个属性的新数据集,这些数据不存在,并且专门用于定义囚犯,以便利用从监狱和各种来源获得的心理和行为因素来区分囚犯的犯罪倾向。该研究结合了对七种搜索方法的分析以及七种子集评估技术来进行特征选择,以及对囚犯进行分类的九种分类算法。发现狼搜索算法与基于相关的特征子集评估技术和径向基函数分类器一起使用时,在提供97.8%的精度,97.5%的查全率和低错误值方面表现最佳。

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