Spatially embedded co-offence prediction using supervised learning

M. A. Tayebi, M. Ester, U. Glässer, P. Brantingham
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引用次数: 20

Abstract

Crime reduction and prevention strategies are essential to increase public safety and reduce the crime costs to society. Law enforcement agencies have long realized the importance of analyzing co-offending networks---networks of offenders who have committed crimes together---for this purpose. Although network structure can contribute significantly to co-offence prediction, research in this area is very limited. Here we address this important problem by proposing a framework for co-offence prediction using supervised learning. Considering the available information about offenders, we introduce social, geographic, geo-social and similarity feature sets which are used for classifying potential negative and positive pairs of offenders. Similar to other social networks, co-offending networks also suffer from a highly skewed distribution of positive and negative pairs. To address the class imbalance problem, we identify three types of criminal cooperation opportunities which help to reduce the class imbalance ratio significantly, while keeping half of the co-offences. The proposed framework is evaluated on a large crime dataset for the Province of British Columbia, Canada. Our experimental evaluation of four different feature sets show that the novel geo-social features are the best predictors. Overall, we experimentally show the high effectiveness of the proposed co-offence prediction framework. We believe that our framework will not only allow law enforcement agencies to improve their crime reduction and prevention strategies, but also offers new criminological insights into criminal link formation between offenders.
使用监督学习的空间嵌入共犯预测
减少和预防犯罪战略对于提高公共安全和减少社会犯罪成本至关重要。执法机构早就意识到分析共同犯罪网络——共同犯罪的罪犯网络——的重要性。虽然网络结构对共同犯罪的预测有重要的贡献,但这方面的研究非常有限。在这里,我们通过提出一个使用监督学习的共同犯罪预测框架来解决这个重要问题。考虑到罪犯的可用信息,我们引入了社会、地理、地理社会和相似特征集,用于对潜在的消极和积极的罪犯对进行分类。与其他社交网络类似,共同犯罪网络也存在积极和消极配对的高度倾斜分布。为了解决阶级失衡问题,我们确定了三种类型的犯罪合作机会,这有助于显著降低阶级失衡比例,同时保留了一半的共同犯罪。该框架在加拿大不列颠哥伦比亚省的大型犯罪数据集上进行了评估。我们对四种不同特征集的实验评估表明,新的地理社会特征是最好的预测因子。总体而言,我们通过实验证明了所提出的共犯预测框架的有效性。我们相信,我们的架构不但有助执法机关改善减少及预防罪案的策略,而且有助我们深入了解罪犯之间的犯罪联系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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