跨地方社区的有组织犯罪活动:网络方法

IF 2 3区 社会学 Q1 CRIMINOLOGY & PENOLOGY
Paolo Campana, Cecilia Meneghini
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引用次数: 0

摘要

本文探讨了有组织犯罪在当地社区间的流动结构以及这种流动的驱动因素。首先,本文以网络分析为基础,提供了一种新颖的方法论,对有组织犯罪罪犯跨地域流动进行了实证和定量研究。然后,本文将这种方法应用于英国剑桥郡的证据。它基于一个大规模的警方数据集(其中包括 41 个月的犯罪事件记录),重建了有组织犯罪成员在不同地区的流动情况。它确定了有组织犯罪的 "地盘 "和 "目标 "区域,然后使用指数随机图模型探讨了从前者向后者移动的驱动因素。研究结果证实,地理距离很重要,但社区的社会人口、城市、经济和犯罪相关特征也起着关键作用。有组织犯罪集团成员将目标锁定在非法市场机会(以毒品相关活动为代表)高于平均水平的城市社区。研究还发现,地盘和目标社区之间的社会人口同质性也会产生影响,这表明有组织犯罪集团成员可能会将目标锁定在与自己相似的地区。虽然贫困程度高的社区更有可能派遣有组织犯罪团伙成员,但其对一个社区成为接收者的可能性的影响却不那么明显。最后,本文提供了一种识别有可能成为犯罪组织目标的社区(地区)的方法,从而为从业人员提供了早期干预的工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Organised crime movement across local communities: A network approach

Organised crime movement across local communities: A network approach

This paper explores the structure of organised crime movement across local communities and the drivers underpinning such movement. Firstly, it builds on network analysis to offer a novel methodological approach to empirically and quantitatively study the movement of organised crime offenders across geographical areas. The paper then applies this approach to evidence from Cambridgeshire in the United Kingdom. It reconstructs the movement of organised crime members across local areas based on a large-scale police dataset that includes 41 months of recorded crime events. It identifies organised crime “turf” and “target” areas and then explores the drivers of movement from the former to the latter using Exponential Random Graph Models. Findings confirm that geographical distance matters; however, socio-demographic, urban, economic and crime-related characteristics of communities play a key role. Organised crime group members target urban communities with higher than average illegal market opportunities (proxied by drug-related activity). The work also finds the effect of socio-demographic homophily between turf and target communities, suggesting that organised crime group members might target territories that are similar to their own. While a high level of deprivation makes a community more likely to send organised crime members, its impact on a community’s probability of being a receiver is less clear. Finally, the paper offers a way to identify communities (local areas) at risk of being targeted by criminal organisations, thus providing practitioners with a tool for early interventions.

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来源期刊
Trends in Organized Crime
Trends in Organized Crime CRIMINOLOGY & PENOLOGY-
CiteScore
5.10
自引率
11.80%
发文量
26
期刊介绍: Trends in Organized Crime offers a composite of analyses and syntheses from a variety of information sources to serve the interests of both practitioners and policy makers, as well as the academic community. It is both a stimulus to and a forum for more rigorous empirical research on organized crime.  Trends in Organized Crime publishes peer-reviewed, original research articles and excerpts from significant governmental reports. It also offers reviews of major new books and presents analyses and commentary on current issues in organized crime.  Trends in Organized Crime is published in association with the International Association for the Study of Organized Crime (IASOC). For more information on IASOC please visit http://www.iasoc.net/
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