社交媒体能反映伦敦的贪婪犯罪模式吗?

IF 3.7 Q1 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH
Zenghui Wang , Yijing Li
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引用次数: 3

摘要

在犯罪机会的框架内,结合社会解体理论和破窗理论,本文打算利用社交媒体数据,即Twitter, Foursquare和通过文本分析技术获得的横截面数据,探索四种类型的获取性犯罪的模式。本文以大伦敦为研究区域,采用负二项回归(NBR)和地理加权回归(GWR)等模型,分别在伦敦范围和次区域msoa水平上说明了获取性犯罪与犯罪机会之间的总体关系。研究结果支持以下假设:根据破窗理论,推文情绪可以积极反映与财产相关的犯罪率;带有负面情绪的推文越多,获取性犯罪就会增加。对现有研究有如下贡献:(1)为整合这三种理论提供了经验证据;(2)利用GWR模型和NBR模型对取得性犯罪的地方差异研究进行补充;(3)挑战传统的种族差异刻板印象,发现种族异质性与工具犯罪存在反直觉的关联,特别是在考虑教育因素的情况下;(4)考虑到地方差异与不同犯罪类型之间的关系可能因地而异,为政策制定者提供一些本地的获取性犯罪预防策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Could social media reflect acquisitive crime patterns in London?

Embraced within the framework of crime opportunities integrated with Social Disorganization theory and Broken Windows theory, this paper intends to explore the patterns of four types of acquisitive crimes, using social media data, i.e., Twitter, Foursquare and cross-sectional data acquired through text analysis technique. With Greater London as the study area, models like negative binominal regression (NBR) and geographically weighted regression (GWR) are performed to illustrate the aggregated relationships between acquisitive crimes and crime opportunities at London-wide and sub-regional MSOAs levels respectively. The results work towards to hypotheses that: the tweets sentiment could reflect property-related crime rates positively in light of Broken Windows Theory; more tweets with negative sentiment may incur increases in acquisitive crimes. It contributed to existing studies in (1) providing empirical evidence for integrating these three theories; (2) complementing current research on local discrepancies of acquisitive crimes by utilising both GWR and NBR models; (3) challenging the traditional stereotypes about racial disparities with the finding that ethnic heterogeneity and instrumental crimes have counterintuitive association, especially taking education factor into consideration; (4) implicating some localised acquisitive crime prevention strategies to policy makers in light of the reality that the relationship between local variations and different crime types may vary by place.

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来源期刊
安全科学与韧性(英文)
安全科学与韧性(英文) Management Science and Operations Research, Safety, Risk, Reliability and Quality, Safety Research
CiteScore
8.70
自引率
0.00%
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0
审稿时长
72 days
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