新冠肺炎前和新冠肺炎时期盗窃行为时空分布及影响因素分析——以浙江省海宁市为例

Xiao-Ming Jiang, Ziwan Zheng, Ye Zheng, Zhewei Mao
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引用次数: 0

摘要

盗窃是城市化进程中不可避免的问题,对人民生活和社会稳定构成了挑战。利用时空、大数据、人口和邻里数据对盗窃和犯罪行为进行研究,对于指导安全防控具有重要意义。本研究通过数理统计和热点分析等方法对研究区盗窃频次和地点特征进行分析,发现研究区在新冠疫情前和新冠疫情期间盗窃的时空差异特征。采用地理加权回归(GWR)方法对影响因素进行建模,分析了海宁市盗窃案局部区域回归系数的空间变化规律。研究结果解释了盗窃与影响因素之间的关系,在新冠肺炎前和新冠肺炎期间,回归系数均为正值和负值,表明海宁市城区盗窃的空间分布并不平稳。与生活和工作相关的因素表明,人口密集地区盗窃增加,盗窃与COVID-19相关因素呈负相关。其他影响因素在空间分布上存在差异。因此,在警务防控方面,需要根据疫情前期和疫情期间影响因素的不同效果,重点部署视频监控和警力巡逻,增强对盗窃的抑制作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spatiotemporal Distribution and Influencing Factors of Theft during the Pre-COVID-19 and COVID-19 Periods: A Case Study of Haining City, Zhejiang, China
Theft is an inevitable problem in the context of urbanization and poses a challenge to people’s lives and social stability. The study of theft and criminal behavior using spatiotemporal, big, demographic, and neighborhood data is important for guiding security prevention and control. In this study, we analyzed the theft frequency and location characteristics of the study area through mathematical statistics and hot spot analysis methods to discover the spatiotemporal divergence characteristics of theft in the study area during the pre-COVID-19 and COVID-19 periods. We detected the spatial variation pattern of the regression coefficients of the local areas of thefts in Haining City by modeling the influencing factors using the geographically weighted regression (GWR) analysis method. The results explained the relationship between theft and the influencing factors and showed that the regression coefficients had both positive and negative values in the pre-COVID-19 and COVID-19 periods, indicating that the spatial distribution of theft in urban areas of Haining City was not smooth. Factors related to life and work indicated densely populated areas had increased theft, and theft was negatively correlated with factors related to COVID-19. The other influencing factors were different in terms of their spatial distributions. Therefore, in terms of police prevention and control, video surveillance and police patrols need to be deployed in a focused manner to increase their inhibiting effect on theft according to the different effects of influencing factors during the pre-COVID-19 and COVID-19 periods.
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