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浙江大学学报(理学版)  2019, Vol. 46 Issue (6): 745-754    DOI: 10.3785/j.issn.1008-9497.2019.06.019
地球科学     
成都市主城区“两抢一盗”犯罪的多尺度时空格局研究
曲比伟石1, 赵振斌1, 邓元杰2, 张熠1
1.陕西师范大学 地理科学与旅游学院,陕西 西安 710119
2.西北农林科技大学 经济管理学院,陕西 杨凌 712100
Spatial-temporal patterns of robbery, snatch and theft at multi-scale in the main urban area of Chengdu city
QUBI Weishi1, ZHAO Zhenbin1, DENG Yuanjie2, ZHANG Yi1
1.School of Geography and Tourism, Shaanxi Normal University, Xi’an 710119, China
2.College of Economics & Management, Northwest A&F University, Yangling 712100, Shannxi Province, China
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摘要: 以四川省成都市三环内城区为例,使用标准化犯罪强度指数和核密度估计方法,对成都市“两抢一盗”犯罪者行为的时空规律进行研究。结果发现,成都市中部和中北部存在2个稳定的犯罪热点;在年内月尺度上,“两抢一盗”犯罪案件集中在商贸区、住宅区和火车站,月内日尺度上,犯罪热点存在“波动式”空间偏移,月内周尺度上犯罪热点以原热点为基础,呈现明显的外延式空间偏移,日内时尺度上,犯罪热点沿主要道路转移。犯罪成因分析和影像图片分析表明,成都市“两抢一盗”犯罪以流窜作案为主,犯案者与复杂的环境因素在时空上的交互作用导致了作案地域的演变。整体来看,基于案件汇总数据的“两抢一盗”犯罪多尺度时空分析,可以在一定程度上解释区域内犯罪者的犯罪行为规律。
关键词: 两抢一盗时空格局多尺度犯罪地理学    
Abstract: The urban area around the third ring road of Chengdu city as an example, by using the standardized crime intensity index and kernel density estimation to explore the criminal behavior. The data source is adopted from the website of China Judgement online, which includes the specific time, places, type of crimes, amount of crimes, and the number of people involved in the robbery, snatch and theft within the third ring road of the Chengdu city during 2013 to 2015. Concerning the spatial pattern, it concludes that there are two stable crime hotspots in the central and north central regions of the Chengdu city. According to the monthly data of each year, the cases of robbery, snatch and theft are gathered in business districts, residential areas and railway stations. According to the data of each day, crime shift patterns can be clearly observed around the main hotspots in the central and north-central of Chengdu city. From the weakly data of a month,it is found that the hotspots of crimes remain stable meanwhile extend outward .The hourly data is of a day manifest that crime hotspots of robbery, snatch and theft are shifted along the main streets as time goes on. It can be seen that the robbery, snatch and theft in the Chengdu city are mainly of moving crimes. On the whole, the multi-scale timing and spatial analysis of crimes based on aggregating crime incidents data can explain the criminal behavior in a specific region to a certain extent.
Key words: robbery, snatch and theft    spatial-temporal pattern    multiple scales    crime geography
收稿日期: 2019-02-25 出版日期: 2019-11-25
CLC:  F129.9  
基金资助: 国家自然科学基金资助项目(41571174).
通讯作者: ORCID:http://orcid.org/0000-0001-6272-6868,E-mail:zhaozhb@snnu.edu.cn.     E-mail: zhaozhb@snnu.edu.cn
作者简介: 曲比伟石(1992—),ORCID:http://orcid.org/0000-0002-8748-4479,男,硕士研究生,主要从事犯罪地理研究.
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引用本文:

曲比伟石, 赵振斌, 邓元杰, 张熠. 成都市主城区“两抢一盗”犯罪的多尺度时空格局研究[J]. 浙江大学学报(理学版), 2019, 46(6): 745-754.

QUBI Weishi, ZHAO Zhenbin, DENG Yuanjie, ZHANG Yi. Spatial-temporal patterns of robbery, snatch and theft at multi-scale in the main urban area of Chengdu city. Journal of ZheJIang University(Science Edition), 2019, 46(6): 745-754.

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https://www.zjujournals.com/sci/CN/10.3785/j.issn.1008-9497.2019.06.019        https://www.zjujournals.com/sci/CN/Y2019/V46/I6/745

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