Construction of public security indicators based on characteristics of shared group behavior patterns

IF 1.7 4区 计算机科学 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS Data Technologies and Applications Pub Date : 2022-06-03 DOI:10.1108/dta-12-2021-0389
Xiyue Deng, Xiaoming Li, Zhenzhen Chen, Meng Zhu, N. Xiong, Li Shen
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Abstract

PurposeHuman group behavior is the driving force behind many complex social and economic phenomena. Few studies have integrated multi-dimensional travel patterns and city interest points to construct urban security risk indicators. This paper combines traffic data and urban alarm data to analyze the safe travel characteristics of the urban population. The research results are helpful to explore the diversity of human group behavior, grasp the temporal and spatial laws and reveal regional security risks. It provides a reference for optimizing resource deployment and group intelligence analysis in emergency management.Design/methodology/approachBased on the dynamics index of group behavior, this paper mines the data of large shared bikes and ride-hailing in a big city of China. We integrate the urban interest points and travel dynamic characteristics, construct the urban traffic safety index based on alarm behavior and further calculate the urban safety index.FindingsThis study found significant differences in the travel power index among ride-sharing users. There is a positive correlation between user shared bike trips and the power-law bimodal phenomenon in the logarithmic coordinate system. It is closely related to the urban public security index.Originality/valueBased on group-shared dynamic index integrated alarm, we innovatively constructed an urban public safety index and analyzed the correlation of travel alarm behavior. The research results fully reveal the internal mechanism of the group behavior safety index and provide a valuable supplement for the police intelligence analysis.
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基于共享群体行为模式特征的公共安全指标构建
目的人类群体行为是许多复杂社会和经济现象背后的驱动力。很少有研究将多维出行模式和城市兴趣点相结合来构建城市安全风险指标。本文结合交通数据和城市警报数据,分析了城市人口的安全出行特征。研究结果有助于探索人类群体行为的多样性,把握时空规律,揭示区域安全风险。为应急管理中优化资源配置和群体智能分析提供参考。设计/方法论/方法基于群体行为动力学指标,对中国大城市大型共享单车和叫车的数据进行挖掘。我们综合城市兴趣点和出行动态特征,构建基于报警行为的城市交通安全指数,并进一步计算城市安全指数。研究发现,拼车用户的出行能力指数存在显著差异。在对数坐标系中,用户共享单车出行与幂律双峰现象呈正相关。它与城市公共安全指数密切相关。独创性/价值基于群体共享动态指标综合报警,创新构建了城市公共安全指标,并分析了出行报警行为的相关性。研究结果充分揭示了群体行为安全指数的内在机制,为警方情报分析提供了有价值的补充。
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来源期刊
Data Technologies and Applications
Data Technologies and Applications Social Sciences-Library and Information Sciences
CiteScore
3.80
自引率
6.20%
发文量
29
期刊介绍: Previously published as: Program Online from: 2018 Subject Area: Information & Knowledge Management, Library Studies
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