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Bayesian Spatial-temporal Modelling and Mapping for Crime Data in Nairobi County

机译:内罗毕县犯罪数据的贝叶斯时空建模和映射

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Nairobi is a county in Kenya that is more prone to crime occurrence. This has made many researchers, for the past years, to study about crime occurrence in its suburbs and which factors promote crime. The theories around crime are always coupled with an attempt to predict their occurrence, for better crime analysis, and management, in case they happen, the associated covariates and their changes are analyzed. At the sub-county level, the crime occurrence is highly studied and understood. In this study, using Bayesian theory, this study builds spatial-temporal Bayesian model approach to crime to analyze its spatial-temporal patterns and determine any developing trends using data regarding robberies that occurred in Nairobi County in Kenya from January 1, 2011 to December 31, 2018. Of the diverse socio-economic variables associated with crime rate, including unemployment rate, poverty, weak law enforcement, Alcohol and drug abuse, and illiteracy, this study finds that robbery crime rate is significantly correlated with the poverty index and the unemployment rate. This finding provides a statistical reference for County safety protection. For further work, we recommend that further study can be done to determine factors associated with the dynamics and the distribution of crime in Nairobi County while accounting for measurement error that might be present in the covariates.
机译:内罗毕是肯尼亚的一个县,更容易发生犯罪。在过去的几年中,这使许多研究人员能够研究郊区的犯罪发生情况以及助长犯罪的因素。围绕犯罪的理论总是与试图预测其发生的尝试相结合,以便更好地进行犯罪分析和管理,以防万一发生时分析了相关的协变量及其变化。在县以下一级,对犯罪事件进行了深入的研究和理解。在这项研究中,使用贝叶斯理论,该研究建立了犯罪的时空贝叶斯模型方法,以使用2011年1月1日至12月31日在肯尼亚内罗毕县发生的抢劫数据分析犯罪的时空模式并确定任何发展趋势。 ,2018年。在与犯罪率相关的各种社会经济变量中,包括失业率,贫困,执法不力,酗酒和吸毒以及文盲,该研究发现,抢劫犯罪率与贫困指数和失业率显着相关。率。这一发现为县级安全保护提供了统计参考。对于进一步的工作,我们建议可以做进一步的研究来确定与内罗毕县犯罪动态和犯罪分布相关的因素,同时考虑到协变量中可能存在的测量误差。

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