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Modeling Burglar Incidents Data Using Generalized and Quasi Poisson Regression Models: A Case Study of Nairobi City County, Kenya

机译:使用广义和Quasi Poisson回归模型建模窃贼事件数据:肯尼亚内罗毕市县的案例研究

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Serious violent crimes including Burglary, dangerous drug trafficking and sexual offenses make up the bulk of incidents filed at police stations daily. These crimes related activities poses a serious threat to the peace and serenity of a nation as far as safety is concerned. Burglar incidents data are often discrete and do not conform to the general assumptions of the linear model and its variants. Ordinarily, such data could be modeled using a linear regression approach to derive the relationship between the response variable to the underlying covariates. However, the narrowing of the gap between city and suburban burglar crime rates brings about variability invalidating the application of Ordinary linear regression approaches. The main objective of this study focused on the comparative use of Generalized Poisson and Quasi-Poisson models as an alternative to the classical linear regression approach in modeling Burglar incidents in Nairobi City County, Kenya. The prime advantage of applying Quasi Poisson in count data analysis is that it fixes the basic fallacy of assuming homogeneity in data and allows estimation of dispersion. The study used secondary data covering Eight (8) Nairobi's Administrative Divisions from the National Crime Research Center (NCRC) for the period 2016-2018. The comparison criteria were the Akaike Information (AIC) Criterion and Deviance Information Criterion (DIC) alongside other model diagnostics tests. Application of this results in burglar events revealed that the number of incidents in the study area are Under-dispersed with the risks of experiencing Burglar crime being above 5% in all the locations surveyed. In an attempt to explore Burglar to location relationship, results from study proved that Generalized Poisson Model performed better than the Quasi Poisson model having posted the lowest AIC value.
机译:在包括入室盗窃,危险的贩毒和性犯罪的严重暴力犯罪弥补了每天在警察局提起的大部分事件。就安全而言,这些罪行相关活动对一个国家的和平与宁静构成了严重的威胁。窃贼事件数据通常是离散的,并且不符合线性模型的一般假设及其变体。通常,这些数据可以使用线性回归方法进行建模,以导出响应变量与底层协变的关系。然而,城市与郊区防盗犯罪率之间的差距缩小为可变性无效,使普通线性回归方法的应用失效。本研究的主要目的是广义泊松和准泊松模型的比较使用作为肯尼亚内罗毕县镇恐怖事件的古典线性回归方法的替代方案。在计数数据分析中应用Quasi Poisson的主要优势在于它解决了假设数据中的均匀性的基本谬误并允许分散估计。该研究使用了2016 - 2018年国家犯罪研究中心(NCRC)八(8)个内罗毕行政部门的二级数据。比较标准是Akaike信息(AIC)标准和偏差信息标准(DIC)以及其他模型诊断测试。在窃贼事件中的应用,这一结果揭示了研究区域的事件的数量,遭到在所有接受调查的所有地点的体验盗窃罪的风险超过5%的风险。为了试图探索窃贼到地点关系,研究结果证明,广义泊松模型比张贴最低的AIC值的准泊松模型表现得更好。

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