{"title":"An ecological adjusted random effect model for property crime in Windhoek, Namibia (2011-2016)","authors":"J. Amunyela","doi":"10.54421/njrst.v4i1.90","DOIUrl":null,"url":null,"abstract":"Count data that are zero inflated are often analysed using Zero-Inflated Negative Binomial Generalized Linear Mixed Model (ZINB-GLMM) when observations are correlated in ways that require random effects. This study investigated ecological factors influencing the number of property crimes in Windhoek by using data obtained from the Windhoek police over the period of six consecutive years (2011 to 2016). The ecological concepts were measured at different levels of aggregation. Limited studies in Windhoek have considered analysing crime data on Generalized Linear Mixed Model via Template Model Builder (TMB) R-package. Crimes were counted with respect to Month, Season, Year, Location and Density. Property crime data contained more zeros than expected. When comparing models fitted, it was found that the Relative Risks (RR) were highly significant for models fitted via Negative Binomial distribution. By adopting a ZINB-GLMM, the study attempted to address the potential covariates for Property crimes. The study showed that most of the variation property crimes was due to locations. Crime was high during spring and winter time during the study period. The study further discovered that areas with high population densities had high crime intensity. Security patrols and surveillance should be stepped up in Windhoek in high density suburbs especially during winter and spring seasons.","PeriodicalId":314128,"journal":{"name":"Namibian Journal for Research, Science and Technology","volume":"31 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2022-05-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Namibian Journal for Research, Science and Technology","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.54421/njrst.v4i1.90","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
Abstract
Count data that are zero inflated are often analysed using Zero-Inflated Negative Binomial Generalized Linear Mixed Model (ZINB-GLMM) when observations are correlated in ways that require random effects. This study investigated ecological factors influencing the number of property crimes in Windhoek by using data obtained from the Windhoek police over the period of six consecutive years (2011 to 2016). The ecological concepts were measured at different levels of aggregation. Limited studies in Windhoek have considered analysing crime data on Generalized Linear Mixed Model via Template Model Builder (TMB) R-package. Crimes were counted with respect to Month, Season, Year, Location and Density. Property crime data contained more zeros than expected. When comparing models fitted, it was found that the Relative Risks (RR) were highly significant for models fitted via Negative Binomial distribution. By adopting a ZINB-GLMM, the study attempted to address the potential covariates for Property crimes. The study showed that most of the variation property crimes was due to locations. Crime was high during spring and winter time during the study period. The study further discovered that areas with high population densities had high crime intensity. Security patrols and surveillance should be stepped up in Windhoek in high density suburbs especially during winter and spring seasons.
当观测值以需要随机效应的方式相关时,通常使用零膨胀负二项广义线性混合模型(ZINB-GLMM)分析零膨胀计数数据。本研究利用从温得和克警方获得的连续六年(2011年至2016年)的数据,调查了影响温得和克财产犯罪数量的生态因素。在不同的聚集水平上测量了生态概念。温得和克有限的研究考虑了使用模板模型生成器(Template Model Builder, TMB) R-package对广义线性混合模型分析犯罪数据。犯罪是根据月份、季节、年份、地点和密度来统计的。财产犯罪数据中包含的零比预期的要多。对比拟合模型发现,负二项分布拟合模型的相对风险(RR)非常显著。通过采用ZINB-GLMM,本研究试图解决财产犯罪的潜在协变量。研究表明,大多数财产犯罪是由地点引起的。研究期间,春季和冬季犯罪率较高。研究进一步发现,人口密度高的地区犯罪强度也高。在温得和克人口稠密的郊区,特别是在冬季和春季,应加强安全巡逻和监视。