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Modeling Motorcycle Road Accidents with Traffic Offenses at Several Potential Locations using Negative Binomial Regression model in Malaysia

机译:使用负二项回归模型在马来西亚几个潜在地点的交通犯罪中对摩托车道路事故进行建模

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摘要

The major contributor to the total number of road accidents in Malaysia is the motorcycle road accidents. In this study, the relationship between motorcyclist road traffic offenses and the number of accidents at several places will be determined using the statistical generalized linear model. Negative binomial regression analysis was used as an alternative model other than Poisson. The model was validated using the Pearson chi-square tests, the method of deviance, the Akaike information criterion, and the Bayesian information criterion. The goodness of fit test shows that the negative binomial model is the best model, and it helps with overcoming the overdispersion problem, resulting in better estimation. The results also indicate that "turning dangerously" was the most common traffic offense of motorcyclists. The most likely location for motorcycle accidents to happen is in a "residential area".
机译:马来西亚道路交通事故的主要原因是摩托车道路交通事故。在这项研究中,将使用统计广义线性模型确定摩托车手道路交通违法行为与多个地方的事故数量之间的关系。负二项回归分析被用作Poisson以外的替代模型。使用Pearson卡方检验,偏差方法,Akaike信息准则和贝叶斯信息准则对模型进行了验证。拟合优度检验表明,负二项式模型是最佳模型,它有助于克服过度分散问题,从而获得更好的估计。结果还表明,“危险转弯”是摩托车手最常见的交通犯罪。摩托车事故最可能发生的地点是“居民区”。

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