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Examining the nonparametric effect of drivers' age in rear-end accidents through an additive logistic regression model

机译:通过加法逻辑回归模型检验驾驶员年龄在追尾事故中的非参数影响

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摘要

This study seeks to inspect the nonparametric characteristics connecting the age of the driver to the relative risk of being an at-fault vehicle, in order to discover a more precise and smooth pattern of age impact, which has commonly been neglected in past studies. Records of drivers in two-vehicle rear-end collisions are selected from the general estimates system (GES) 2011 dataset. These extracted observations in fact constitute inherently matched driver pairs under certain matching variables including weather conditions, pavement conditions and road geometry design characteristics that are shared by pairs of drivers in rear-end accidents. The introduced data structure is able to guarantee that the variance of the response variable will not depend on the matching variables and hence provides a high power of statistical modeling. The estimation results exhibit a smooth cubic spline function for examining the nonlinear relationship between the age of the driver and the log odds of being at fault in a rear-end accident. The results are presented with respect to the main effect of age, the interaction effect between age and sex, and the effects of age under different scenarios of pre-crash actions by the leading vehicle. Compared to the conventional specification in which age is categorized into several predefined groups, the proposed method is more flexible and able to produce quantitatively explicit results. First, it confirms the U-shaped pattern of the age effect, and further shows that the risks of young and old drivers change rapidly with age. Second, the interaction effects between age and sex show that female and male drivers behave differently in rear-end accidents. Third, it is found that the pattern of age impact varies according to the type of pre-crash actions exhibited by the leading vehicle.
机译:这项研究旨在检查将驾驶员的年龄与犯错车辆的相对风险联系起来的非参数特征,以发现更精确,更平滑的年龄影响模式,这在过去的研究中通常被忽略。从通用估算系统(GES)2011数据集中选择两车追尾事故中的驾驶员记录。这些提取的观察结果实际上构成了在某些匹配变量下的固有匹配的驾驶员对,其中包括天气条件,路面状况和道路几何设计特征,这些特征在追尾事故中由驾驶员对共享。引入的数据结构能够保证响应变量的方差不依赖于匹配变量,因此提供了统计建模的强大功能。估计结果显示出光滑的三次样条函数,用于检查驾驶员的年龄与追尾事故发生时的对数几率之间的非线性关系。给出了有关年龄的主要影响,年龄与性别之间的交互作用以及领先车辆在不同的预碰撞动作场景下的年龄影响的结果。与将年龄分为几个预定义组的常规规范相比,所提出的方法更加灵活并且能够产生定量明确的结果。首先,它确定了年龄效应的U形模式,并进一步表明,年轻驾驶员和老年驾驶员的风险会随着年龄的变化而迅速变化。其次,年龄和性别之间的相互作用影响表明,男性和女性驾驶员在追尾事故中的行为有所不同。第三,发现年龄影响的模式根据主导车辆表现出的碰撞前行为的类型而变化。

著录项

  • 来源
    《Accident Analysis & Prevention》 |2014年第6期|129-136|共8页
  • 作者

    Lu Ma; Xuedong Yan;

  • 作者单位

    MOE Key Laboratory for Urban Transportation Complex Systems Theory and Technology, School of Traffic and Transportation, Beijing Jiaotong University, Beijing 100044, PR China;

    MOE Key Laboratory for Urban Transportation Complex Systems Theory and Technology, School of Traffic and Transportation, Beijing Jiaotong University, Beijing 100044, PR China;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Additive logistic regression; Relative risks; Age effect; Inherently matched pairs;

    机译:可加逻辑回归相对风险;年龄效应;固有匹配对;

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