University of Sheffield, Sheffield, UK.
University of Greenwich, Greenwich, UK.
Accid Anal Prev. 2015 Jan;74:118-25. doi: 10.1016/j.aap.2014.10.012. Epub 2014 Oct 29.
The Driver Behavior Questionnaire (DBQ) is a self-report measure of driving behavior that has been widely used over more than 20 years. Despite this wealth of evidence a number of questions remain, including understanding the correlation between its violations and errors sub-components, identifying how these components are related to crash involvement, and testing whether a DBQ based on a reduced number of items can be effective. We address these issues using a bifactor modeling approach to data drawn from the UK Cohort II longitudinal study of novice drivers. This dataset provides observations on 12,012 drivers with DBQ data collected at .5, 1, 2 and 3 years after passing their test. A bifactor model, including a general factor onto which all items loaded, and specific factors for ordinary violations, aggressive violations, slips and errors fitted the data better than correlated factors and second-order factor structures. A model based on only 12 items replicated this structure and produced factor scores that were highly correlated with the full model. The ordinary violations and general factor were significant independent predictors of crash involvement at 6 months after starting independent driving. The discussion considers the role of the general and specific factors in crash involvement.
驾驶员行为问卷(DBQ)是一种自我报告的驾驶行为测量方法,已经使用了 20 多年。尽管有大量的证据,但仍有一些问题需要解决,包括理解其违规和错误子成分之间的相关性,确定这些成分与事故参与的关系,以及测试基于较少项目的 DBQ 是否有效。我们使用来自英国新手驾驶员纵向研究 II 期的数据集,采用双因素建模方法来解决这些问题。该数据集提供了 12012 名驾驶员的观察结果,这些驾驶员在通过考试后的.5、1、2 和 3 年收集了 DBQ 数据。双因素模型,包括一个所有项目都加载的一般因素,以及普通违规、攻击违规、失误和错误的特定因素,比相关因素和二阶因素结构更能拟合数据。一个仅包含 12 个项目的模型复制了这种结构,并产生了与完整模型高度相关的因子得分。普通违规和一般因素是独立驾驶后 6 个月事故发生的重要独立预测因素。讨论考虑了一般因素和特定因素在事故参与中的作用。