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Applying latent class analysis to investigate rural highway single-vehicle fatal crashes in China

机译:应用潜在阶级分析调查中国农村公路单车致命撞击

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Rural highways are an important component of highway networks in developing countries. The high fatality rates of single-vehicle crashes in these highways recently attracted increasing attention. Given that most studies on the factors that affect the severity of single-vehicle crashes in rural highways were conducted in developing countries, the present study investigated this issue in a Chinese setting by analyzing the single-vehicle crash data of rural highways in Anhui Province, China from 2014 to 2017. First, in consideration of the unobserved heterogeneity of crash data, a method that combines latent class analysis (LCA) and binary logistic regression (BLR), which is called LC-BLR, was applied to identify the significant factors that affect the severity of single-vehicle crashes in rural highways. Second, the goodness-of-fit and prediction accuracy of the LC-BLR model and the BLR model were compared. Results revealed that the performance of the former was more satisfactory than that of the latter. Finally, countermeasures were proposed based on the analysis of the main factors that affect each sub-class crash in the LC-BLR model. The LC-BLR model results indicated that collision type was significant in all three sub-class models considered in the analysis, but the effects on crash severity varied. Several variables (e.g., driving license state, time of week, driver age) demonstrated a significant effect in a specific sub-class model, thereby indicating that these factors were only effective in mitigating the crash severity of one sub-class. The findings of this study can facilitate the development of cost-effective policies or countermeasures for reducing the severity of single-vehicle crashes in rural highways.
机译:农村高速公路是发展中国家公路网络的重要组成部分。这些高速公路中的单车祸的高死亡率最近引起了不断的关注。鉴于大多数关于影响农村公路中单车祸严重程度的因素的研究,目前的研究通过分析安徽省农村高速公路的单车崩溃数据,调查了中国环境中的这个问题。中国2014年至2017年。首先,考虑到崩溃数据的不妥协异质性,应用了一种与称为LC-BLR称为LC-BLR的潜在类分析(LCA)和二进制物流回归(BLR)的方法以确定重要因素这影响了农村高速公路中单车祸的严重程度。其次,比较了LC-BLR模型的适合性和预测精度和BLR模型。结果表明,前者的表现比后者更令人满意。最后,基于分析了影响LC-BLR模型中每个小类崩溃的主要因素的分析,提出了对策。 LC-BLR模型结果表明,在分析中考虑的所有三个子类模型中,碰撞类型很大,但对崩溃严重程度的影响变化。几个变量(例如,驾驶许可证状态,周的时间,驾驶员年龄)在特定的子类模型中表现出显着的影响,从而表明这些因素仅对减轻一个子类的碰撞严重程度有效。本研究的调查结果可以促进开发成本效益的政策或对策​​,以减少农村公路的单车祸严重程度。

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