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Investigating the Significant Individual Historical Factors of Driving Risk Using Hierarchical Clustering Analysis and Quasi-Poisson Regression Model

机译:使用分层聚类分析和拟泊松回归模型调查驾驶风险的重要个人历史因素

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摘要

Driving risk varies substantially according to many factors related to the driven vehicle, environmental conditions, and drivers. This study explores the contributing historical factors of driving risk with hierarchical clustering analysis and the quasi-Poisson regression model. The dataset of the study was collected from two sources: naturalistic driving experiments and self-reports. The drivers who participated in the naturalistic driving experiment were categorized into four risk groups according to their near-crash frequency with the hierarchical clustering method. Moreover, a quasi-Poisson model was used to identify the essential factors of individual driving risk. The findings of this study indicated that historical driving factors have substantial impacts on individual risk of drivers. These factors include the total number of miles driven, the driver’s age, the number of illegal parking (past three years), the number of over-speeding (past three years) and passing red lights (past three years). The outcome of the study can help transportation officials, educators, and researchers to consider the influencing factors on individual driving risk and can give insights and provide suggestions to improve driving safety.
机译:驾驶风险会根据与驾驶车辆,环境条件和驾驶员相关的许多因素而有很大不同。本研究通过分层聚类分析和拟泊松回归模型探索了驱动风险的历史因素。该研究的数据集来自两个来源:自然驾驶实验和自我报告。运用自然聚类方法,将参加自然驾驶实验的驾驶员根据其接近碰撞的频率分为四个风险组。此外,使用准泊松模型来确定个人驾驶风险的基本因素。这项研究的结果表明,历史驱动因素对驾驶员的个人风险有重大影响。这些因素包括行驶的总里程,驾驶员的年龄,非法停车的数量(过去三年),超速的数量(过去三年)和红灯通过(过去三年)。研究的结果可以帮助运输官员,教育者和研究人员考虑影响个人驾驶风险的因素,并且可以提供见解并提供改善驾驶安全性的建议。

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