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Identify Risk Pattern of E-Bike Riders in China Based on Machine Learning Framework

机译:基于机器学习框架识别中国电子自行车车手的风险模式

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摘要

In this paper, the risk pattern of e-bike riders in China was examined, based on tree-structured machine learning techniques. Three-year crash/violation data were acquired from the Kunshan traffic police department, China. Firstly, high-risk (HR) electric bicycle (e-bike) riders were defined as those with at-fault crash involvement, while others (i.e., non-at-fault or without crash involvement) were considered as non-high-risk (NHR) riders, based on quasi-induced exposure theory. Then, for e-bike riders, their demographics and previous violation-related features were developed based on the crash/violation records. After that, a systematic machine learning (ML) framework was proposed so as to capture the complex risk patterns of those e-bike riders. An ensemble sampling method was selected to deal with the imbalanced datasets. Four tree-structured machine learning methods were compared, and a gradient boost decision tree (GBDT) appeared to be the best. The feature importance and partial dependence were further examined. Interesting findings include the following: (1) tree-structured ML models are able to capture complex risk patterns and interpret them properly; (2) spatial-temporal violation features were found as important indicators of high-risk e-bike riders; and (3) violation behavior features appeared to be more effective than violation punishment-related features, in terms of identifying high-risk e-bike riders. In general, the proposed ML framework is able to identify the complex crash risk pattern of e-bike riders. This paper provides useful insights for policy-makers and traffic practitioners regarding e-bike safety improvement in China.
机译:在本文中,基于树结构机器学习技术,研究了中国电子自行车车手的风险模式。从昆山交通警察局,中国的崩溃/违规数据获得了三年的崩溃/违规数据。首先,高风险(HR)电动自行车(E-BIKE)骑手被定义为具有抗故障碰撞的人,而其他人(即非攻击性或没有碰撞的参与)被认为是非高风险的(NHR)骑手,基于准诱导的曝光理论。然后,对于电子自行车骑手,基于崩溃/违规记录开发了他们的人口统计数据和先前的违规相关特征。之后,提出了一种系统的机器学习(ML)框架,以捕获那些电子自行车骑手的复杂风险模式。选择合并采样方法来处理不平衡数据集。比较了四种结构的机器学习方法,梯度升压决策树(GBDT)似乎是最好的。进一步研究了特征重要性和部分依赖。有趣的发现包括以下内容:(1)树结构ML模型能够捕获复杂的风险模式并正确解释它们; (2)空间违规特征被发现是高风险的电子自行车骑手的重要指标; (3)违规行为特征似乎与违规惩罚相关的特征似乎更有效,就识别高风险的电子自行车骑手而言。通常,建议的ML框架能够识别电子自行车骑手的复杂碰撞风险模式。本文为政策制定者和交通从业者提供了关于中国电子自行车安全改进的有用见解。

著录项

  • 期刊名称 Entropy
  • 作者单位
  • 年(卷),期 2019(21),11
  • 年度 2019
  • 页码 1084
  • 总页数 14
  • 原文格式 PDF
  • 正文语种
  • 中图分类
  • 关键词

    机译:e-bike骑手;碰撞风险;机器学习;交通违规;

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