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Latent class analysis of accident risks in usage-based insurance: Evidence from Beijing

机译:基于使用量保险的事故风险隐性类分析:来自北京的证据

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摘要

Car insurance is quickly becoming a big data industry, with usage-based insurance (UBI) poised to potentially change the business of insurance. Telematics data, which are transmitted from wireless devices in car, are widely used in UBI to obtain individual-level travel and driving characteristics. While most existing studies have introduced telematics data into car insurance pricing, the telematics-related characteristics are directly obtained from the raw data. In this study, we propose to quantify drivers' familiarity with their driving routes and develop models to quantify drivers' accident risks using the telematics data. In addition, we build a latent class model to study the heterogeneity in travel and driving styles based on the telematics data, which has not been investigated in literature. Our main results include: (1) the improvement to the model fit is statistically significant by adding telematics-related characteristics; (2) drivers' familiarity with their driving trips is critical to identify high risk drivers, and the relationship between drivers' familiarity and accident risks is non-linear; (3) the drivers can be classified into two classes, where the first class is the low risk class with 0.54% of its drivers reporting accidents, and the second class is the high risk class with 20.66% of its drivers reporting accidents; and (4) for the low risk class, drivers with high probability of reporting accidents can be identified by travel-behavior-related characteristics, while for the high risk class, they can be identified by driving-behavior-related characteristics. The driver's familiarity will affect the probability of reporting accidents for both classes.
机译:汽车保险正迅速成为大数据行业,基于使用的保险(UBI)有望改变保险业务。从车载无线设备传输的远程信息处理数据已在UBI中得到广泛使用,以获取个人级别的行驶和驾驶特性。尽管大多数现有研究已将远程信息处理数据引入了汽车保险价格,但与远程信息处理相关的特征却直接从原始数据中获得。在这项研究中,我们建议量化驾驶员对驾驶路线的熟悉程度,并开发模型以使用远程信息处理数据量化驾驶员的事故风险。此外,我们建立了一个潜在类模型,以基于远程信息处理数据研究旅行和驾驶方式的异质性,这在文献中还没有进行研究。我们的主要结果包括:(1)通过增加与远程信息处理相关的特性,模型拟合的改进在统计上是显着的; (2)驾驶员对驾车旅行的熟悉度对于识别高风险驾驶员至关重要,驾驶员的熟悉度与事故风险之间的关系是非线性的; (3)驾驶员可分为两类,一类为低风险类,占驾驶员报告事故的0.54%,二类为高风险类,占驾驶员报告事故的20.66%; (4)对于低风险类别,可以通过与出行行为相关的特征来识别报告事故可能性较高的驾驶员,而对于高风险类别,可以通过与驾驶行为相关的特征来进行识别。驾驶员的熟悉程度将影响两个级别报告事故的可能性。

著录项

  • 来源
    《Accident Analysis & Prevention》 |2018年第6期|79-88|共10页
  • 作者单位

    Tsinghua Univ, Dept Ind Engn, Beijing 100084, Peoples R China;

    Tsinghua Univ, PBC Sch Finance, Beijing 100084, Peoples R China;

    Tsinghua Univ, Dept Ind Engn, Beijing 100084, Peoples R China;

    Ford Motor Co, Res & Adv Engn, 2101 Village Rd,MD-2149, Dearborn, MI 48121 USA;

    Ford Motor Co, Beijing Yintai Ctr, Asia Pacific Res, Unit 4901, Tower C,2 Jianguomenwai St, Beijing 100022, Peoples R China;

    Ford Motor Co, Res & Adv Engn, 2101 Village Rd,MD-2149, Dearborn, MI 48121 USA;

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

    Usage-based insurance; Vehicle telematics; Accident risk; Latent class model;

    机译:基于使用的保险;车载远程信息处理;事故风险;潜在类别模型;

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