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A survey on driving behavior analysis in usage based insurance using big data

机译:基于使用情况的大数据保险驾驶行为分析调查

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Abstract The emergence and growth of connected technologies and the adaptation of big data are changing the face of all industries. In the insurance industry, Usage-Based Insurance (UBI) is the most popular use case of big data adaptation. Initially UBI is started as a simple unitary Pay-As-You-Drive (PAYD) model in which the classification of good and bad drivers is an unresolved task. PAYD is progressed towards Pay-How-You-Drive (PHYD) model in which the premium is charged for the personal auto insurance depending on the post-trip analysis. Providing proactive alerts to guide the driver during the trip is the drawback of the PHYD model. PHYD model is further progressed towards Manage-How-You-Drive (MHYD) model in which the proactive engagement in the form of alerts is provided to the drivers while they drive. The evolution of PAYD, PHYD and MHYD models serve as the building blocks of UBI and facilitates the insurance industry to bridge the gap between insurer and the customer with the introduction of MHYD model. Increasing number of insurers are starting to launch PHYD or MHYD models all over the world and widespread customer adaptation is seen to improve the driver safety by monitoring the driving behavior. Consequently, the data flow between an insurer and their customers is increasing exponentially, which makes the need for big data adaptation, a foundational brick in the technology landscape of insurers. The focus of this paper is to perform a detailed survey about the categories of MHYD. The survey results in the need to address the aggressive driving behavior and road rage incidents of the drivers during short-term and long-term driving. The exhaustive survey is also used to propose a solution that finds the risk posed by aggressive driving and road rage incidents by considering the behavioral and emotional factors of a driver. The outcome of this research would help the insurance industries to assess the driving risk more accurately and to propose a solution to calculate the personalized premium based on the driving behavior with most importance towards prevention of risk.
机译:摘要互联技术的出现和发展以及大数据的适应正在改变所有行业的面貌。在保险行业中,基于使用的保险(UBI)是大数据适应的最流行用例。最初,UBI是作为简单的统一的即付即用(PAYD)模型启动的,在该模型中,对好司机和坏司机的分类是一项尚未解决的任务。 PAYD逐步发展为“按车付款方式”(PHYD)模型,其中根据旅行后分析对个人汽车保险收取保费。 PHYD模型的缺点是在旅途中提供主动警报以指导驾驶员。 PHYD模型进一步发展为“驾驶管理方式”(MHYD)模型,在该模型中,驾驶员在驾驶时以警报的形式主动参与。 PAYD,PHYD和MHYD模型的发展成为UBI的基础,并通过引入MHYD模型促进保险业弥合保险公司和客户之间的鸿沟。越来越多的保险公司开始在全球范围内推出PHYD或MHYD模型,并且广泛的客户适应性被认为可以通过监视驾驶行为来提高驾驶员安全性。因此,保险公司与其客户之间的数据流呈指数增长,这使得对大数据适应的需求成为保险公司技术领域的基础。本文的重点是对MHYD类别进行详细调查。该调查结果导致需要解决短期和长期驾驶过程中驾驶员的侵略性驾驶行为和道路狂暴事件。详尽的调查还用于提出解决方案,该解决方案通过考虑驾驶员的行为和情感因素来发现激进的驾驶和道路狂暴事件带来的风险。这项研究的结果将有助于保险业更准确地评估驾驶风险,并提出一种解决方案,以基于对预防风险最重要的驾驶行为来计算个性化保费。

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