Automobile Usage-Based-Insurance: : Improving Risk Management using Telematics Data

Lourenco Cunha, J. Bravo
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引用次数: 1

Abstract

The development of in-vehicle telecommunication devices (telematics)-technology, wireless connectivity, machine-to-machine communication, and mobile applications powered the development of usage-based insurance tracking vehicle distance driven and driving behaviour. This paper investigates the added value of combining traditional rating factors with driving behaviour data obtained using telematics to improve automobile insurance risk management. Two classification techniques are used for investigating the claim frequency: (i) a classical Generalized Linear Model (GLM) with Poisson distribution for the expected number of claims, and (ii) a Bagging (Bootstrap Aggregation) GLM machine-learning technique. The empirical results suggest that the vehicle distance driven influences the probability of having a road accident and, thus, the cost of auto insurance coverage. This means that the use of telemetric data has the potential to improve risk management in insurance, facilitate price discrimination and reduce unintended cross-subsidies between policyholders.
基于汽车使用的保险:*利用远程信息处理数据改进风险管理
车载通信设备(远程信息处理)技术、无线连接、机器对机器通信和移动应用的发展推动了基于使用情况的保险的发展,跟踪车辆行驶距离和驾驶行为。本文探讨了将传统评级因素与远程信息处理获得的驾驶行为数据相结合,以改善汽车保险风险管理的附加价值。两种分类技术用于调查索赔频率:(i)具有泊松分布的期望索赔数的经典广义线性模型(GLM)和(ii) Bagging (Bootstrap Aggregation) GLM机器学习技术。实证结果表明,车辆行驶距离影响交通事故发生概率,进而影响汽车保险覆盖成本。这意味着遥测数据的使用有可能改善保险业的风险管理,促进价格歧视,减少投保人之间意外的交叉补贴。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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