利用远程信息处理汽车驾驶数据改进汽车保险理赔频率预测

IF 1.7 3区 经济学 Q2 ECONOMICS ASTIN Bulletin Pub Date : 2021-12-27 DOI:10.1017/asb.2021.35
Shengwang Meng, He Wang, Yanlin Shi, Guangyuan Gao
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引用次数: 6

摘要

摘要新型的导航应用主要基于专家的领域知识,为每走完一段路程提供驾驶行为评分,以促进安全驾驶。本文利用汽车保险理赔数据和相关的远程信息处理汽车驾驶数据,提出了一种监督驾驶风险评分神经网络模型。该一维卷积神经网络将单个汽车行驶行程的时间序列作为输入,并返回单位范围(0,1)内的风险评分。通过引入每个驾驶员的可信度平均风险评分,可以显著改进经典泊松广义线性模型对车险理赔频率的预测。因此,与非远程信息处理的保险公司相比,远程信息处理的保险公司可以在其投资组合中发现更多的异质性,并以保费折扣吸引更安全的司机。
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IMPROVING AUTOMOBILE INSURANCE CLAIMS FREQUENCY PREDICTION WITH TELEMATICS CAR DRIVING DATA
Abstract Novel navigation applications provide a driving behavior score for each finished trip to promote safe driving, which is mainly based on experts’ domain knowledge. In this paper, with automobile insurance claims data and associated telematics car driving data, we propose a supervised driving risk scoring neural network model. This one-dimensional convolutional neural network takes time series of individual car driving trips as input and returns a risk score in the unit range of (0,1). By incorporating credibility average risk score of each driver, the classical Poisson generalized linear model for automobile insurance claims frequency prediction can be improved significantly. Hence, compared with non-telematics-based insurers, telematics-based insurers can discover more heterogeneity in their portfolio and attract safer drivers with premiums discounts.
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来源期刊
ASTIN Bulletin
ASTIN Bulletin 数学-数学跨学科应用
CiteScore
3.20
自引率
5.30%
发文量
24
审稿时长
>12 weeks
期刊介绍: ASTIN Bulletin publishes papers that are relevant to any branch of actuarial science and insurance mathematics. Its papers are quantitative and scientific in nature, and draw on theory and methods developed in any branch of the mathematical sciences including actuarial mathematics, statistics, probability, financial mathematics and econometrics.
期刊最新文献
Construction of rating systems using global sensitivity analysis: A numerical investigation Optimal VIX-linked structure for the target benefit pension plan Risk sharing in equity-linked insurance products: Stackelberg equilibrium between an insurer and a reinsurer Target benefit versus defined contribution scheme: a multi-period framework ASB volume 53 issue 3 Cover and Front matter
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