Search

Improving automobile insurance claims frequency prediction with telematics car driving data

Recurso electrónico / Electronic resource
MARC record
Tag12Value
LDR  00000cab a2200000 4500
001  MAP20220014946
003  MAP
005  20220518121038.0
008  220518e20200509esp|||p |0|||b|spa d
040  ‎$a‎MAP‎$b‎spa‎$d‎MAP
084  ‎$a‎322
24500‎$a‎Improving automobile insurance claims frequency prediction with telematics car driving data‎$c‎Shengwang Meng...[et.al.]
520  ‎$a‎Novel 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.
650 4‎$0‎MAPA20080603779‎$a‎Seguro de automóviles
650 4‎$0‎MAPA20080556730‎$a‎Telemática
650 4‎$0‎MAPA20080621100‎$a‎Conducción automovilística
7730 ‎$w‎MAP20077000420‎$g‎09/05/2022 Volumen 52 Número 2 - mayo 2022 , p. 363-391‎$x‎0515-0361‎$t‎Astin bulletin‎$d‎Belgium : ASTIN and AFIR Sections of the International Actuarial Association