MENU

Hashan Peiris

Title: Integration of Traditional and Telematics data for Efficient Insurance Claims Prediction
Date:
Friday, March 31st
Time:
1:00pm
Location:
Hybrid, over zoom and in LIB 7200

Abstract

While driver telematics has gained attention for risk classification in auto insurance, scarcity of observations with telematics features has been problematic, which could be owing to either privacy concern or adverse selection compared to the data points with traditional features. To handle this issue, we propose a data integration technique based on calibration weights. It is shown that the proposed technique can efficiently integrate the so-called traditional data and telematics data and also cope with possible adverse selection issues on the availability of telematics data. Our findings are supported by a simulation study and empirical analysis in a synthetic telematics data set.

Keywords: Adverse selection, Automobile insurance, Data integration, Driver telematics, Missing data analysis