Loss Estimation for Voluntary Motor Claims Based on Decision Tree Model
Conference proceedings article
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Publication Details
Author list: Parinya Sa Ngiamsunthorn, Boobphachard Chansawang, Saowaluk Khantalee, and Thunyamai Junsawang
Publication year: 2022
Start page: 91
End page: 94
Number of pages: 4
URL: http://icas2022.stat.kmutnb.ac.th/doc/ICAS2022%20Proceeding.pdf
Abstract
The objective of this research is to develop a model to predict own damage loss for voluntary motor claims. The dataset used in this research was collected from an insurance company for five years during 2014-2018. The decision tree based on the Chi-square Automatic Interaction Detector algorithm (CHAID) is selected to develop the loss estimation model. From the decision tree model, the data is classified into 43 groups. It is found that factors affecting the model are car brand, sum insured, responsibility, claim service type, number of third-party cars, cause of loss, extra services, and region. In addition, the loss estimated from the decision tree model for the test data set yields a percentage error of 4.01% compared to the actual loss for the claim data in 2019. Therefore, the decision tree model is feasible to predict loss of voluntary motor claims.
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