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Claim Amount Forecasting and Pricing of Automobile Insurance Based on the BP Neural Network

Author

Listed:
  • Wenguang Yu
  • Guofeng Guan
  • Jingchao Li
  • Qi Wang
  • Xiaohan Xie
  • Yu Zhang
  • Yujuan Huang
  • Xinliang Yu
  • Chaoran Cui
  • Benjamin Miranda Tabak

Abstract

The BP neural network model is a hot issue in recent academic research, and it has been successfully applied to many other fields, but few researchers apply the BP neural network model to the field of automobile insurance. The main method that has been used in the prediction of the total claim amount in automobile insurance is the generalized linear model, where the BP neural network model could provide a different approach to estimate the total claim loss. This paper uses a genetic algorithm to optimize the structure of the BP neural network at first, and the calculation speed is significantly improved. At the same time, by considering the overfitting problem, an early stop method is introduced to avoid the overfitting problem. In the model, a three-layer BP neural network model, which includes the input layer, hidden layer, and output layer, is trained. With consideration of various factors, a total claim amount prediction model is established, and the trained BP neural network model is used to predict the total claim amount of automobile insurance based on the data of the training set. The results show that the accuracy of the prediction by using the BP neural network model to both the data of Shandong Province and to the data of six cities is over 95%. Then, the predicted total claim amount is used to calculate premiums for five cities in Shandong Province according to credibility theory. The results show that the average premium of the five cities is slightly higher than the actual claim amount of the city. The combination of BP neural network and credibility theory can perform accurate claim amount estimation and pricing for automobile insurance, which can effectively improve the current situation of the automobile insurance business and promote the development of insurance industry.

Suggested Citation

  • Wenguang Yu & Guofeng Guan & Jingchao Li & Qi Wang & Xiaohan Xie & Yu Zhang & Yujuan Huang & Xinliang Yu & Chaoran Cui & Benjamin Miranda Tabak, 2021. "Claim Amount Forecasting and Pricing of Automobile Insurance Based on the BP Neural Network," Complexity, Hindawi, vol. 2021, pages 1-17, January.
  • Handle: RePEc:hin:complx:6616121
    DOI: 10.1155/2021/6616121
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    Cited by:

    1. Hongjie Yi & Ke Zhang & Kun Ma & Lijian Zhou & Futong Tang, 2022. "Prediction of Natural Rubber Customs Declaration Price Based on Wavelet Decomposition and GA-BP Neural Network Group," Mathematics, MDPI, vol. 10(22), pages 1-15, November.
    2. Huaiyu Liu & Zhijun Meng & Anqi Zhang & Yue Cong & Xiaofei An & Weiqiang Fu & Guangwei Wu & Yanxin Yin & Chengqian Jin, 2022. "On-Line Detection Method and Device for Moisture Content Measurement of Bales in a Square Baler," Agriculture, MDPI, vol. 12(8), pages 1-16, August.

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