Affiliation:
1. Department of Economics, Democritus University of Thrace, 69100 Komotini, Greece
Abstract
Accurate forecasting of insurance claims is of the utmost importance for insurance activity as the evolution of claims determines cash outflows and the pricing, and thus the profitability, of the underlying insurance coverage. These are used as inputs when the insurance company drafts its business plan and determines its risk appetite, and the respective solvency capital required (by the regulators) to absorb the assumed risks. The conventional claim forecasting methods attempt to fit (each of) the claims frequency and severity with a known probability distribution function and use it to project future claims. This study offers a fresh approach in insurance claims forecasting. First, we introduce two novel sets of variables, i.e., weather conditions and car sales, and second, we employ a battery of Machine Learning (ML) algorithms (Support Vector Machines—SVM, Decision Trees, Random Forests, and Boosting) to forecast the average (mean) insurance claim per insured car per quarter. Finally, we identify the variables that are the most influential in forecasting insurance claims. Our dataset comes from the motor portfolio of an insurance company operating in Athens, Greece and spans a period from 2008 to 2020. We found evidence that the three most informative variables pertain to the new car sales with a 3-quarter and 1-quarter lag and the minimum temperature of Elefsina (one of the weather stations in Athens) with a 3-quarter lag. Among the models tested, Random Forest with limited depth and XGboost run on the 15 most informative variables, and these exhibited the best performance. These findings can be useful in the hands of insurers as they can consider the weather conditions and the new car sales among the parameters that are considered to perform claims forecasting.
Subject
Strategy and Management,Economics, Econometrics and Finance (miscellaneous),Accounting
Reference57 articles.
1. Ahsan, Md Manjurul, Mahmud, M. A. Parvez, Saha, Pritom Kumar, Gupta, Kishor Datta, and Siddique, Zahed (2021). Effect of Data Scaling Methods on Machine Learning Algorithms and Model Performance. Technologies, 9.
2. Assa, Hirbod, Pouralizadeh, Mostafa, and Badamchizadeh, Abdolrahim (2019). Sound deposit insurance pricing using a machine learning approach. Risks, 7.
3. Balasubramanian, R., Libarikian, Ari, and McElhaney, Doug (2022, December 28). Insurance 2030—The Impact of AI on the Future of Insurance. McKinsey and Company. Available online: https://www.mckinsey.com/industries/financial-services/our-insights/insurance-2030-the-impact-of-ai-on-the-future-of-insurance.
4. Discussion of “Machine learning applications in non-life insurance”;Banks;Applied Stochastic Models in Business and Industry,2020
5. Bärtl, Mathias, and Krummaker, Simone (2020). Prediction of claims in export credit finance: A comparison of four machine learning techniques. Risks, 8.
Cited by
5 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献