Preview

Herald of the Kazakh-British technical university

Advanced search

QUANTATIVE MODEL FOR ESTIMATING VEHICLE REPAIR COSTS IN INSURANCE CLAIMS

https://doi.org/10.55452/1998-6688-2024-21-4-58-80

Abstract

This paper introduces a quantitative model designed to enhance the accuracy of vehicle repair cost estimations in the context of insurance claims. Motivated by the ubiquity of vehicle ownership and the frequent occurrence of vehicular damage, our research focuses on the development of a robust framework that integrates multiple variables affecting repair costs. These include parts pricing, labor charges, and the specifics of insurance policies. The proposed model leverages mathematical and computer modeling techniques to synthesize these elements into a predictive tool that aims to provide fair and precise repair cost forecasts. This tool is intended to facilitate equitable interactions between insurers and policyholders, ensuring that compensation aligns closely with actual repair expenses. The utility of this model is particularly significant in improving transparency and efficiency in handling insurance claims, thereby supporting better financial risk management and contributing to the stability of the insurance sector.

About the Authors

B. Sagidolla
SDU University
Kazakhstan

master's degree

Kaskelen



S. Ali
SDU University
Kazakhstan

Bachelor

Kaskelen



D. Aibolat
SDU University
Kazakhstan

Bachelor

Kaskelen



N. Shayakhmetov
SDU University
Russian Federation

Bachelor

Kaskelen



References

1. Outreville J. F. Risk Management and Insurance Review, 2013, vol. 16, pp. 71–122.

2. Nair V.G. Packt Publishing Ltd, 2014.

3. Moore A.D. Packt Publishing Ltd, 2018.

4. Hunt J. Springer, 2019. pp. 35–42.

5. Katreddi S. et al. Frontiers in Mechanical Engineering, 2023, vol. 9, p. 1201068.

6. Zhang Q., Chang X., Bian S. B. IEEE Access, 2020, vol. 8, pp. 6997–7004.

7. Dorathi Jayaseeli J.D. et al. Proceedings of ICTIDS 2021, Springer Singapore, 2021, pp. 279–288.

8. Harshani W.A.R., Vidanage K. IEEE 2017, pp. 18–21.

9. Dhieb N. et al. Proceedings of 31st ICM, IEEE, 2019, pp. 158–161.

10. Patil K. et al. Proceedings of 16th ICMLA, IEEE, 2017, pp. 50–54.

11. Dwivedi M. et al. Proceedings of AIDE 2019, Springer Singapore, 2021, pp. 207–221.

12. Elbhrawy A.S., Belal M.A.F., Hassanein M.S. Journal of Computing and Communication, 2024, no. 3, pp. 55–69.

13. Gaukhar K., Zagira I., Aibota R. Vestnik NAN RK, 2020, no. 4, pp. 339–347.

14. Sartova R.B. Izvestiya VUZov Kyrgyzstana, 2018, no. 9, pp. 45–51.

15. Narayana C.V. et al. Proceedings of 2021 ICESC, IEEE, 2021, pp. 1680–1687.

16. Amik F.R. et al. Information, 2021, no. 12, p. 514.

17. Jagannathan P. et al. Wireless Communications and Mobile Computing 2021, p. 5590894.

18. Rani E. et al. Optik, 2021, 225, p. 165818.

19. Mittal U., Chawla P., Multimedia Tools and Applications, 2023, vol. 82, pp. 10397–10419.

20. Singh Saini P., Rani L. Proceedings of International Conference on Data Analytics and Insights, Springer Nature Singapore, 2023, pp. 577–588.

21. Shah S., Gopinath S. Proceedings of International Conference on Civil Engineering Innovative Development in Engineering Advances, Springer Nature Singapore, 2023, pp. 625–633.


Review

For citations:


Sagidolla B., Ali S., Aibolat D., Shayakhmetov N. QUANTATIVE MODEL FOR ESTIMATING VEHICLE REPAIR COSTS IN INSURANCE CLAIMS. Herald of the Kazakh-British technical university. 2024;21(4):58-80. https://doi.org/10.55452/1998-6688-2024-21-4-58-80

Views: 228


Creative Commons License
This work is licensed under a Creative Commons Attribution 4.0 License.


ISSN 1998-6688 (Print)
ISSN 2959-8109 (Online)