A neural network bionic algorithm-based approach to modeling cost and efficiency management behaviors of financial BPOs from a biomechanical perspective

  • Juncong Jiang School of Accounting, Guangzhou College of Commerce, Guangzhou 511363, China
  • Weifeng Xie School of Accounting, Guangzhou College of Commerce, Guangzhou 511363, China
  • Yiru Yang School of Accounting, Guangzhou College of Commerce, Guangzhou 511363, China
Keywords: biomechanical modeling; neural networks; financial BPO; cost control; decision-support architecture
Article ID: 861

Abstract

This study integrates principles of biomechanics to develop a neural network-based behavior modeling approach for enhancing cost and efficiency management in financial business process outsourcing (BPO). Drawing inspiration from the adaptive and efficient characteristics of biological systems, we model the financial BPO landscape using neural networks on cloud computing platforms. This approach mirrors the interconnected and dynamic nature of biomechanical networks, enabling proactive adaptation and optimization in financial environments. By utilizing financial SMOTE algorithms and integrating network storage infrastructure, data resources, management platforms, and financial service applications, we construct a comprehensive decision-support architecture. This model achieves a significant reduction in financial costs by 60% and enhances the adaptability and operational efficiency of financial management systems. By conceptualizing financial systems as dynamic, interactive networks, our method provides innovative solutions for mitigating operational risks and enhancing enterprise resilience in competitive markets. The incorporation of biomechanical concepts into financial modeling offers novel insights into optimizing resource allocation and improving system adaptability within complex financial ecosystems.

References

1. News I, News A, News F, et al. Genpact Designated a “Leader” and “Star Performer” in 2013 Everest Group Global Banking Business Process Outsourcing (BPO) Market Report. Genpact Newsroom. 2013; 6(1): 30-36.

2. Eagle T. A Feature-rich Cloud Computing Platform. Inside R & D. 2009; 38(9): 2.

3. Goel N, Aggarwal A. Cloud Computing Platform: A Perspective Overview. International Journal of Scientific and Research Publications. 2014; 8(10): 63-70.

4. Jin S. Cloud computing era network security status and defense measures. Wireless Internet Technology. 2017; 6(8): 52-64.

5. Song YB, Jiang ZY. Enterprise Asset Management Platform under Cloud Computing Mode. Advanced Materials Research. 2012; 542-543: 1271-1274.

6. Fei AQ, Zheng X. Research on Cost Control of the Whole Process of EPC General Contract Model. Value Engineering. 2015; 2(6): 96–100.

7. Seung-Ho B, Kyung-Rai K, Yu-Seb L, et al. An Integrated Cost and Schedule Control Process Model Using Earned Value Management System. X-ray Structure Analysis Online. 2000; 1(2): 59-60.

8. Bu N. Analysing the Key Points for Cost Control of EPC Model Hospital Construction Project. World Construction. 2016; 5(6): 15-16.

9. Divya S, Panda S, Hajra S, et al. Smart data processing for energy harvesting systems using artificial intelligence. Nano Energy. 2023; 106: 108084.

10. Jiang L, Li D X, Cai H, et al. An IoT-Oriented Data Storage Framework in Cloud Computing Platform. IEEE Transactions on Industrial Informatics. 2014; 10(2): 1443-1451.

11. Li Z. Design and implementation of enterprise ERP system based on cloud computing platform. Electronic Design Engineering. 2016;11(24): 63-68.

12. Dai L, Yang H, Xing G. Cloud Computing-Platform as Service. Intelligent Information Management. 2015; 07(1): 1-6.

13. Ren YF, Ji DL, Wu Y, et al. Clinical Effect Observation of Constructing PERMA Model in Psychological Intervention for Patients with Chronic Cancer Pain. Psycho-Oncologie. 2024; 18(4): 329-336.

14. Ye J. Modeling decision-making dynamics in financial management through biomechanical principles and bio-inspired analytical frameworks. Molecular & Cellular Biomechanics. 2024; 21(4): 703-703.

15. Ji H. Algorithm for predicting financial investor behavior based on biomechanical data and planning recognition. Molecular & Cellular Biomechanics. 2025; 22(2): 780-780.

16. Wang Z, Deng Y. Optimizing financial engineering time indicator using bionics computation algorithm and neural network deep learning. Computational Economics. 2022; 59(4): 1755-1772.

17. Du P, Shu H. Exploration of financial market credit scoring and risk management and prediction using deep learning and bionic algorithm. Journal of Global Information Management (JGIM). 2022; 30(9): 1-29.

18. Lu J, Ding Y, Li Z. Optimizing financial engineering time indicator using bionics computation algorithm and neural network. In: Proceedings of the 5th International Conference on Artificial Intelligence and Computer Science (AICS 2023); 2023.

19. Soni M. Cloud computing basics—platform as a service (PaaS). Linux Journal. 2014; 9(10): 6-8.

20. Agopyan A, Sener E, Beklen A. Financial business cloud for high-frequency trading. The First International Conference on Cloud Computing, GRIDs, and Virtualization. 2010; 164-169.

21. Altowaijri S M, El Touati Y. Securing cloud computing services with an intelligent preventive approach[J]. Engineering, Technology & Applied Science Research. 2024; 14(3): 13998-14005.

22. Mert I. The Effects of Collaboration between Internal Auditing and Financial Affairs Departments: A Survey Conducted through the Internal Auditing and Financial Affairs Departments. Economic Studies journal. 2021; 9(6): 20-26.

23. Chen DL, Hong WU. Cloud Computing Platform in the Tax Service’s Applied Research. Computer Knowledge and Technology. 2010; 8(5): 23-26.

24. Wang SH, Zhang YD, Gen-Lin JI. Researches on Cloud Computing based PACS Platform. Chinese Journal of Medical Physics. 2014; 9(6): 20-21.

25. Chawla NV, Bowyer KW, Hall LO, et al. SMOTE: synthetic minority over-sampling technique. Journal of artificial intelligence research. 2002; 16: 321-357.

26. Xue LU. The Application of the Cloud Computing in the College Finance Informationization Construction. Value Engineering. 2015; 10(5): 5-8.

27. Mert I. The effect of collaboration between internal audit and financial department: a survey conducted by internal audit and financial department. Ikonomieski Izsledvania. 2021; 30(3): 96-114.

Published
2025-03-10
How to Cite
Jiang, J., Xie, W., & Yang, Y. (2025). A neural network bionic algorithm-based approach to modeling cost and efficiency management behaviors of financial BPOs from a biomechanical perspective. Molecular & Cellular Biomechanics, 22(4), 861. https://doi.org/10.62617/mcb861
Section
Article