INTEGRATION OF FINANCIAL RISK ASSESSMENT METHODS USING ARTIFICIAL INTELLIGENCE AND BIG DATA

Authors

  • Rakhimov K. Doctor of Technical Sciences, Professor (PhD). Fergana State University. Author
  • Akhmedova E’zozkhon Ergasheva 1st-year Master’s Student in the Program of Applied Mathematics, Fergana State University, Fergana, Uzbekistan. Author

Keywords:

artificial intelligence; big data; financial risks; machine learning; credit risk; forecastin.

Abstract

It has been established that the integration of artificial intelligence (AI) methods and big data technologies makes it possible to increase the accuracy of financial risk forecasting. The effectiveness of using neural network models for analyzing credit risk and market volatility has been evaluated. It was revealed that the use of hybrid machine learning algorithms reduces the likelihood of errors in the classification of problem assets. The main approaches to building early warning systems based on the analysis of unstructured data are described. The possibilities of adapting the developed methods to the conditions of the financial market of Uzbekistan are considered.

References

Abdullaev A., Tursunov B. Application of Machine Learning in Credit Scoring for Commercial Banks of Uzbekistan // International Journal of Banking and Finance. – 2023. – Vol. 8. – No. 2. – P. 45-58.

Karimov Sh.Kh. Digital Transformation of the Banking System of Uzbekistan: Risks and Prospects // Economics and Innovative Technologies. – Tashkent, 2024. – No. 1. – P. 112-120.

Niyazmetov D.A. Big Data in the Financial Sector: Methodology of Analysis and Processing // Bulletin of Tashkent State University of Economics. – 2023. – No. 4. – P. 78-85.

Goodfellow I., Bengio Y., Courville A. Deep Learning. – Cambridge: MIT Press, 2023. – 800 p.

Rakhmatov A.A., Yusupov B.M. Use of Neural Networks for Forecasting Financial Stability // Abstracts of the Republican Scientific and Practical Conference "Digital Economy: Challenges and Solutions". – Tashkent: NUz, 2024. – P. 210-212.

Mirzaev D.I. Credit Risk Assessment Using Machine Learning Methods: Master's Thesis in Economics. – Tashkent: TSUE, 2024. – 120 p.

Chen T., Guestrin C. XGBoost: A Scalable Tree Boosting System // Proceedings of the 22nd ACM SIGKDD International Conference on Knowledge Discovery and Data Mining. – San Francisco, 2016. – P. 785-794.

Hochreiter S., Schmidhuber J. Long Short-Term Memory // Neural Computation. – 1997. – Vol. 9, No. 8. – P. 1735-1780.

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Published

2026-05-14

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Section

Articles

How to Cite

Rakhimov , K., & Akhmedova, E. (2026). INTEGRATION OF FINANCIAL RISK ASSESSMENT METHODS USING ARTIFICIAL INTELLIGENCE AND BIG DATA. Central Asian Journal of Education and Innovation, 5(5), 143-147. https://www.in-academy.uz/index.php/CAJEI/article/view/41307
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