Please use this identifier to cite or link to this item: https://repository.hneu.edu.ua/handle/123456789/39976
Title: Artificial intelligence in automated financial risk management systems
Authors: Skorin Yu.
Lukyanchuk S.
Keywords: artificial intelligence
financial risks
machine learning
credit risk
neural networks
automated control system
forecasting
classification
Issue Date: 2026
Citation: Skorin Yu. Artificial intelligence in automated financial risk management systems / Yu. Skorin, S. Lukyanchuk // Smart Economy, Entrepreneurship and Security. - 2026. - Vol. 4. - №1. – Рр. 27–37.
Abstract: The article is aimed at studying the use of artificial in-telligence in automated financial risk management systems to improve the accuracy, efficiency and efficiency of managerial decision-making in the financial sector. The study consists in a comprehensive study of the theoretical and methodological foundations of the use of artificial intelligence in management systems, analysis of modern approaches to the classification and assessment of financial risks using machine learning algorithms, formation of the architecture of the decision support system based on forecasting models, as well as assessment of the effectiveness of the built models based on the results of simulation modeling. Within the framework of the study, a model for forecasting the credit risk of bank customers has been developed, which allows assessing solvency based on historical data and modern machine learning methods. The research method is modeling using machine learning tools, including neural networks and ensemble learning methods (Random Forest), as well as data analysis using platforms to visualize results and evaluate the effectiveness of models. Particular attention is paid to data preparation, selection of relevant features, evaluation of model accuracy, and construction of interpreted visualizations such as SHAP graphs, ROC curves, etc. The result of the study was the creation of an effective model for predicting credit risk, which demonstrates a sufficiently high level of classification accuracy and the ability to adapt to changes in incoming conditions. The practical significance of the study lies in the possibility of implementing the developed model into the existing automated financial risk management systems of banking institutions, which will reduce the level of credit losses, increase financial stability and provide more accurate risk management. This approach contributes to the de-velopment of intelligent financial systems, increasing the level of automation of managerial decisions and strengthening the competitiveness of financial institutions in modern market conditions.
URI: https://repository.hneu.edu.ua/handle/123456789/39976
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