
Research Article
AI-Powered Predictive Analytics for Financial Risk Management in U.S. Markets
@ARTICLE{10.4108/airo.9532, author={Md Zikar Hossan and Muslima Begom Riipa and Md Azhad Hossain and Sweety Rani Dhar and Al Modabbir Zaman and Mohammad Hossain and Arif Hossen and Hasan Mahmud Sozib}, title={AI-Powered Predictive Analytics for Financial Risk Management in U.S. Markets}, journal={EAI Endorsed Transactions on AI and Robotics}, volume={4}, number={1}, publisher={EAI}, journal_a={AIRO}, year={2025}, month={8}, keywords={Financial risk management, AI-powered, predictive analytics, CatBoost, SVM, decision-making, U.S. markets}, doi={10.4108/airo.9532} }
- Md Zikar Hossan
Muslima Begom Riipa
Md Azhad Hossain
Sweety Rani Dhar
Al Modabbir Zaman
Mohammad Hossain
Arif Hossen
Hasan Mahmud Sozib
Year: 2025
AI-Powered Predictive Analytics for Financial Risk Management in U.S. Markets
AIRO
EAI
DOI: 10.4108/airo.9532
Abstract
In the fast-changing environment of financial complexity, efficient risk management is vital for economic stability as well as for growth. In this study, we present a robust AI-powered predictive analytics framework to improve financial risk classification in U.S. markets. The framework utilizes advanced machine learning techniques, a hybrid CatBoost and SVM model that allows it to solve challenges like class imbalance in a high-dimensional dataset while maintaining interpretable models. To probe errors, we use techniques such as Principal Component Analysis (PCA) and Synthetic Minority Oversampling Technique (SMOTE) for data quality and fairness in classification. Comprehensive experiments on a financial risk dataset are conducted to evaluate the framework at which it achieves high accuracy (95.93%) and F1-score (0.95) when compared to traditional machine learning models such as Logistic Regression and Random Forest. Furthermore, a feature importance analysis identifies important predictors of financial risk such as Total Debt-to-Income Ratio, Loan Duration, and Interest Rate, providing actionable on decision-making. Additionally, the proposed approach is not only highly scalable but it is also interpretable and adaptable to the dynamic demands of financial institutions. This study serves as a benchmark for predicting analytics for dealing with risk-associated challenges, leading to informed decision-making to ensure economic stability by integrating AI and machine learning in financial systems.
Copyright © 2025 Md Zikar Hossan et al., licensed to EAI. This is an open access article distributed under the terms of the CC BYNC-SA 4.0, which permits copying, redistributing, remixing, transformation, and building upon the material in any medium so long as the original work is properly cited.