Integrating Machine Learning and Traditional Models for Financial Risk Quantification
DOI:
https://doi.org/10.70088/6bb8rk74Keywords:
financial risk, machine learning, model integration, Value at Risk (VaR), GARCHAbstract
This study explores the integration of machine learning techniques with traditional financial risk measurement models to enhance the accuracy and robustness of risk quantification. By employing models such as Value at Risk (VaR) and GARCH alongside machine learning algorithms like Random Forest and Neural Networks, the research demonstrates improved prediction accuracy across various market conditions. The findings highlight the advantages of an integrated approach, which not only provides a comprehensive framework for financial risk assessment but also bridges the gap between theoretical models and practical applications. This work contributes to the evolving landscape of financial risk management by offering insights into effective model integration, thereby paving the way for future research in advanced risk quantification strategies.