Evaluating Modern Quantitative Methods for Investment Portfolio Management under Market Uncertainty
Loading...
Date
Journal Title
Journal ISSN
Volume Title
Publisher
RITHA PUBLISHING HOUSE
Abstract
This study evaluates the effectiveness of advanced quantitative techniques, Monte Carlo simulations, AI-driven
models, and Genetic Algorithms in enhancing investment portfolio management beyond Traditional Modern Portfolio Theory
limitations. Analysing financial data from 2014-2024, this study assessed performance using Sharpe Ratio, Value-at-Risk, and
Conditional Value-at-Risk across various market scenarios including black swan events. Findings demonstrate that Genetic
Algorithms achieved the highest risk-adjusted returns while minimizing volatility, AI-driven models provided superior
adaptability to market fluctuations, and Monte Carlo simulations significantly improved risk assessment compared to traditional
approaches. The integration of green bonds into AI-optimised portfolios successfully balanced financial performance with
sustainability objectives, appealing to environmentally conscious investors. This research confirms that AI and Genetic
Algorithm approaches consistently outperform traditional models in optimising risk-adjusted returns under volatile conditions.
Portfolio managers should consider implementing hybrid quantitative approaches that combine AI-based decision-making with
Monte Carlo stress testing to enhance investment resilience and strategic planning in dynamic financial environments.
Description
Journal of Applied Economic Sciences, Volume XX, Fall, 3(89), 427 – 448.
Citation
Frolov, A., Boiko, R., Rudevska, V., Butenko, D., & Moisiiakha, A. (2025). Evaluating Modern Quantitative Methods for Investment Portfolio Management under Market Uncertainty. Journal of Applied Economic Sciences, Volume XX, Fall, 3(89), 427 – 448. https://doi.org/10.57017/jaes.v20.3(89).05