Evaluating Modern Quantitative Methods for Investment Portfolio Management under Market Uncertainty

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

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