Computational Intelligence for Financial Market Prediction and Portfolio Optimization

Main Article Content

Anasica
Dipannita Mondal

Abstract

The dynamic and complex nature of financial markets poses significant challenges for accurate prediction and optimal portfolio management. Traditional financial models often struggle to capture the non-linear relationships and volatile behavior of financial data. In recent years, computational intelligence (CI) techniques, including machine learning, deep learning, evolutionary algorithms, and swarm intelligence, have emerged as powerful tools to address these challenges. This paper explores the state-of-the-art advancements in the application of computational intelligence for financial market prediction and portfolio optimization. It highlights how predictive models powered by neural networks, reinforcement learning, and hybrid algorithms are transforming investment decision-making. Additionally, the integration of heuristic optimization techniques, such as genetic algorithms and particle swarm optimization, is examined for efficient portfolio construction and risk management. By leveraging these intelligent systems, investors can achieve enhanced market forecasts, improved asset allocation strategies, and greater robustness against market uncertainties. The study concludes by discussing key challenges, future trends, and the potential for further innovation in computational intelligence for financial applications.

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How to Cite
Anasica, & Mondal, D. (2025). Computational Intelligence for Financial Market Prediction and Portfolio Optimization. International Journal on Advanced Computer Engineering and Communication Technology, 13(1), 14–19. Retrieved from https://journals.mriindia.com/index.php/ijacect/article/view/60
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