Portfolio Optimization Strategies: New Approaches Based on Machine Learning Forecasting

Authors

  • Xuanlin Lyu

DOI:

https://doi.org/10.54097/cpgtg807

Keywords:

Portfolio Optimization; Machine Learning; Investment Forecasting; Deep Learning.

Abstract

This study provides an in-depth discussion and comprehensive review of the latest applications of machine learning techniques in the field of portfolio optimization. The article begins with an overview of traditional portfolio optimization theory and its limitations, and then focuses on how machine learning predictive models, which have flourished in recent years, can provide new perspectives and tools for solving the problems of non-linearity, dynamics and uncertainty in investment decision-making. This paper provides a detailed overview of the application practices of various machine learning algorithms (e.g., deep learning, reinforcement learning, integrated learning, etc.) in the areas of asset return prediction, risk assessment, and optimal weight allocation, and analyses their advantages and challenges compared to traditional methods. The analysis of relevant research cases reveals the significant effect of machine learning predictions in increasing expected portfolio returns, reducing risk exposure, and achieving effective diversification. The study also explores possible future trends and potential research directions for machine learning in portfolio optimization, highlighting the importance of combining domain knowledge with big data-driven intelligent investment decisions. This review aims to provide financial scholars and practitioners with a new way of thinking about portfolio optimization, and to promote the combination of theoretical research and practical operation in the fields of financial engineering and investment management, so as to achieve more accurate and efficient investment decisions.

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References

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Published

01-09-2024

How to Cite

Lyu, X. (2024). Portfolio Optimization Strategies: New Approaches Based on Machine Learning Forecasting. Highlights in Business, Economics and Management, 40, 1077-1082. https://doi.org/10.54097/cpgtg807