约束多目标投资组合优化问题的启发式学习方法

Sonia Bullah, Terence L van Zyl
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引用次数: 0

摘要

多目标投资组合优化是各个研究领域研究的一个关键问题,因为它实现了预期收益最大化的目标,同时使给定投资组合的风险最小化。然而,许多研究没有在模型中纳入现实约束,这限制了实际的交易策略。本研究引入现实约束,如交易和持有成本,到一个优化模型。由于该问题的非凸性,NSGA-II、R-NSGA-II、NSGA-III和U-NSGA-III等元启发式算法将在解决该问题中发挥重要作用。此外,采用学习启发式方法作为代理模型,增强了所采用的元启发式。然后将这些算法与基线元启发式算法进行比较,后者在不使用学习启发式的情况下解决受限的多目标优化问题。本研究的结果表明,尽管需要更长的时间来完成,但学习启发式算法在超容量和收敛速度方面优于基线算法。此外,回溯测试结果表明,与不使用学习启发法的回溯测试相比,使用学习启发法生成资产配置权重的风险百分比更低,预期回报更高,夏普比率更高。这使我们得出结论,使用学习启发式来解决约束的多目标投资组合优化问题比不使用学习启发式来解决问题产生更好的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Learnheuristic Approach to A Constrained Multi-Objective Portfolio Optimisation Problem
Multi-objective portfolio optimisation is a critical problem researched across various fields of study as it achieves the objective of maximising the expected return while minimising the risk of a given portfolio at the same time. However, many studies fail to include realistic constraints in the model, which limits practical trading strategies. This study introduces realistic constraints, such as transaction and holding costs, into an optimisation model. Due to the non-convex nature of this problem, metaheuristic algorithms, such as NSGA-II, R-NSGA-II, NSGA-III and U-NSGA-III, will play a vital role in solving the problem. Furthermore, a learnheuristic approach is taken as surrogate models enhance the metaheuristics employed. These algorithms are then compared to the baseline metaheuristic algorithms, which solve a constrained, multi-objective optimisation problem without using learnheuristics. The results of this study show that, despite taking significantly longer to run to completion, the learnheuristic algorithms outperform the baseline algorithms in terms of hypervolume and rate of convergence. Furthermore, the backtesting results indicate that utilising learnheuristics to generate weights for asset allocation leads to a lower risk percentage, higher expected return and higher Sharpe ratio than backtesting without using learnheuristics. This leads us to conclude that using learnheuristics to solve a constrained, multi-objective portfolio optimisation problem produces superior and preferable results than solving the problem without using learnheuristics.
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