基于ε+指标的投资组合优化学习引导进化算法

Feng Wang;Zilu Huang;Shuwen Wang
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引用次数: 0

摘要

投资组合优化是资产管理领域的一个经典而重要的问题,其目标是实现收益与风险的平衡。以前的投资组合优化模型使用传统的风险度量,如方差,对称地描述正负两面,不实用和不稳定。本文首先提出了一种新的具有基数约束的模型,该模型使用特质波动因子代替传统的风险度量,可以更准确地捕捉投资组合的风险。该模型具有变量的稀疏性和不规则性等实际约束,使得传统的多目标进化算法难以求解。为了求解该模型,提出了一种基于ε+指标的学习引导进化算法(ε+LGEA)。在ε+LGEA中,在初始化算子和遗传算子中加入了ε+指标,保证了解的稀疏性,提高了算法的收敛性。为了保证解的可行性,采用了一种新的基于ε+指标的约束处理方法。在包括多达1226种资产的5个投资组合交易数据集上的实验结果表明,在大多数情况下,ε+LGEA优于一些最先进的moea。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Iε+LGEA A Learning-Guided Evolutionary Algorithm Based on Iε+ Indicator for Portfolio Optimization
Portfolio optimization is a classical and important problem in the field of asset management, which aims to achieve a trade-off between profit and risk. Previous portfolio optimization models use traditional risk measurements such as variance, which symmetrically delineate both positive and negative sides and are not practical and stable. In this paper, a new model with cardinality constraints is first proposed, in which the idiosyncratic volatility factor is used to replace traditional risk measurements and can capture the risks of the portfolio in a more accurate way. The new model has practical constraints which involve the sparsity and irregularity of variables and make it challenging to be solved by traditional Multi-Objective Evolutionary Algorithms (MOEAs). To solve the model, a Learning-Guided Evolutionary Algorithm based on I ε+ indicator (I ε+ LGEA) is developed. In I ε+ LGEA the I ε+ indicator is incorporated into the initialization and genetic operators to guarantee the sparsity of solutions and can help improve the convergence of the algorithm. And a new constraint-handling method based on I ε+ indicator is also adopted to ensure the feasibility of solutions. The experimental results on five portfolio trading datasets including up to 1226 assets show that I ε+ LGEA outperforms some state-of-the-art MOEAs in most cases.
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