Large-scale portfolio optimization using multiobjective dynamic mutli-swarm particle swarm optimizer

Jing J. Liang, B. Qu
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引用次数: 23

Abstract

Portfolio optimization problems involve selection of different assets to invest so that the investor is able to maximize the overall return and minimize the overall risk. The complexity of an asset allocation problem increases with the increasing number of assets available for investing. When the number of assets/stocks increase to several hundred, it is difficult for classical method to optimize (construct a good portfolio). In this paper, the Multi-objective Dynamic Multi-Swarm Particle Swarm Optimizer is employed to solve a portfolio optimization problem with 500 assets (stocks). The results obtained by the proposed method are compared several other optimization methods. The experimental results show that this approach is efficient and confirms its potential to solve the large scale portfolio optimization problem.
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基于多目标动态多群粒子群优化器的大规模投资组合优化
投资组合优化问题涉及选择不同的资产进行投资,使投资者能够最大化整体回报和最小化整体风险。资产配置问题的复杂性随着可供投资的资产数量的增加而增加。当资产/股票数量增加到几百只时,经典方法很难优化(构建一个好的投资组合)。本文采用多目标动态多群粒子群优化算法求解500种资产(股票)组合优化问题。并对几种优化方法的结果进行了比较。实验结果表明,该方法是有效的,并证实了其解决大规模投资组合优化问题的潜力。
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