动态搜索空间粒子群组合优化方法

C. Feng, Yijiang Dong, Yuehan Jiang, Maopeng Ran
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引用次数: 3

摘要

组合投资的多目标规划模型基于马科维茨投资组合理论,同时考虑了风险和收益。近年来,人们对投资组合优化问题进行了大量的研究,启发式方法得到了广泛的应用,并被证明具有良好的性能。本研究的主要目的是利用粒子群算法求解投资组合优化问题。因此,本文提出了一种基于动态搜索空间粒子群优化算法(DSSPSO)的投资组合选择方法。为了提高粒子群算法的性能,将经典粒子群优化算法的思想与种群熵相结合,提出了DSSPSO算法。为了验证算法的有效性,我们使用中国股票市场30只样本股票的收盘价进行了几组实验。结果表明,DSSPSO方法适用于投资组合优化,能够以较低的风险找到具有一定利益的证券投资组合。评估了风险规避参数的取值对结果的影响,发现该算法可以有效地控制风险。此外,还进行了两组对比实验来验证结论,并提出了未来预测的应用建议。
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Dynamic Search Space Particle Swarm Optimization Approach for Portfolio Optimization
The multi-objective programming model of portfolio investment is based on the Markowitz portfolio theory with risk and return considered in the meantime. There have been many studies for portfolio optimization problem and over recent years heuristic techniques are widely used and proved to have good performance. The main purpose of the present study is the solving of portfolio optimization problem by using Particle Swarm Optimization (PSO). Thus in this paper, we propose an approach based on a dynamic search space particle swarm optimization algorithm (DSSPSO) for the portfolio selection problem. DSSPSO is proposed to improve the performance of PSO combining the classical particle swarm optimization algorithm philosophy and population entropy. To verify the effectiveness of the algorithm, we used the closing prices of thirty sample stocks in Chinese stock market and carried out several sets of experiments. The results show that DSSPSO approach is suitable in portfolio optimization and is able to find securities portfolio with certain interests at low risk. Also we evaluate the effect of the value of risk aversion parameter on the results and found that the algorithm can effectively control risk. Furthermore, two groups of contrast experiments are carried out to substantiate the conclusion and suggest the application for future predictions.
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