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Symbiotic Multi-swarm PSO for Portfolio Optimization

机译:共生多群PSO进行投资组合优化

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This paper presents a novel symbiotic multi-swarm particle swarm optimization (SMPSO) based on our previous proposed multi-swarm cooperative particle swarm optimization. In SMPSO, the population is divided into several identical sub-swarms and a center communication strategy is used to transfer the information among all the sub-swarms. The information sharing among all the sub-swarms can help the proposed algorithm avoid be trapped into local minima as well as improve its convergence rate. SMPSO is then applied to portfolio optimization problem. To demonstrate the efficiency of the proposed SMPSO algorithm, an improved Markowitz portfolio optimization model including two of the most important limitations are adopted. Experimental results show that SMPSO is promising for this class of problems.
机译:本文基于我们先前提出的多群合作粒子群优化算法,提出了一种新颖的共生多群粒子群优化算法(SMPSO)。在SMPSO中,将种群分为几个相同的子群,并使用中心通信策略在所有子群之间传递信息。所有子群之间的信息共享可以帮助所提出的算法避免陷入局部最小值,并提高其收敛速度。然后将SMPSO应用于投资组合优化问题。为了证明所提出的SMPSO算法的效率,采用了改进的Markowitz投资组合优化模型,该模型包括两个最重要的局限性。实验结果表明,SMPSO有望解决此类问题。

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