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A Novel PSO for Multi-stage Portfolio Planning

机译:一种用于多阶段投资组合计划的新型PSO

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摘要

In this paper, we present a decision-making process that uses our proposed Quasi-oppositional Comprehensive Learning Particle Swarm Optimizers (QCLPSO) to solve multi-period portfolio problem. Multi-stage stochastic financial optimization takes order with portfolio in ever-changing financial markets by periodically rebalancing the asset portfolio to achieve return maximization and/or risk minimization. It brings together all major financial-related decision in a single consistent structure and integrates investment strategies, liability decisions and savings strategies in an all-around fashion. The objective function is classical return-variance function. The performance of our algorithm is demonstrated by optimizing the allocation of cash and various stocks in SSE 180 Index. Experiments are conducted to compare performance of the portfolio optimized by different objective functions with PSO and Genetic Algorithm (GA) in the terms of efficient frontiers.
机译:在本文中,我们提出了一种决策过程,该决策过程使用我们提出的拟对立综合学习粒子群优化器(QCLPSO)解决多周期投资组合问题。多阶段随机金融优化通过不断调整资产组合的平衡来实现收益最大化和/或风险最小化,从而在不断变化的金融市场中对资产组合进行排序。它将所有与财务相关的主要决策整合为一个统一的结构,并以全方位的方式整合了投资策略,负债决策和储蓄策略。目标函数是经典的返回方差函数。通过优化上证180指数中的现金和各种股票的分配,证明了我们算法的性能。进行实验以比较在有效边界方面通过PSO和遗传算法(GA)通过不同目标函数优化的投资组合的绩效。

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