首页> 外文期刊>Neurocomputing >Multiple populations co-evolutionary particle swarm optimization for multi-objective cardinality constrained portfolio optimization problem
【24h】

Multiple populations co-evolutionary particle swarm optimization for multi-objective cardinality constrained portfolio optimization problem

机译:多目标基数的多目标基数约束组合优化问题的多个群体共同进化粒子群优化

获取原文
获取原文并翻译 | 示例

摘要

With the rapid development of financial market, a growing number of stocks become available on the financial market. How to efficiently select these stocks to achieve higher return and lower risk has become a hot research topic in financial management. This is usually called the portfolio optimization problem (POP). When the cardinality constrained (CC) is added to limit the number of selected stocks to a certain value, the resulting CCPOP is more challenging with the following two difficulties: i) Due to the complexity of CC in finical market, how to efficiently deal with CC in POP to obtain feasible solution is difficult and time-consuming. ii) The objectives of portfolio return and risk always conflict with each other and their relation is difficult to balance. To better deal with above difficulties, this paper focuses on the multi-objective CCPOP (MoCCPOP) and proposes a multiple populations co-evolutionary particle swarm optimization (MPCoPSO) algorithm, which is based on multiple populations for multiple objectives (MPMO) framework and has the following four advantages. Firstly, a hybrid binary and real (HBR) encoding strategy is introduced to better represent the stock selection and the asset weight of the solutions in MoCCPOP. Secondly, a return risk ratio heuristic (R3H) strategy based on the historical return and risk of each stock is proposed as a fast CC handling method to obtain feasible solutions. Thirdly, a new particle update method based on bi-directional local search (BLS) strategy is designed to increase the chance to improve the solution accuracy and to approach the global Pareto front (PF). Last but not least, a hybrid elite competition (HEC) strategy is proposed to assist the archive update, which provides more promising solutions and brings diversity to avoid local PF. The first two strategies help to efficiently deal with the CC challenge, while the last two strategies are efficient in solving the multi-objective challenge. By comparing with some recent well-performing and state-of-the-art multi objective optimization algorithms, MPCoPSO shows the superior performance in solving the MoCCPOP. (c) 2020 Elsevier B.V. All rights reserved.
机译:随着金融市场的快速发展,金融市场越来越多的股票。如何有效地选择这些股票以实现更高的回报,较低的风险已成为财务管理中的热门研究课题。这通常称为投资组合优化问题(POP)。当添加基数受约束(CC)以限制所选股票的数量以限制一定的值时,由于CC在统治市场中的复杂性,所得到的CCPOP与以下两个困难更具挑战性,如何有效地处理CC在流行中获得可行的解决方案是困难且耗时的。 ii)投资组合回报和风险的目标总是彼此冲突,并且他们的关系难以平衡。为了更好地应对上述困难,本文重点介绍了多目标CCPOP(Moccpop),并提出了多种群体共同进化粒子群优化(MPCOPSO)算法,该算法基于多个目标(MPMO)框架的多个群体以下四个优点。首先,引入了混合二进制和真实(HBR)编码策略以更好地代表Moccpop中溶液的股票选择和资产权重。其次,提出了一种基于历史回报和每股股票风险的返回风险比启发式(R3H)战略作为一种快速的CC处理方法,以获得可行的解决方案。第三,基于双向本地搜索(BLS)策略的新粒子更新方法旨在增加提高解决方案准确性的机会,并接近全球帕累托前部(PF)。最后但并非最不重要的是,提出了一个混合精英竞赛(HEC)战略来协助档案更新,这提供了更有前途的解决方案并带来多样性以避免本地PF。前两项策略有助于有效地处理CC挑战,而最后两种策略在解决多目标挑战方面是有效的。通过与近期执行良好的良好和最先进的多目标优化算法进行比较,MPCOPSO显示了求解MOCCPOP的卓越性能。 (c)2020 Elsevier B.v.保留所有权利。

著录项

获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号