股票数据分析中的模糊指数跟踪多目标方法

Huiming Zhang, J. Watada
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引用次数: 1

摘要

指数跟踪是投资组合管理中的一种被动策略,它模仿基准指数的表现来构建投资组合,以获得目标市场的平均收益。指数跟踪由于具有低成本、高流动性、低风险等优点而受到投资者的青睐。本文引入敏感性分析,在收益率为抛物型模糊变量的情况下,同时考虑敏感性和VaR因素,构建了具有风险价值的模糊多目标指数跟踪投资组合模型。采用改进的粒子群优化算法(IPSO)搜索多目标问题的最优解。为验证所提模型的有效性,选取道琼斯30指数数据进行实证实验,结果表明,考虑敏感性和VaR因素的模糊多目标指数跟踪投资组合模型可以获得更稳定的投资组合,实现目标市场的平均收益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Fuzzy Index Tracking Multi-Objective Approach to Stock Data Analytics
Index tracking is an passive strategy in portfolio management, it mimics the performance of a benchmark index to construct portfolios for obtaining the average return of the target market. Index tracking has become popular in investors because it possesses the advantages of low cost, high liquidity and lower risk. This paper introduced sensitivity analysis to construct a fuzzy multi-objective index tracking portfolio model with value at risk (SA-IT-VAR-FMOPM) when return rate was set as parabolic fuzzy variable, the sensitivity and VaR factors were considered in the model. An improved particle swarm optimization (IPSO) algorithm was used to search optimal solution for multi-objective problem. To verify the effective of the proposed model, Dow 30 index data were selected to the empirical experiment, the results show the fuzzy multi-objective index tracking portfolio model which considered the sensitivity and VaR factors can obtain more stable portfolio and achieve the average return of target market.
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