Stock Portfolio Optimization with Using a New Hybrid Evolutionary Algorithm Based on ICA and GA: Recursive-ICA-GA (Case Study of Tehran Stock Exchange)

M. Emami, A. Amini, A. Emami
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引用次数: 1

Abstract

How to allocate resources and select the type of investment is very important . The optimal allocation, especially in the financial markets of countries that are paced growth factor, is very significance. In this research toward optimizing resource allocation, an innovative learning algorithm will used to select and optimize portfolio in Tehran Stock Exchange. a new method is proposed based on the combination of ICA (Imperial Competitive Algorithm) and GA (Genetic Algorithm) which improves the convergence speed and accuracy of the optimization results. The new algorithm, which is named R-ICGA (Recursive- ICA-GA), runs ICA and GA consecutively. It is shown that a fast decrease occurs while the proposed algorithm switches from ICA to GA. The main goal of the new proposed algorithm is to achieve a faster optimization technique by applying this fast decrease. Moreover, the simple combination of ICA and GA, which is named ICA-GA, is presented in this study. These two combination schemes of ICA and GA are used for comparing with other conventional algorithms. Finally, three fitness functions are used for comparing the suggested algorithms. The obtained results show that compared with the previous method, the proposed algorithms are at least 32% faster in optimization processes; also the variance convergence speed is smaller than the ICA and GA.
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基于ICA和GA混合进化算法的股票组合优化:递归-ICA-GA(以德黑兰证券交易所为例)
如何配置资源和选择投资类型是非常重要的。优化配置,特别是在经济增长较快的国家的金融市场,具有十分重要的意义。在资源优化配置的研究中,将采用一种创新的学习算法来选择和优化德黑兰证券交易所的投资组合。提出了一种将帝国竞争算法与遗传算法相结合的优化方法,提高了优化结果的收敛速度和精度。新算法被命名为R-ICGA(递归- ICA-GA),它连续运行ICA和GA。结果表明,该算法从ICA切换到GA时,其性能有较快的下降。新提出的算法的主要目标是通过应用这种快速减少来实现更快的优化技术。此外,本研究还提出了ICA和GA的简单组合,即ICA-GA。采用ICA和GA两种组合算法与其他传统算法进行了比较。最后,利用三种适应度函数对建议的算法进行比较。结果表明,与现有算法相比,所提算法的优化速度至少提高32%;方差收敛速度也比ICA和GA小。
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