Genetic Algorithm Approach in Forming the Optimal Portfolio of Issuer Companies with Dividend Distribution Criteria

I. Fahria, E. Kustiawan
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引用次数: 1

Abstract

Investing in the capital market for some investors is a challenge in itself. Investors are required to be able to determine the right combination and proportion of shares when they want to place a number of funds in each share that make up the optimal portfolio. The solution to the optimal portfolio formation problem can be done (Place holder) by using a genetic algorithm method approach. The purpose of applying genetic algorithms is to form an optimal portfolio with a proportion of stocks that can generate optimal profits with a justifiable loss rate. A case study was conducted on the companies compiling the LQ-45 index with dividend distribution criteria as many as 35 shares traded on the Indonesia Stock Exchange. The results showed that by using the genetic algorithm method, an effective problem solving was obtained in the formation of an optimal portfolio in issuers with dividend distribution.
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基于股利分配准则的发行公司最优投资组合的遗传算法研究
对一些投资者来说,投资资本市场本身就是一个挑战。当投资者想要在每只股票中投入一定数量的资金以构成最佳投资组合时,他们必须能够确定正确的股票组合和比例。利用遗传算法方法求解最优投资组合问题(占位问题)。应用遗传算法的目的是形成一个最优投资组合,其中股票的比例可以在合理的损失率下产生最优利润。对编制LQ-45指数的公司进行了案例研究,该指数具有股息分配标准,在印度尼西亚证券交易所交易的股票多达35只。结果表明,利用遗传算法方法,可以有效地求解具有股利分配的发行人最优投资组合的形成问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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