聚类和遗传算法在可能性约束下股票组合优化中的实现

R. Yusuf, B. Handari, G. Hertono
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引用次数: 4

摘要

投资组合优化的目的是保护投资者免受他们可能遇到的任何风险。股票分散投资是优化股票投资组合的一种解决方案,多样化的投资组合往往比单一的投资组合风险更小。聚类是一种层次聚类方法。运用多元化的概念,采用聚集聚类方法,根据40种不同的资产的财务比率得分(流动比率、债务-权益比率、利润率、净资产收益率、每股增长市盈率、摊薄每股收益和市盈率)对其进行聚类。遗传算法是一种基于自然选择和遗传学原理的搜索方法。在对股票进行聚类后,采用启发式交叉的遗传算法对相邻的每个聚类进行聚类,确定每个股票的比例。本文以基数、数量和交易成本为约束条件,建立了一种可能性均值-半绝对偏差优化模型。我们还假设风险资产的收益是模糊数。实施结果表明,与同期标准普尔500指数(分别为12.34%和2.7)相比,该方法的回报率(29.77%)和夏普比率(18.71)更高。投资组合优化的目的是保护投资者免受他们可能遇到的任何风险。股票分散投资是优化股票投资组合的一种解决方案,多样化的投资组合往往比单一的投资组合风险更小。聚类是一种层次聚类方法。运用多元化的概念,采用聚集聚类方法,根据40种不同的资产的财务比率得分(流动比率、债务-权益比率、利润率、净资产收益率、每股增长市盈率、摊薄每股收益和市盈率)对其进行聚类。遗传算法是一种基于自然选择和遗传学原理的搜索方法。在对股票进行聚类后,采用启发式交叉的遗传算法对相邻的每个聚类进行聚类,确定每个股票的比例。本文以基数、数量和交易成本为约束条件,建立了一种可能性均值-半绝对偏差优化模型。我们也使用假设…
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Implementation of agglomerative clustering and genetic algorithm on stock portfolio optimization with possibilistic constraints
Portfolio optimization aims to protect investors against any risks which they may experience. Stock diversification is one of the solutions to optimize stock portfolio, where a diverse portfolio tends to have less risk than the undiversified one. Agglomerative clustering is a hierarchical clustering method. Applying diversification concept, agglomerative clustering is used to cluster 40 different assets based on their financial ratio scores (Current Ratio, Debt-Equity Ratio, Profit Margin, Return on Equity, Price/Earnings per Growth, EPS diluted, and Price/Earnings Ratio). Genetic algorithm is search method based on principles of natural selection and genetics. After the stocks are clustered, Genetic algorithm with heuristic crossover is applied to each cluster alongside to determine the proportion of each stock. In this paper, a possibilistic mean-semi-absolute deviation optimization model is used where cardinality, quantity, and transaction cost are considered as constraints. We also use the assumption that the returns of risky assets are fuzzy numbers. The implementation shows that the method gave a higher level of return (29.77 %) and Sharpe’s ratio (18.71) compared to S&P 500 index in the same period of time (12.34 % and 2.7 respectively).Portfolio optimization aims to protect investors against any risks which they may experience. Stock diversification is one of the solutions to optimize stock portfolio, where a diverse portfolio tends to have less risk than the undiversified one. Agglomerative clustering is a hierarchical clustering method. Applying diversification concept, agglomerative clustering is used to cluster 40 different assets based on their financial ratio scores (Current Ratio, Debt-Equity Ratio, Profit Margin, Return on Equity, Price/Earnings per Growth, EPS diluted, and Price/Earnings Ratio). Genetic algorithm is search method based on principles of natural selection and genetics. After the stocks are clustered, Genetic algorithm with heuristic crossover is applied to each cluster alongside to determine the proportion of each stock. In this paper, a possibilistic mean-semi-absolute deviation optimization model is used where cardinality, quantity, and transaction cost are considered as constraints. We also use the assumption ...
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