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Using genetic algorithm to support clustering-based portfolio optimization by investor information

机译:使用遗传算法支持投资者信息基于聚类的产品组合优化

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摘要

A clustering-based portfolio optimization scheme that employs a genetic algorithm (GA) based on investor information for active portfolio management is presented. Whereas numerous studies have investigated trading behaviors, investor performance, and portfolio investment strategies, few works have developed investment strategies based on investor information. This study is conducted in two phases. First, a basket of portfolio (i.e., a collection of stocks held in individual portfolios) is developed through a cluster analysis of investor information. A GA is then employed to optimize the weights of the selected stocks. And the optimized portfolio is rebalanced to get excess return. It is concluded that the proposed multistage portfolio optimization scheme for active portfolio management generates superior results than previously proposed methods for the Korean stock market. (C) 2017 Elsevier B.V. All rights reserved.
机译:提出了一种基于聚类的产品组合优化方案,其采用基于投资者信息进行活动投资组合管理的遗传算法(GA)。 虽然众多研究已经调查了交易行为,投资者绩效和投资组合投资策略,但很少有效地根据投资者信息制定了投资策略。 本研究分两期进行。 首先,通过对投资者信息的集群分析,开发了一篮子组合(即,在个人投资组合中持有的股票集合)。 然后采用GA来优化所选股票的权重。 并且优化的投资组合重新平衡以获得超额回报。 得出结论是,用于积极组合管理的拟议的多级产品组合优化方案,比以前提出的韩国股市的方法产生卓越的结果。 (c)2017 Elsevier B.v.保留所有权利。

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