Classical portfolio selection with cluster analysis: Comparison between hierarchical complete linkage and Ward algorithm

La Gubu, D. Rosadi, Abdurakhman
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引用次数: 4

Abstract

In this paper we present a classical portfolio selection using cluster analysis. By applying complete linkage algorithm and Ward of agglomerative clustering, the stocks are classified into several clusters. A stock in each cluster is selected as cluster representative base on the Sharpe ratio. The selected stocks for each cluster are the stocks which has the best Sharpe ratio. The optimum portfolio is determined using the classical Mean-Variance (MV) portfolio model. Using this procedure, we may obtain the best portfolio efficiently when there are large number of stocks involved in the formulation of the portfolio. For empirical study, we used the daily return of stocks listed on the Indonesia Stock Exchange, which included in the LQ-45 indexed for the period of August 2017 to July 2018. The results of this research show that clustering with hirachical complete linkage and Ward algorithm, LQ-45 stocks are grouped into 7 group of stocks and 9 group of stocks respectively. Thus there are two portfolios that can be formed, namely the portfolio produced by the complete linkage algorithm which consists of 7 stocks and portfolios produced by the Ward algorithm which consists of 9 stocks. Furthermore, it was found that portfolio performance produced using clustering with Ward algorithm was better than portfolio performance produced by the complete linkage algorithm for all risk aversion values.
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基于聚类分析的经典投资组合选择:层次完全联动与Ward算法的比较
本文用聚类分析方法提出了一个经典的投资组合选择问题。采用完全联动算法和Ward聚类算法,将股票划分为若干类。根据夏普比率,在每个类中选择一个股票作为类代表。每组所选股票都是夏普比率最高的股票。采用经典的均值-方差(MV)组合模型确定最优投资组合。利用这一方法,当有大量股票参与组合时,我们可以有效地获得最佳组合。为了进行实证研究,我们使用了2017年8月至2018年7月期间纳入LQ-45指数的印度尼西亚证券交易所上市股票的日收益。研究结果表明,采用层次完全联动和Ward算法聚类后,LQ-45股票分别被划分为7组股票和9组股票。因此可以形成两种组合,即由7只股票组成的完全联动算法产生的组合和由9只股票组成的沃德算法产生的组合。进一步发现,对于所有风险规避值,采用Ward算法聚类产生的投资组合绩效优于采用完全联动算法产生的投资组合绩效。
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