Decision-making in formation of mean-VaR optimal portfolio by selecting stocks using K-means and average linkage clustering

IF 1.4 Q3 OPERATIONS RESEARCH & MANAGEMENT SCIENCE Decision Science Letters Pub Date : 2022-01-01 DOI:10.5267/j.dsl.2022.7.002
Ahmad Fawaid Ridwan, H. Napitupulu, S. Sukono
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引用次数: 1

Abstract

Stock is one of the investment assets that has its charm for investors. It is very liquid and has a high rate of return, but it has a high risk. The strategy commonly used to minimize investment risk is to diversify through portfolio formation. A good allocation of funds must be determined in forming an optimal portfolio. In addition, the method of stock selection needs to be considered so the stocks are well diversified and the portfolio developed has good performance. This study aims to compare stock selection between K-Means and Average Linkage clustering approaches in forming an investment portfolio. Clustering analysis is used to group IDX80 stocks based on their attributes. In forming a portfolio with the Mean-VaR model, the stock selection decision criteria used are by selecting stocks with the highest positive returns from each cluster. As a result, the two clustering techniques show the superiority of the Silhouette score for a certain number of clusters, but there are still more advantages in Average Linkage. The portfolio approached by Average Linkage resulted in a better performance than the portfolio approached by K-Means. Therefore, Average Linkage clustering can be used as a better recommendation in decision-making to select stocks so as to produce optimal portfolio performance.
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运用k -均值和平均关联聚类方法选择股票,形成均值- var最优投资组合的决策
股票是吸引投资者的投资资产之一。它的流动性很强,回报率也很高,但风险也很高。通常用来降低投资风险的策略是通过投资组合来分散投资。在形成最优投资组合时,必须确定资金的合理配置。此外,还需要考虑选股方法,使股票多样化,开发的投资组合具有良好的绩效。本研究的目的是比较k -均值和平均关联聚类方法在形成投资组合时的股票选择。使用聚类分析对IDX80股票根据其属性进行分组。在使用均值- var模型形成投资组合时,所使用的选股决策标准是从每个群集中选择具有最高正收益的股票。结果表明,在一定数量的聚类情况下,两种聚类方法均表现出廓形得分的优势,但平均关联的优势更大。采用平均联动方法的投资组合优于采用K-Means方法的投资组合。因此,平均联动聚类可以作为决策中更好的推荐来选择股票,从而产生最优的投资组合绩效。
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来源期刊
Decision Science Letters
Decision Science Letters Decision Sciences-Decision Sciences (all)
CiteScore
3.40
自引率
5.30%
发文量
49
审稿时长
20 weeks
期刊最新文献
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