PENGELOMPOKAN SAHAM MENGGUNAKAN K-MEANS DALAM PEMBENTUKAN PORTOFOLIO OPTIMAL

  • DEVI A
  • DHARMAWAN K
  • TASTRAWATI N
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Abstract

K-Means clustering analysis is a technique used in grouping objects that have similar characteristics. In forming a portfolio, investors need a group of stocks from different sectors that aim to build a well-diversified portfolio. Portfolio diversification is the placement of assets from various stocks in such a way that risks can be minimized. This study aims to obtain the results of grouping stocks with K-Means at IDX80 and then determine the optimal portfolio of each cluster formed using the Mean Variance method in the period January, 1st 2020 to November, 10th 2022. As a result, obtained in this study that grouping with K -Means produces four groups and  is the best portfolio consisting of 10 stocks with a Sharp ratio performance value of 0.0062 with a risk portfolio of 1.59% and an expected return portfolio of 0.17%.

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DEVI, A. A. N., DHARMAWAN, K., & TASTRAWATI, N. K. T. (2023). PENGELOMPOKAN SAHAM MENGGUNAKAN K-MEANS DALAM PEMBENTUKAN PORTOFOLIO OPTIMAL. E-Jurnal Matematika, 12(4), 302. https://doi.org/10.24843/mtk.2023.v12.i04.p433

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