INTEGRATION OF DAVIES-BOULDIN INDEX VALIDATION AND MEAN-VARIANCE EFFICIENT PORTFOLIO IN K-MEANS++ CLUSTERING FOR OPTIMIZATION OF THE LQ45 STOCK PORTFOLIO

  • David Jordy Dhandio Mathematics Department, Faculty of Mathematics and Natural Science, Universitas Tanjungpura, Indonesia https://orcid.org/0009-0005-2356-4030
  • Evy Sulistianingsih Mathematics Department, Faculty of Mathematics and Natural Science, Universitas Tanjungpura, Indonesia https://orcid.org/0000-0002-7133-1822
  • Neva Satyahadewi Mathematics Department, Faculty of Mathematics and Natural Science, Universitas Tanjungpura, Indonesia https://orcid.org/0000-0001-8103-1797
Keywords: Expected Return, Financial Ratios, Investment Risk, K-Means Clustering, Optimal Portfolio, Sharpe Index

Abstract

Stock investment involves allocating funds to get returns based on the associated risks. In stock investments, returns and risks exhibit a linear correlation, meaning higher expected returns come with higher risks. Risk in stock investments can be minimized by forming portfolios using a cluster analysis approach, where the groups of stocks generated from the analysis represent the resulting portfolios. This research aims to form an optimal stock portfolio using K-Means++ Clustering, validated by the Davies Bouldin Index (DBI), the weighting of stocks in a portfolio using the Mean-Variance Efficient Portfolio (MVEP), and evaluated based on the Sharpe Index. The data used include stocks indexed in LQ45 from February 2020 to August 2024, stock closing prices from August 1, 2023, to August 1, 2024, company financial ratios as of June 2024, and the average Bank Indonesia interest rate from August 2023 to August 2024. Based on the financial ratios, K-Means++ Clustering and DBI validation identified three optimal clusters. Clusters 1 and 2, consisting of single stocks, cannot be directly utilized as portfolios due to the requirement for diversification. Each cluster’s stocks with the highest expected return were selected to form a new portfolio. According to the MVEP analysis, the investment proportion f each stock in portfolio 1 is 44.10% (BBCA.JK), 15.40% (BBNI.JK), 2.89% (BMRI.JK), 15.02% (CPIN.JK), and 22.60% (PGAS.JK). In portfolio 2, the weights are 27.68% (BBTN.JK), 36.00% (ADRO.JK), and 36.33% (BMRI.JK). Based on the Sharpe Index, portfolio 2 achieved the highest value (0.048404) compared to portfolio 1 (0.034465), indicating that portfolio 2 shows a better risk-adjusted return than portfolio 1.

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Published
2025-09-01
How to Cite
[1]
D. J. Dhandio, E. Sulistianingsih, and N. Satyahadewi, “INTEGRATION OF DAVIES-BOULDIN INDEX VALIDATION AND MEAN-VARIANCE EFFICIENT PORTFOLIO IN K-MEANS++ CLUSTERING FOR OPTIMIZATION OF THE LQ45 STOCK PORTFOLIO”, BAREKENG: J. Math. & App., vol. 19, no. 4, pp. 2609-2620, Sep. 2025.