Implementasi Random Forest Regression Untuk Prediksi Harga Saham Consumer Non-Cyclicals Berbasis Rasio Fundamental

Authors

  • Devi Debora Universitas Widyatama
  • R.A.E. Virgana Targa Sapanji Departemen Sistem Informasi Universitas Widyatama

DOI:

https://doi.org/10.25077/TEKNOSI.v12i1.2026.126-133

Keywords:

Stock Price, Random Forest, Machine Learning, Financial Ratio Analysis

Abstract

Prediksi harga saham merupakan aspek krusial dalam pengambilan keputusan investasi, khususnya pada sektor Consumer Non-Cyclicals yang memiliki karakteristik permintaan relatif stabil. Namun, hubungan antara rasio fundamental dan harga saham sering bersifat non-linear sehingga sulit dimodelkan menggunakan pendekatan statistik konvensional. Penelitian ini bertujuan untuk membangun model prediksi harga saham berbasis algoritma Random Forest Regression dengan mengintegrasikan rasio fundamental dan fitur turunan hasil feature engineering pada sektor Consumer Non-Cyclicals di Bursa Efek Indonesia. Penelitian menggunakan data sekunder berupa laporan keuangan dan harga saham kuartalan perusahaan sektor Consumer Non-Cyclicals periode 2022–2024. Variabel independen meliputi EPS, Book Value, DER, ROA, ROE, dan NPM, serta fitur turunan seperti PER, PBV, interaksi rasio, harga lag, dan perubahan harga. Pemodelan dilakukan menggunakan Random Forest Regression dengan pembagian data TimeSeriesSplit. Evaluasi model menggunakan MAE, RMSE, dan R², serta interpretasi model dilakukan melalui Feature Importance dan SHAP. Hasil penelitian menunjukkan bahwa model Random Forest Regression memiliki kinerja prediksi yang baik dan mampu menangkap pola non-linear antara variabel fundamental dan harga saham. Fitur Harga_Lag1, ROE, PER, dan interaksi DER_ROA menjadi variabel paling berpengaruh dalam menentukan harga saham. Model yang dikembangkan efektif sebagai alat bantu prediksi harga saham berbasis fundamental dan berpotensi mendukung pengambilan keputusan investasi yang lebih akurat dan berbasis data.

References

P. Mega et al., Mengenal Produk Investasi Pasar Modal Indonesia. Medan, ippm umnaw, 2023, pp. 1-3.

S. Rahayu, “Fundamental Analysis of Share Prices in Coal Mining Subsector Companies”, doi: 10.33258/birci.v4i3.2371.

A. Arum et al, Analisis Laporan Keuangan. Bandung, CV Media Sains Indonesia, 2022, pp 46-31.

N. Damayanti, E. Gurendrawati, and S. Susanti, “Pengaruh DER, ROA, ROE, NPM, dan Risiko Sistematis pada Harga Saham Perusahaan,” Jurnal Simki Economic, vol. 6, no. 1, 2023, doi: 10.29407/jse.v6i1.157.

A. P. Nugroho, P. Kesdu, S. Fatonah, and N. I. Susanti, “The Analysis of Fundamental Factors Affecting Company Stock Prices (Case Studies of Companies Listed on the Indonesia Stock Exchange and Incorporated in the LQ45 Index),” East Asian Journal of Multidisciplinary Research (EAJMR), vol. 1, no. 7, pp. 1429–1448, 2022, [Online]. Available: https://journal.formosapublisher.org/index.php/eajmr/index

R. Eddy Nugroho and Maria Sherly Iskandar, “APPLICATION OF AHP FOR SUPPLIER SELECTION IN CONSTRUCTION COMPANIES,” Dinasti International Journal of Management Science, vol. 1, no. 6, 2020, doi: 10.31933/dijms.v1i6.400.

Y. Tristiarto, “Analisis Pengaruh Kinerja Keuangan Terhadap Harga Saham Perusahaan Sektor Consumer Non Cyclicals”, doi: 10.37817/ikraith.

E. Karyani and M. R. Perdiansyah, “ESG And Intellectual Capital Efficiency: Evidence From Asean Emerging Markets,” Jurnal Akuntansi dan Keuangan Indonesia, vol. 19, no. 2, pp. 166–187, Dec. 2022, doi: 10.21002/jaki.2022.08.

M. Y. Urrochman, H. Asy’ari, and F. A. Hizham, “Performance Comparison Of Random Forest Regression, SVR Models In Stock Price Prediction,” Jurnal Pilar Nusa Mandiri, vol. 21, no. 1, pp. 16–23, Mar. 2025, doi: 10.33480/pilar.v21i1.6072.

M. H. P. Khandagale, “Predicting Stock Prices With Machine Learning Using Comparative Analysis Of Random Forest Algorithm,” 2023. [Online]. Available: http://www.ijeast.com.

P. F. Tsai, C. H. Gao, and S. M. Yuan, “Stock Selection Using Machine Learning Based on Financial Ratios,” Mathematics, vol. 11, no. 23, Dec. 2023, doi: 10.3390/math11234758.

Y. Shi, “Research on the Stock Price Prediction Using Machine Learning,” Advances in Economics, Management and Political Sciences, vol. 22, no. 1, pp. 174–179, Sep. 2023, doi: 10.54254/2754-1169/22/20230307.

W. Monika, Ilmu Data, Riau, UIR Press, Penulis: Arbi Haza Nasution. [Online]. Available: https://uirpress.uir.ac.id.

A. Pangestu and R. T. Iswahyudi, “Pengaruh Data Preprocessing Terhadap Performa Regresi Linier Dalam Prediksi Saham, doi: 10.37817/ikraith-informatika.v9i2.

V. Da Poian et al., “Exploratory data analysis (EDA) machine learning approaches for ocean world analog mass spectrometry,” Frontiers in Astronomy and Space Sciences, vol. 10, 2023, doi: 10.3389/fspas.2023.1134141.

S. Royan Sumando, I. Sadalia, and A. A. Nasution, “The Effect of Profitability, Liquidity, and Financial Leverage on Stock Prices in Property and Real Estate Companies Listed on the Indonesia Stock Exchange,” 2023, pp. 179–186. doi: 10.2991/978-94-6463-008-4_24.

M. Sivakumar, S. Parthasarathy, and T. Padmapriya, “Trade-off between training and testing ratio in machine learning for medical image processing,” PeerJ Comput Sci, vol. 10, 2024, doi: 10.7717/PEERJ-CS.2245.

Submitted

2026-01-12

Accepted

2026-05-04

Published

2026-05-11

How to Cite

[1]
D. Debora and R.A.E. Virgana Targa Sapanji, “Implementasi Random Forest Regression Untuk Prediksi Harga Saham Consumer Non-Cyclicals Berbasis Rasio Fundamental”, TEKNOSI, vol. 12, no. 1, pp. 126–133, May 2026.

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