Indonesian Banking Stock Portfolio Optimization Based on Ridge Regression Prediction

The Indonesian stock market in the banking sector is a popular investment instrument with high return potential but faces market volatility and global economic uncertainty that requires adaptive and data-driven portfolio management strategies. Traditional asset allocation strategies such as equal we...

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Main Authors: Moch Panji Agung Saputra, Deva Putra Setyawan, Alim Jaizul Wahid
Format: Article
Language:English
Published: Research Collaboration Community (RCC) 2025-05-01
Series:International Journal of Business, Economics, and Social Development
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Online Access:https://journal.rescollacomm.com/index.php/ijbesd/article/view/1064
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author Moch Panji Agung Saputra
Deva Putra Setyawan
Alim Jaizul Wahid
author_facet Moch Panji Agung Saputra
Deva Putra Setyawan
Alim Jaizul Wahid
author_sort Moch Panji Agung Saputra
collection DOAJ
description The Indonesian stock market in the banking sector is a popular investment instrument with high return potential but faces market volatility and global economic uncertainty that requires adaptive and data-driven portfolio management strategies. Traditional asset allocation strategies such as equal weighting or based on historical performance have limitations in dynamic market conditions, while the application of machine learning, especially Ridge Regression, in stock return prediction and portfolio optimization in the Indonesian market has not been widely explored. This study aims to build an integrated pipeline for portfolio prediction and optimization using Ridge Regression on Indonesian banking stocks. Methods: Daily closing price data of five major banking stocks (BBRI, BBCA, BMRI, BBNI, BBTN) for the period 2015-2025 are used with technical indicators of moving average and rolling standard deviation as input features. The Ridge Regression model is trained using TimeSeriesSplit cross-validation to predict daily returns, then the prediction results are integrated into the Mean-Variance optimization framework to maximize the Sharpe ratio. The Ridge Regression model shows excellent predictive performance with an average R² of 0.9986, MAE of 0.000466, and RMSE of 0.000720. The Ridge-based portfolio strategy achieves identical performance to the historical optimal strategy with an annualized return of 10.64% and a Sharpe ratio of 0.4705, significantly outperforming the equal-weight strategy (return of 6.63%, Sharpe ratio of 0.2562). A practical implementation simulation with IDR 100 million funds shows feasible execution with less than 1% deviation from the optimal weights. Ridge Regression is proven to be effective in capturing the return pattern of Indonesian banking stocks and enables superior portfolio performance when integrated with modern portfolio theory, providing investors with a robust and data-driven approach to portfolio optimization in emerging markets.
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spelling doaj-art-0d1c73d30bb2432caab3c6b7a900cfa62025-08-20T04:00:34ZengResearch Collaboration Community (RCC)International Journal of Business, Economics, and Social Development2722-11642722-11562025-05-0162330337https://doi.org/10.46336/ijbesd.v6i2.1064Indonesian Banking Stock Portfolio Optimization Based on Ridge Regression PredictionMoch Panji Agung Saputra0Deva Putra Setyawan1Alim Jaizul Wahid2Department of Mathematics, Faculty of Mathematics and Natural Sciences, Universitas Padjadjaran, Sumedang, IndonesiaMaster's Program of Mathematics, Faculty of Mathematics and Natural Sciences, Universitas Padjadjaran, Sumedang, IndonesiaMaster's Program of Mathematics, Faculty of Mathematics and Natural Sciences, Universitas Padjadjaran, Sumedang, IndonesiaThe Indonesian stock market in the banking sector is a popular investment instrument with high return potential but faces market volatility and global economic uncertainty that requires adaptive and data-driven portfolio management strategies. Traditional asset allocation strategies such as equal weighting or based on historical performance have limitations in dynamic market conditions, while the application of machine learning, especially Ridge Regression, in stock return prediction and portfolio optimization in the Indonesian market has not been widely explored. This study aims to build an integrated pipeline for portfolio prediction and optimization using Ridge Regression on Indonesian banking stocks. Methods: Daily closing price data of five major banking stocks (BBRI, BBCA, BMRI, BBNI, BBTN) for the period 2015-2025 are used with technical indicators of moving average and rolling standard deviation as input features. The Ridge Regression model is trained using TimeSeriesSplit cross-validation to predict daily returns, then the prediction results are integrated into the Mean-Variance optimization framework to maximize the Sharpe ratio. The Ridge Regression model shows excellent predictive performance with an average R² of 0.9986, MAE of 0.000466, and RMSE of 0.000720. The Ridge-based portfolio strategy achieves identical performance to the historical optimal strategy with an annualized return of 10.64% and a Sharpe ratio of 0.4705, significantly outperforming the equal-weight strategy (return of 6.63%, Sharpe ratio of 0.2562). A practical implementation simulation with IDR 100 million funds shows feasible execution with less than 1% deviation from the optimal weights. Ridge Regression is proven to be effective in capturing the return pattern of Indonesian banking stocks and enables superior portfolio performance when integrated with modern portfolio theory, providing investors with a robust and data-driven approach to portfolio optimization in emerging markets.https://journal.rescollacomm.com/index.php/ijbesd/article/view/1064ridge regressionportfolio optimizationindonesian banking stocksmean-variance modelstock return prediction
spellingShingle Moch Panji Agung Saputra
Deva Putra Setyawan
Alim Jaizul Wahid
Indonesian Banking Stock Portfolio Optimization Based on Ridge Regression Prediction
International Journal of Business, Economics, and Social Development
ridge regression
portfolio optimization
indonesian banking stocks
mean-variance model
stock return prediction
title Indonesian Banking Stock Portfolio Optimization Based on Ridge Regression Prediction
title_full Indonesian Banking Stock Portfolio Optimization Based on Ridge Regression Prediction
title_fullStr Indonesian Banking Stock Portfolio Optimization Based on Ridge Regression Prediction
title_full_unstemmed Indonesian Banking Stock Portfolio Optimization Based on Ridge Regression Prediction
title_short Indonesian Banking Stock Portfolio Optimization Based on Ridge Regression Prediction
title_sort indonesian banking stock portfolio optimization based on ridge regression prediction
topic ridge regression
portfolio optimization
indonesian banking stocks
mean-variance model
stock return prediction
url https://journal.rescollacomm.com/index.php/ijbesd/article/view/1064
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AT devaputrasetyawan indonesianbankingstockportfoliooptimizationbasedonridgeregressionprediction
AT alimjaizulwahid indonesianbankingstockportfoliooptimizationbasedonridgeregressionprediction