Optimization Selection on Deep Learning Algorithm for Stock Price Prediction in Indonesia Companies

Gunawan Gunawan, Wresti Andriani, Sawaviyya Anandianskha, Aang Alim Murtopo, Bangkit Indarmawan Nugroho, Naella Nabila Putri Wahyuning Naja
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Abstract

Purpose: Share price movements after the COVID-19 pandemic experienced a decline in several sectors, especially in the share prices of the Aneka Tambang Company, which operates in the mining sector, the Wijaya Karya Company in the construction sector, and the Sinar Mas Company, which is a Holding Company. Several factors influence this, including investors' hesitation in investing their money. This research aims to predict stock price movements using a Deep Learning algorithm, which is optimized using Selection optimization at three large companies in Indonesia, namely PT. ANTAM, PT. WIKA, and PT. SINAR MAS. So that it can provide the correct information to investors to avoid losses.Method: research through collecting data from the three companies, preprocessing, and then analyzing research data with several alternatives. The combination of inputs from the three companies using the deep learning method is then optimized using selection optimization to produce the best accuracy and use the results of the RMSE evaluation.Results: The results of this research show that by using the Deep Learning method, the best evaluation results were obtained for the Company PT Wijaya Karya with an RMSE value of 0.432, an MAE value of 0.31505 and an MSE value of 1913.953. These results were then optimized using Selection optimization to obtain an RMSE increase of 0.022, namely 0.410.Novelty: The contribution of this research is to get the best combination of input variables obtained using the windowing process from the three companies, which are then processed using the Deep Learning method to produce the most accurate evaluation results from the three companies, then the results are optimized again using Selection optimization to get the more optimal results.
印度尼西亚公司股价预测深度学习算法的优化选择
目的:COVID-19 大流行后,多个行业的股价出现下跌,尤其是采矿业的 Aneka Tambang 公司、建筑业的 Wijaya Karya 公司和控股公司 Sinar Mas 公司的股价。影响股价走势的因素很多,其中包括投资者在投资时的犹豫不决。本研究旨在使用深度学习算法预测股价走势,该算法在印度尼西亚的三家大型公司,即 PT.ANTAM、PT.WIKA和PT.SINAR MAS。方法:通过收集三家公司的数据,进行预处理,然后用多个备选方案对研究数据进行分析。使用深度学习方法对三家公司的输入进行组合,然后使用选择优化法进行优化,以产生最佳准确度,并使用均方根误差评估结果:研究结果表明,通过使用深度学习方法,PT Wijaya Karya 公司获得了最佳评估结果,RMSE 值为 0.432,MAE 值为 0.31505,MSE 值为 1913.953。新颖性:本研究的贡献在于从三家公司中通过窗口处理获得输入变量的最佳组合,然后使用深度学习方法对其进行处理,从而得出三家公司最准确的评估结果,然后使用选择优化再次对结果进行优化,以获得更优化的结果。
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审稿时长
24 weeks
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