Implementation of an Artificial Neural Network Based on the Backpropagation Algorithm in Forecasting the Closing Price of the Jakarta Composite Index (IHSG)

Muhammad Fadhil, Zilrahmi Aditya, Yenni Kurniawati, Tessy Octavia Mukhti
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Abstract

Investing is highly common in Indonesia. Continuous investment activities carried out by the community will increase economic activity and employment opportunities, increase national income, and increase the level of prosperity of the community. In carrying out share buying and selling transactions, there is a means for companies to obtain funds from official financiers or investors, which is called the capital market. One of the indices issued by the IDX is the Jakarta Composite Index (IHSG). Statistics can be used to help investors, the government, or related institutions to predict the value of the IHSG. One method that can be used to predict data is an Artificial Neural Network (ANN). Backpropagation method is a multi-layer ANN method that works in a supervised learning. The idea of the Backpropagation algorithm is that the input of the neural network is evaluated against the desired output results of the research showed that the BP (4,6,1) model produced an RMSE value of 28,24024 and a MAPE value of 0.00342%. Based on the results of this research, an Artificial Neural Network model based on the Backpropagation Algorithm can be applied to predict the IHSG Closing Price value.
基于反向传播算法的人工神经网络在预测雅加达综合指数(IHSG)收盘价中的应用
投资在印度尼西亚非常普遍。社会持续开展的投资活动将增加经济活动和就业机会,增加国民收入,提高社会繁荣程度。在进行股票买卖交易时,公司有一个从官方金融家或投资者那里获得资金的途径,这就是资本市场。雅加达综合指数(IHSG)是 IDX 发布的指数之一。统计数据可以帮助投资者、政府或相关机构预测 IHSG 的价值。人工神经网络(ANN)是一种可用于预测数据的方法。反向传播法是一种在监督学习中工作的多层 ANN 方法。反向传播算法的原理是将神经网络的输入与所需的输出进行评估,研究结果表明,BP (4,6,1) 模型产生的 RMSE 值为 28 24024,MAPE 值为 0.00342%。根据这项研究的结果,基于反向传播算法的人工神经网络模型可用于预测 IHSG 收盘价。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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