Banking Price Forecasting Application Using Neural Network Time Series Method

Wiwiet Herulambang, Fardanto Setyatama, Diana Nur Arofah
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Abstract

In the capital market is a meeting place for investors to make an offer with demand for securities as a means of business funding or as a means for companies to get funds. One of the assets to invest in the capital market is stocks. In terms of business aspects, stock investment has good growth but this does not apply to all stock sectors. Because in fact the development of capital markets in Indonesia turned out to be ups and downs. It can cause changes in demand and supply that will affect investor psychology in predicting stock prices. This stock price forecasting system will be created using the Neural Network Time Series method. Using historical data as a reference in the neural network training process can be used as a basis for predicting bank stock prices the next day. In the tests that have been carried out using the application forecasting stock prices of state banks using the neural network time series method with the backpropagation algorithm, the average accuracy rate of the State Savings Bank (BTN) is 97.32%, Bank Negara Indonesia (BNI) 98.25%, Bank Mandiri 97.68% %, and at Bank Rakyat Indonesia (BRI) 98.59%.
神经网络时间序列方法在银行价格预测中的应用
在资本市场上,是投资者提出有价证券需求的要约,作为企业融资的手段或公司获得资金的手段的聚会场所。在资本市场上投资的资产之一是股票。在业务方面,股票投资有良好的增长,但这并不适用于所有的股票行业。因为事实上印尼资本市场的发展是起起伏伏的。它可以引起需求和供给的变化,从而影响投资者预测股价的心理。本股票价格预测系统将采用神经网络时间序列方法。在神经网络训练过程中以历史数据为参考,可以作为预测第二天银行股价格的基础。在应用反向传播算法的神经网络时间序列方法预测国有银行股价的测试中,国家储蓄银行(BTN)的平均准确率为97.32%,印尼国家银行(BNI)为98.25%,Mandiri银行为97.68%,印尼人民银行(BRI)为98.59%。
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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