A STOCK PREDICTION SYSTEM USING TEKNIKAL INDICATORS WITH THE LSTM METHOD

Revelin Angger Saputra
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引用次数: 1

Abstract

The capital market industry in Indonesia is developing in a better direction so that the growth of new investors is also increasing. Until the end of February 2021, operational data from the Indonesian Stock Exchange (IDX) and data from the Indonesian Central Securities Depository (KSEI) recorded that the number of new capital market investors had increased by 16.35% or 634,350 investors, from the previous 3,880,753 investors. to 4,515,103 investors. The development of the capital market industry in Indonesia, which has increased investor interest in investing, is expected to mobilize public funds to support national economic development. Some companies that are familiar to the community are BCA, BNI, BRI and MANDIRI. This study attempts to forecast banking stock prices on the LQ45 index, using the Long Short-Term Memory (LSTM) method. LSTM is one of the Recurrent Neural Networks (RNN) which has good accuracy in predictions. The identified fields are Close, Open, RSI, MACD and MA. The evaluation method used in this prediction system is MAPE in the form of percent output.
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基于LSTM方法的teknikal指标库存预测系统
印尼的资本市场行业正在朝着更好的方向发展,因此新投资者的增长也在增加。截至2021年2月底,印尼证券交易所(IDX)和印尼中央证券存管局(KSEI)的运营数据显示,新的资本市场投资者数量比之前的3,880,753名投资者增加了16.35%,即634,350名投资者。4,515,103名投资者。印尼资本市场行业的发展提高了投资者的投资兴趣,有望调动公共资金支持国家经济发展。社区熟悉的公司有BCA、BNI、BRI和MANDIRI。本研究尝试运用长短期记忆(LSTM)方法对LQ45指数上的银行股价格进行预测。LSTM是递归神经网络(RNN)的一种,具有较好的预测精度。确定的字段是Close, Open, RSI, MACD和MA。在该预测系统中使用的评价方法是MAPE的百分比输出形式。
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