Hybrid gated recurrent unit bidirectional-long short-term memory model to improve cryptocurrency prediction accuracy

Q2 Decision Sciences
Ferdiansyah Ferdiansyah, S. H. Othman, Raja Zahilah Md Radzi, D. Stiawan, T. Sutikno
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引用次数: 5

Abstract

Cryptocurrency is a virtual or digital currency used in financial systems that utilizes blockchain technology and cryptographic functions to gain transparency, decentralization, and conservation. Cryptocurrency prices have a high level of fluctuation; thus, tools are needed to monitor and predict them. RNN is a deep learning model that is capable of strongly predicting data time series. Some types of Recurrent Nureal Network layers, such as Long Short Term Memory, have been used in previous studies to prediction common used currency. In this study, we used the Gate Recurrent Unit and Bidirectional–LSTM hybrid model to predict cryptocurrency prices to improve the accuracy of previously proposed prediction LSTM Model to predict the Bitcoin,  Using four cryptocurrencies (Bitcoin, Ehtereum, Ripple, and Binance), we obtained very good results with RMSE after normalization the results get closer to 0 and with MAPE values all below <10%.
提高加密货币预测精度的混合门控循环单元双向长短期记忆模型
加密货币是金融系统中使用的虚拟或数字货币,它利用区块链技术和加密功能来获得透明度、去中心化和保护。加密货币价格波动较大;因此,需要工具来监视和预测它们。RNN是一种深度学习模型,能够对数据时间序列进行强预测。一些类型的循环神经网络层,如长短期记忆,已经在以前的研究中用于预测常用货币。在本研究中,我们使用门循环单元和双向- LSTM混合模型来预测加密货币价格,以提高先前提出的预测LSTM模型预测比特币的准确性,使用四种加密货币(比特币,以太坊,Ripple和币安),我们获得了非常好的结果,归一化后的RMSE结果更接近于0,MAPE值都低于10%。
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来源期刊
IAES International Journal of Artificial Intelligence
IAES International Journal of Artificial Intelligence Decision Sciences-Information Systems and Management
CiteScore
3.90
自引率
0.00%
发文量
170
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