Time Series Analysis and prediction of bitcoin using Long Short Term Memory Neural Network

Temiloluwa I. Adegboruwa, Steve A. Adeshina, Moussa Mahamat Boukar
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引用次数: 6

Abstract

Bitcoin is the first digital currency that uses decentralization to solve the issue of trust in performing the functions of a digital currency successfully. This digital currency has shown extraordinary growth and intermittent plunge in value and market capitalization over time. This makes it important to understand what determines the volatility of bitcoin and to what extent they are predictable. Long Short Term Memory Neural Networks (LSTM-NN) have recently grown popular for time series prediction systems but there has been no consensus on methods to model time series inputs for LSTMs, this paper proposes the need for this problem to be solved by conducting an experimental research on the efficacy of an LSTM-NN given the form of its time-series input features.
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基于长短期记忆神经网络的比特币时间序列分析与预测
比特币是第一个利用去中心化解决信任问题的数字货币,它成功地履行了数字货币的功能。随着时间的推移,这种数字货币表现出了非凡的增长和价值和市值的间歇性下跌。这使得理解是什么决定了比特币的波动性以及它们在多大程度上是可预测的变得非常重要。长短期记忆神经网络(LSTM-NN)最近在时间序列预测系统中越来越受欢迎,但对于lstm的时间序列输入建模方法尚无共识,本文提出需要通过对LSTM-NN在给定其时间序列输入特征形式下的有效性进行实验研究来解决这一问题。
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