A New Forecasting Framework for Bitcoin Price with LSTM

Chih-Hung Wu, Chih-Chaing Lu, Yu-Feng Ma, Ruei-Shan Lu
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引用次数: 77

Abstract

Long short-term memory (LSTM) networks are a state-of-the-art sequence learning in deep learning for time series forecasting. However, less study applied to financial time series forecasting especially in cryptocurrency prediction. Therefore, we propose a new forecasting framework with LSTM model to forecasting bitcoin daily price with two various LSTM models (conventional LSTM model and LSTM with AR(2) model). The performance of the proposed models are evaluated using daily bitcoin price data during 2018/1/1 to 2018/7/28 in total 208 records. The results confirmed the excellent forecasting accuracy of the proposed model with AR(2). The test mean squared error (MSE), root mean square error (RMSE), mean absolute percentage error (MAPE), and mean absolute error (MAE) for bitcoin price prediction, respectively. The our proposed LSTM with AR(2) model outperformed than conventional LSTM model. The contribution of this study is providing a new forecasting framework for bitcoin price prediction can overcome and improve the problem of input variables selection in LSTM without strict assumptions of data assumption. The results revealed its possible applicability in various cryptocurrencies prediction, industry instances such as medical data or financial time-series data.
基于LSTM的比特币价格预测新框架
长短期记忆(LSTM)网络是深度学习中用于时间序列预测的最先进的序列学习方法。然而,对金融时间序列预测特别是加密货币预测的研究较少。因此,我们提出了一种新的LSTM模型预测框架,使用两种不同的LSTM模型(传统LSTM模型和带AR(2)模型的LSTM)预测比特币的日价格。使用2018年1月1日至2018年7月28日期间总共208条记录的每日比特币价格数据来评估所提出模型的性能。结果证实了该模型具有良好的AR预测精度(2)。分别检验了比特币价格预测的均方误差(MSE)、均方根误差(RMSE)、平均绝对百分比误差(MAPE)和平均绝对误差(MAE)。基于AR(2)模型的LSTM优于传统LSTM模型。本研究的贡献在于为比特币价格预测提供了一个新的预测框架,可以克服和改进LSTM中输入变量选择的问题,而不需要对数据假设进行严格的假设。结果表明,它可能适用于各种加密货币预测、医疗数据或金融时间序列数据等行业实例。
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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