Bitcoin Price Forecasting using Time-series Architectures

Louise Gabriel N. De Leon, Rafael C. Gomez, Martin Lance G. Tacal, Jonathan V. Taylar, Verlyn V. Nojor, Alonica R. Villanueva
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引用次数: 2

Abstract

The cryptocurrency market has shown an imperfect market property due to volatility and erratic behavior. Cryptocurrencies“ prices largely fluctuate because of the 24/7 trading policy that weakens the forecasting power of thetraditional models. However, research works reveal that cryptocurrency prices cannot be truly random in nature. In thispaper, traditional methods of time-series forecasting such as the ARIMA and SARIMA were presented and compared with the recent deep learning models such as the GRU, RNN, LSTM, and Facebook Prophet. Historical data for Bitcoin was acquired consisting of 2770 samples from 2018 to 2022. The study yielded the lowest MSE and RMSE of 2159166.25 and 1469.41 respectively for the GRU model. FB Prophet yielded the highest RMSE and MSE among all the experimented models.
使用时间序列架构进行比特币价格预测
由于波动性和不稳定的行为,加密货币市场表现出不完美的市场属性。加密货币的价格波动很大,因为全天候的交易政策削弱了传统模型的预测能力。然而,研究表明,加密货币的价格在本质上不可能是真正随机的。本文介绍了传统的时间序列预测方法,如ARIMA和SARIMA,并与最近的深度学习模型,如GRU、RNN、LSTM和Facebook Prophet进行了比较。获得了比特币的历史数据,包括2018年至2022年的2770个样本。GRU模型的MSE和RMSE最低,分别为2159166.25和1469.41。在所有实验模型中,FB Prophet的RMSE和MSE最高。
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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