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解读比特币:在时间序列分析中利用宏观和微观因素进行价格预测。

Decoding Bitcoin: leveraging macro- and micro-factors in time series analysis for price prediction.

作者信息

Jung Hae Sun, Kim Jang Hyun, Lee Haein

机构信息

Department of Applied Artificial Intelligence, Sung Kyun Kwan University, Seoul, Republic of South Korea.

Department of Interaction Science/Department of Human-Artificial Intelligence Interaction, Sung Kyun Kwan University, Seoul, Republic of South Korea.

出版信息

PeerJ Comput Sci. 2024 Sep 18;10:e2314. doi: 10.7717/peerj-cs.2314. eCollection 2024.

Abstract

Predicting Bitcoin prices is crucial because they reflect trends in the overall cryptocurrency market. Owing to the market's short history and high price volatility, previous research has focused on the factors influencing Bitcoin price fluctuations. Although previous studies used sentiment analysis or diversified input features, this study's novelty lies in its utilization of data classified into more than five major categories. Moreover, the use of data spanning more than 2,000 days adds novelty to this study. With this extensive dataset, the authors aimed to predict Bitcoin prices across various timeframes using time series analysis. The authors incorporated a broad spectrum of inputs, including technical indicators, sentiment analysis from social media, news sources, and Google Trends. In addition, this study integrated macroeconomic indicators, on-chain Bitcoin transaction details, and traditional financial asset data. The primary objective was to evaluate extensive machine learning and deep learning frameworks for time series prediction, determine optimal window sizes, and enhance Bitcoin price prediction accuracy by leveraging diverse input features. Consequently, employing the bidirectional long short-term memory (Bi-LSTM) yielded significant results even without excluding the COVID-19 outbreak as a black swan outlier. Specifically, using a window size of 3, Bi-LSTM achieved a root mean squared error of 0.01824, mean absolute error of 0.01213, mean absolute percentage error of 2.97%, and an R-squared value of 0.98791. Additionally, to ascertain the importance of input features, gradient importance was examined to identify which variables specifically influenced prediction results. Ablation test was also conducted to validate the effectiveness and validity of input features. The proposed methodology provides a varied examination of the factors influencing price formation, helping investors make informed decisions regarding Bitcoin-related investments, and enabling policymakers to legislate considering these factors.

摘要

预测比特币价格至关重要,因为它们反映了整个加密货币市场的趋势。由于该市场历史较短且价格波动较大,先前的研究主要集中在影响比特币价格波动的因素上。尽管先前的研究使用了情绪分析或多样化的输入特征,但本研究的新颖之处在于其利用了分为五大类以上的数据。此外,使用超过2000天的数据为本研究增添了新颖性。有了这个广泛的数据集,作者旨在使用时间序列分析预测不同时间范围内的比特币价格。作者纳入了广泛的输入,包括技术指标、来自社交媒体、新闻来源和谷歌趋势的情绪分析。此外,本研究整合了宏观经济指标、比特币链上交易细节和传统金融资产数据。主要目标是评估用于时间序列预测广泛机器学习和深度学习框架,确定最佳窗口大小,并通过利用多样化的输入特征提高比特币价格预测的准确性。因此,即使不将新冠疫情爆发视为黑天鹅异常值,采用双向长短期记忆网络(Bi-LSTM)也产生了显著的结果。具体而言,使用窗口大小为3,Bi-LSTM的均方根误差为0.01824,平均绝对误差为0.01213,平均绝对百分比误差为2.97%,决定系数为0.98791。此外,为了确定输入特征的重要性,研究人员检查了梯度重要性,以确定哪些变量具体影响预测结果。还进行了消融测试,以验证输入特征的有效性和合理性。所提出的方法对影响价格形成的因素进行了多方面的考察,有助于投资者就比特币相关投资做出明智的决策,并使政策制定者在立法时考虑这些因素。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ba3a/11419646/0a9963dc31cc/peerj-cs-10-2314-g001.jpg

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