使用时间序列和情绪分析来检测比特币价格的决定因素

Ifigeneia Georgoula, Demitrios Pournarakis, Christos Bilanakos, Dionisios N. Sotiropoulos, G. Giaglis
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引用次数: 131

摘要

本文采用时间序列分析研究了比特币价格与基本经济变量、技术因素以及来自Twitter feed的集体情绪测量之间的关系。通过使用最先进的机器学习算法,即支持向量机(svm),每天都进行情感分析。一系列短期回归表明,Twitter情绪比率与比特币价格呈正相关。短期分析还显示,维基百科搜索查询的数量(显示公众对比特币的兴趣程度)和哈希率(衡量挖矿难度)对比特币的价格有积极影响。相反,比特币的价值受到美元与欧元之间汇率的负面影响(这代表了价格的一般水平)。矢量误差校正模型用于研究协整变量之间是否存在长期关系。这种长期分析表明,比特币价格与流通中的比特币数量(代表货币供应的总存量)呈正相关,与标准普尔500指数(表明全球经济的总体状况)负相关。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Time-Series and Sentiment Analysis to Detect the Determinants of Bitcoin Prices
This paper uses time-series analysis to study the relationship between Bitcoin prices and fundamental economic variables, technological factors and measurements of collective mood derived from Twitter feeds. Sentiment analysis has been performed on a daily basis through the utilization of a state-of-the-art machine learning algorithm, namely Support Vector Machines (SVMs). A series of short-run regressions shows that the Twitter sentiment ratio is positively correlated with Bitcoin prices. The short-run analysis also reveals that the number of Wikipedia search queries (showing the degree of public interest in Bitcoins) and the hash rate (measuring the mining difficulty) have a positive effect on the price of Bitcoins. On the contrary, the value of Bitcoins is negatively affected by the exchange rate between the USD and the euro (which represents the general level of prices). A vector error-correction model is used to investigate the existence of long-term relationships between cointegrated variables. This kind of long-run analysis reveals that the Bitcoin price is positively associated with the number of Bitcoins in circulation (representing the total stock of money supply) and negatively associated with the Standard and Poor's 500 stock market index (which indicates the general state of the global economy).
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