比特币回报的波动性及其与金融市场的相关性

Nhi N. Y. Vo, Guandong Xu
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引用次数: 10

摘要

2008年的金融危机在全球范围内散布了对传统金融体系的怀疑,这使得投资者和非金融客户转向其他替代方案,如数字银行系统。区块链技术的存在和发展,使得近年来加密货币可信地成为传统货币的完全替代品。比特币是中本聪发起的世界上第一个点对点、去中心化的数字现金系统[1]。尽管比特币是最重要的加密货币,但它在许多国家都不是合法的交易货币。人民币汇率似乎是一种风险极高、波动性极大的投资组合,需要在做出任何决定之前进行更详细的评估。本文利用金融时间序列的统计学知识和机器学习来(i)拟合参数分布和(ii)模型并预测比特币收益的波动性,(iii)分析其与其他金融市场指标的相关性。拟合参数时间序列模型在解释比特币收益行为的风格化事实和统计差异方面明显优于其他标准模型。该模型的预测还优于一些机器学习方法,这将使政策制定者、银行和金融投资者在长期和短期交易活动中受益。
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The volatility of Bitcoin returns and its correlation to financial markets
The 2008 financial crisis had scattered incredulity around the globe regarding traditional financial systems, which made investors and non-financial customers turn to other alternative such as digital banking systems. The existence and development of blockchain technology make cryptocurrency in recent years believably become a complete alternative to traditional ones. Bitcoin is the world's first peer-to-peer and decentralized digital cash system initiated by Nakamoto [1]. Though being the most prominent cryptocurrency, Bitcoin has not been a legal trading currency in various countries. Its exchange rate has appeared to be an exceptionally high-risk portfolio with extreme volatility, which requires a more detailed evaluation before making any decision. This paper utilizes knowledge of statistics for financial time series and machine learning to (i) fit the parametric distribution and (ii) model and forecast the volatility of Bitcoin returns, and (iii) analyze its correlation to other financial market indicators. The fitted parametric time series model significantly outperforms other standard models in explaining the stylized facts and statistical variances in the behavior of Bitcoin returns. The model forecast also outperforms some machine learning methodologies, which would benefit policy makers, banks and financial investors in trading activities for both long-term and short-term strategies.
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