探索主要加密货币日志回报之间的依赖关系:一个隐马尔可夫模型

Pub Date : 2021-11-10 DOI:10.1111/ecno.12193
F. Pennoni, F. Bartolucci, Gianfranco Forte, Ferdinando Ametrano
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引用次数: 3

摘要

提出了一个多元隐马尔可夫模型来解释比特币、以太坊、瑞波币、莱特币和比特币现金的价格演变。观察到的这五种主要加密货币的日对数回报是联合建模的。在一个状态数有限的隐马尔可夫过程上,假定它们根据方差-协方差矩阵有条件地相关。为了根据状态的波动性对状态进行比较,我们估计了跨状态变化的特定方差-协方差矩阵。通过期望最大化算法对模型参数进行极大似然估计。隐藏状态表示通过估计的期望值和对数收益的波动率确定的市场的不同阶段。在检测市场的这些阶段和隐含的过渡动态方面,我们得到了有趣的结果。我们还发现了比特币与其他加密货币相关性的结构性中期趋势的证据。
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Exploring the dependencies among main cryptocurrency log‐returns: A hidden Markov model
A multivariate hidden Markov model is proposed to explain the price evolution of Bitcoin, Ethereum, Ripple, Litecoin, and Bitcoin Cash. The observed daily log-returns of these five major cryptocurrencies are modeled jointly. They are assumed to be correlated according to a variance-covariance matrix conditionally on a latent Markov process having a finite number of states. For the purpose of comparing states according to their volatility, we estimate specific variance-covariance matrix varying across states. Maximum likelihood estimation of the model parameters is carried out by the Expectation-Maximization algorithm. The hidden states represent different phases of the market identified through the estimated expected values and volatility of the log-returns. We reach interesting results in detecting these phases of the market and the implied transition dynamics. We also find evidence of structural medium term trend in the correlations of Bitcoin with the other cryptocurrencies.
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