主要加密货币收益率波动与交易量的相关性分析

Jiří Klečka, Dagmar Čámská
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引用次数: 3

摘要

目前已有文献研究了适用于单变量GARCH模型的递归估计方法。毫无疑问,它们代表了具有许多实际应用(特别是在高频金融数据的背景下)的标准非递归估计程序的有吸引力的替代方案。采用能够实时估计、监测和控制这些模型的数值有效技术可能是真正有利的。本贡献的目的是通过应用一般递归估计工具,将这种方法扩展到多元EMWA过程。多元指数加权移动平均(MEWMA)模型是RiskMetrics倡导的一种特殊建模方案,能够预测当前金融时间序列协波动水平。特别是,建议的方法似乎对具有(条件)相关成分的各种多变量金融时间序列很有用。为了研究该估计算法的统计特性,进行了蒙特卡罗实验。并通过实证财务分析验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Dependence Between the Return Rate Volatility and the Trading Volume of the Most Important Cryptocurrencies – a Correlation Analysis
Recursive estimation methods suitable for univariate GARCH models have been recently studied in the literature. They undoubtedly represent attractive alternatives to the standard non-recursive estimation procedures with many practical applications (especially in the context of high-frequency financial data). It might be truly advantageous to adopt numerically effective techniques that can estimate, monitor, and control such models in real time. The aim of this contribution is to extend this methodology to the multivariate EMWA process by applying general recursive estimation instruments. The multivariate exponentially weighted moving average (MEWMA) model is a particular modelling scheme advocated by RiskMetrics that is capable of predicting the current level of financial time series covolatilities. In particular, the suggested approach seems to be useful for various multivariate financial time series with (conditionally) correlated components. Monte Carlo experiments are performed in order to investigate statistic features of the proposed estimation algorithm. Moreover, an empirical financial analysis demonstrates its capability.
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