Unlike price fluctuations, the temporal structure of cryptocurrency trading has seldom been a subject of systematic study. In order to fill this gap, we analyse detrended correlations of the price returns, the average number of trades in time unit, and the traded volume based on high-frequency data representing two major cryptocurrencies: bitcoin and ether. We apply the multifractal detrended cross-correlation analysis, which is considered the most reliable method for identifying nonlinear correlations in time series. We find that all the quantities considered in our study show an unambiguous multifractal structure from both the univariate (auto-correlation) and bivariate (cross-correlation) perspectives. We looked at the bitcoin--ether cross-correlations in simultaneously recorded signals, as well as in time-lagged signals, in which a time series for one of the cryptocurrencies is shifted with respect to the other. Such a shift suppresses the cross-correlations partially for short time scales, but does not remove them completely. We did not observe any qualitative asymmetry in the results for the two choices of a leading asset. The cross-correlations for the simultaneous and lagged time series became the same in magnitude for the sufficiently long scales.
翻译:与价格波动不同,加密货币交易的时间结构很少成为系统研究的主题。为了填补这一空白,我们分析了价格回报、平均交易时间单位和基于高频数据的交易量的分解相关关系,这些数据代表了两个主要的加密数据:比特币和醚。我们应用了多分形分解交叉关系分析,这被认为是在时间序列中确定非线性相关性的最可靠方法。我们发现,我们研究的所有数量都显示了从单向(自动反向关系)和双向(交向关系)角度的清晰的多变性结构。我们研究了同时录制的信号中的比特相异交叉关系,以及时间滞后信号,其中一种误差关系的时间序列与另一个时间序列发生改变。我们发现,我们研究中审议的所有数量都显示,从单向(自动反向关系)和双向(交向关系)角度都显示出一个明确的多变性结构,但并没有完全消除它们之间的时间序列。我们没有在两个时间尺度上观测任何质量序列的跨时间序列。我们没有完全地缩小它们之间的时间序列。