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Recurrence duration statistics and time-dependent intrinsic correlation analysis of trading volumes: A study of Chinese stock indices

机译:交易量的复发持续时间统计及时间依赖性内在关联分析:中国股票索引研究

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The trading volume in stock markets is known as an important variable which reflects the liquidity of the financial markets and therefore is regarded to be greatly important for the measurement of market liquidity risk. In this work, a new concept called recurrence duration is introduced for study of daily trading volumes, which is inspired by idea of the volatility duration that was proposed and studied in our previous work. The recurrence duration is thought as the shortest passing time that the following days' trading volume takes to exceed or go below the current trading volume which is time-varying. Similar to the volatility duration distribution of the price returns, the power-law function could describe the empirical probability distribution of recurrence durations of trading volumes, and their tail distributions can be fitted by two stretched exponential functions. Further, the correlation relationships of trading volumes between Chinese stock indices as well as the correlations of recurrence durations are investigated. One approach employed is a recently proposed method, time-dependent intrinsic correlation (TDIC), which is based on the empirical mode decomposition (EMD) to decompose nonlinear and nonstationary signals into the intrinsic mode functions (IMFs), the instantaneous periods of which are used then in determination of the sizes of sliding windows to compute the running correlation coefficients for the multiscale signals. The empirical results reveal rich patterns of correlations for both trading volumes and recurrence durations at different scales for different modes. Another approach is the widely-used DCCA cross-correlation coefficient, by which the level of cross-correlation is measured for both original series and IMF modes of the stock indices. (C) 2018 Elsevier B.V. All rights reserved.
机译:股票市场的交易量被称为重要的变量,反映了金融市场的流动性,因此被认为对衡量市场流动性风险非常重要。在这项工作中,引入了一种新的概念,用于研究日常交易量,这是通过在我们以前的工作中提出和研究的波动持续时间的启发。复发持续时间被认为是最短的流逝时间,即以下几天的交易量超过或低于当前交易量,这是时代的。类似于价格回报的波动持续时间分布,电力法函数可以描述交易量的复发持续时间的经验概率分布,它们的尾部分布可以由两个拉伸指数函数装配。此外,研究了中国股票指数之间交易量的相关关系以及复发持续时间的相关性。采用一种方法是最近提出的方法,时间依赖性的内在关联(TDIC),其基于经验模式分解(EMD)来分解非线性和非间断信号进入内部模式函数(IMF),其瞬时周期然后用于确定滑动窗的大小来计算多尺度信号的运行相关系数。经验结果揭示了不同模式下不同规模的交易量和复发持续时间的丰富相关模式。另一种方法是广泛使用的DCCA互相关系数,通过该互相关的互相关水平用于股票指标的原始系列和IMF模式。 (c)2018年elestvier b.v.保留所有权利。

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