事件间时间在波动聚类中的关键作用

Jarosław Klamut, T. Gubiec
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摘要

50多年前,两位物理学家Montroll和Weiss在色散输运和扩散的物理背景下引入了随机过程,称为连续时间随机行走(CTRW)。这样一个过程的轨迹是由等待时间之前的基本事件“空间”跳跃所创造的。自引入以来,CTRW在包括高频金融在内的不同领域得到了无数的应用,其中跳跃被认为是价格增量,等待时间代表交易间时间。在本文中,我们表明,即使考虑到日内季节性(所谓的“午餐效应”),贸易时间之间的依赖关系也是解释金融时间序列中长期记忆的关键因素。我们引入了具有等待时间长记忆的新CTRW模型,能够成功地描述价格变化绝对值的幂律衰减时间自相关。我们用波兰股市的实证数据对模型进行了检验。
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The Key Role of Inter-Event Times in Volatility Clustering
Over 50 years ago, two physicists Montroll and Weiss in the physical context of dispersive transport and diffusion introduced stochastic process, named Continuous-Time Random Walk (CTRW). The trajectory of such a process is created by elementary events ‘spatial’ jumps preceded by waiting time. Since introduction, CTRW found innumerable application in different fields including high-frequency finance, where jumps are considered as price increments and waiting times represent inter-trade times. In this manuscript we show that dependencies between inter-trade times are the key element to explain long-term memory in financial time-series, even when taking into account intraday seasonality (so-called "lunch effect�?). We introduce the new CTRW model with long-term memory in waiting times, able to successfully describe power-law decaying time autocorrelation of the absolute values of price changes. We test our model on the empirical data from Polish stock market.
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