Riding Wavelets: A Method to Discover New Classes of Price Jumps

Cecilia Aubrun, Rudy Morel, Michael Benzaquen, Jean-Philippe Bouchaud
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Abstract

Cascades of events and extreme occurrences have garnered significant attention across diverse domains such as financial markets, seismology, and social physics. Such events can stem either from the internal dynamics inherent to the system (endogenous), or from external shocks (exogenous). The possibility of separating these two classes of events has critical implications for professionals in those fields. We introduce an unsupervised framework leveraging a representation of jump time-series based on wavelet coefficients and apply it to stock price jumps. In line with previous work, we recover the fact that the time-asymmetry of volatility is a major feature. Mean-reversion and trend are found to be two additional key features, allowing us to identify new classes of jumps. Furthermore, thanks to our wavelet-based representation, we investigate the reflexive properties of co-jumps, which occur when multiple stocks experience price jumps within the same minute. We argue that a significant fraction of co-jumps results from an endogenous contagion mechanism.
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驾驭小波:发现新一类价格跳跃的方法
级联事件和极端事件在金融市场、地震学和社会物理学等不同领域引起了极大关注。此类事件可能来自系统固有的内部动力(内生),也可能来自外部冲击(外生)。能否将这两类事件区分开来,对这些领域的专业人士有着至关重要的影响。我们引入了一个无监督框架,利用基于小波系数的跳跃时间序列表示法,并将其应用于股价跳跃。与之前的工作一样,我们发现波动的时间不对称是一个主要特征。我们发现均值反转和趋势是另外两个关键特征,这使我们能够识别新的跳跃类别。此外,得益于我们基于小波的表示方法,我们研究了共同跳空的反身特性,即多只股票在同一分钟内出现价格跳空。我们认为,共同跳空的重要部分来自内生传染机制。
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