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Main Authors: Aubrun, Cecilia, Morel, Rudy, Benzaquen, Michael, Bouchaud, Jean-Philippe
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2404.16467
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author Aubrun, Cecilia
Morel, Rudy
Benzaquen, Michael
Bouchaud, Jean-Philippe
author_facet Aubrun, Cecilia
Morel, Rudy
Benzaquen, Michael
Bouchaud, Jean-Philippe
contents 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.
format Preprint
id arxiv_https___arxiv_org_abs_2404_16467
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Riding Wavelets: A Method to Discover New Classes of Price Jumps
Aubrun, Cecilia
Morel, Rudy
Benzaquen, Michael
Bouchaud, Jean-Philippe
General Finance
Trading and Market Microstructure
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.
title Riding Wavelets: A Method to Discover New Classes of Price Jumps
topic General Finance
Trading and Market Microstructure
url https://arxiv.org/abs/2404.16467