Elsevier

Journal of Multivariate Analysis

Volume 169, January 2019, Pages 110-129
Journal of Multivariate Analysis

Modeling, simulation and inference for multivariate time series of counts using trawl processes

https://doi.org/10.1016/j.jmva.2018.08.012Get rights and content
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Abstract

This article presents a new continuous-time modeling framework for multivariate time series of counts which have an infinitely divisible marginal distribution. The model is based on a mixed moving average process driven by Lévy noise, called a trawl process, where the serial correlation and the cross-sectional dependence are modeled independently of each other. Such processes can exhibit short or long memory. We derive a stochastic simulation algorithm and a statistical inference method for such processes. The new methodology is then applied to high frequency financial data, where we investigate the relationship between the number of limit order submissions and deletions in a limit order book.

AMS subject classifications

60G10
60G55
60E07
62M10
62P05

Keywords

Count data
Continuous time modeling of multivariate time series
Infinitely divisible
Limit order book
Multivariate negative binomial law
Poisson mixtures
Trawl processes

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