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Main Authors: Hung, Elly, Mantziou, Anastasia, Reinert, Gesine
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2411.14265
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author Hung, Elly
Mantziou, Anastasia
Reinert, Gesine
author_facet Hung, Elly
Mantziou, Anastasia
Reinert, Gesine
contents In this paper, we propose a new Bayesian Poisson network autoregression mixture model (PNARM). Our model combines ideas from the models of Dahl 2008, Ren et al. 2024 and Armillotta and Fokianos 2024, as it is motivated by the following aims. We consider the problem of modelling multivariate count time series since they arise in many real-world data sets, but has been studied less than its Gaussian-distributed counterpart (Fokianos 2024). Additionally, we assume that the time series occur on the nodes of a known underlying network where the edges dictate the form of the structural vector autoregression model, as a means of imposing sparsity. A further aim is to accommodate heterogeneous node dynamics, and to develop a probabilistic model for clustering nodes that exhibit similar behaviour. We develop an MCMC algorithm for sampling from the model's posterior distribution. The model is applied to a data set of COVID-19 cases in the counties of the Republic of Ireland.
format Preprint
id arxiv_https___arxiv_org_abs_2411_14265
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle A Bayesian mixture model for Poisson network autoregression
Hung, Elly
Mantziou, Anastasia
Reinert, Gesine
Methodology
In this paper, we propose a new Bayesian Poisson network autoregression mixture model (PNARM). Our model combines ideas from the models of Dahl 2008, Ren et al. 2024 and Armillotta and Fokianos 2024, as it is motivated by the following aims. We consider the problem of modelling multivariate count time series since they arise in many real-world data sets, but has been studied less than its Gaussian-distributed counterpart (Fokianos 2024). Additionally, we assume that the time series occur on the nodes of a known underlying network where the edges dictate the form of the structural vector autoregression model, as a means of imposing sparsity. A further aim is to accommodate heterogeneous node dynamics, and to develop a probabilistic model for clustering nodes that exhibit similar behaviour. We develop an MCMC algorithm for sampling from the model's posterior distribution. The model is applied to a data set of COVID-19 cases in the counties of the Republic of Ireland.
title A Bayesian mixture model for Poisson network autoregression
topic Methodology
url https://arxiv.org/abs/2411.14265