Open Access
2024 Bayesian Inference on the Order of Stationary Vector Autoregressions
Rachel L. Binks, Sarah E. Heaps, Mariella Panagiotopoulou, Yujiang Wang, Darren J. Wilkinson
Author Affiliations +
Bayesian Anal. Advance Publication 1-22 (2024). DOI: 10.1214/24-BA1499

Abstract

Vector autoregressions (VARs) are a widely used tool for modelling multivariate time-series. It is common to assume a VAR is stationary; this can be enforced by imposing the stationarity condition which restricts the parameter space of the autoregressive coefficients to the stationary region. However, implementing this constraint is difficult due to the complex geometry of the stationary region. Fortunately, recent work has provided a solution for autoregressions of fixed order p based on a reparameterization in terms of a set of interpretable and unconstrained transformed partial autocorrelation matrices. In this work, focus is placed on the difficult problem of allowing p to be unknown, developing a prior and computational inference that takes full account of order uncertainty. Specifically, the multiplicative gamma process is used to build a prior which encourages increasing shrinkage of the partial autocorrelations with increasing lag. Identifying the lag beyond which the partial autocorrelations become equal to zero then determines p. Based on classic time-series theory, a principled choice of truncation criterion identifies whether a partial autocorrelation matrix is effectively zero. Posterior inference utilizes Hamiltonian Monte Carlo via Stan. The work is illustrated in a substantive application to neural activity data to investigate ultradian brain rhythms.

Funding Statement

The first author was supported by the Engineering and Physical Sciences Research Council (EPSRC) Centre for Doctoral Training in Cloud Computing for Big Data (grant number EP/L015358/1). The second and fifth authors were supported by the EPSRC grant (grant number EP/N510129/1) via the Alan Turing Institute project “Streaming data modelling for real-time monitoring and forecasting”.

Acknowledgments

The authors would like to thank the anonymous referees, an Associate Editor and the Editor for their constructive comments that improved the quality of this paper.

Citation

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Rachel L. Binks. Sarah E. Heaps. Mariella Panagiotopoulou. Yujiang Wang. Darren J. Wilkinson. "Bayesian Inference on the Order of Stationary Vector Autoregressions." Bayesian Anal. Advance Publication 1 - 22, 2024. https://doi.org/10.1214/24-BA1499

Information

Published: 2024
First available in Project Euclid: 12 December 2024

Digital Object Identifier: 10.1214/24-BA1499

Subjects:
Primary: 62F15 , 62F30 , 62M10
Secondary: 62P10

Keywords: Electroencephalography (EEG) data , Granger causality , increasing shrinkage prior , Stan , time-series decomposition , unconstrained reparameterization

Rights: © 2024 International Society for Bayesian Analysis

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