English

The EAS approach for graphical selection consistency in vector autoregression models

Methodology 2019-06-13 v1

Abstract

As evidenced by various recent and significant papers within the frequentist literature, along with numerous applications in macroeconomics, genomics, and neuroscience, there continues to be substantial interest to understand the theoretical estimation properties of high-dimensional vector autoregression (VAR) models. To date, however, while Bayesian VAR (BVAR) models have been developed and studied empirically (primarily in the econometrics literature) there exist very few theoretical investigations of the repeated sampling properties for BVAR models in the literature. In this direction, we construct methodology via the ε\varepsilon-admissibleadmissible subsets (EAS) approach for posterior-like inference based on a generalized fiducial distribution of relative model probabilities over all sets of active/inactive components (graphs) of the VAR transition matrix. We provide a mathematical proof of pairwisepairwise and strongstrong graphical selection consistency for the EAS approach for stable VAR(1) models which is robust to model misspecification, and demonstrate numerically that it is an effective strategy in high-dimensional settings.

Keywords

Cite

@article{arxiv.1906.04812,
  title  = {The EAS approach for graphical selection consistency in vector autoregression models},
  author = {Jonathan P Williams and Yuying Xie and Jan Hannig},
  journal= {arXiv preprint arXiv:1906.04812},
  year   = {2019}
}
R2 v1 2026-06-23T09:50:50.054Z