English

Flexible shrinkage in high-dimensional Bayesian spatial autoregressive models

Econometrics 2019-02-06 v1

Abstract

This article introduces two absolutely continuous global-local shrinkage priors to enable stochastic variable selection in the context of high-dimensional matrix exponential spatial specifications. Existing approaches as a means to dealing with overparameterization problems in spatial autoregressive specifications typically rely on computationally demanding Bayesian model-averaging techniques. The proposed shrinkage priors can be implemented using Markov chain Monte Carlo methods in a flexible and efficient way. A simulation study is conducted to evaluate the performance of each of the shrinkage priors. Results suggest that they perform particularly well in high-dimensional environments, especially when the number of parameters to estimate exceeds the number of observations. For an empirical illustration we use pan-European regional economic growth data.

Keywords

Cite

@article{arxiv.1805.10822,
  title  = {Flexible shrinkage in high-dimensional Bayesian spatial autoregressive models},
  author = {Michael Pfarrhofer and Philipp Piribauer},
  journal= {arXiv preprint arXiv:1805.10822},
  year   = {2019}
}

Comments

Keywords: Matrix exponential spatial specification, model selection, shrinkage priors, hierarchical modeling; JEL: C11, C21, C52

R2 v1 2026-06-23T02:10:10.219Z