Measuring international uncertainty using global vector autoregressions with drifting parameters
Abstract
This paper investigates the time-varying impacts of international macroeconomic uncertainty shocks. We use a global vector autoregressive specification with drifting coefficients and factor stochastic volatility in the errors to model six economies jointly. The measure of uncertainty is constructed endogenously by estimating a scalar driving the innovation variances of the latent factors, which is also included in the mean of the process. To achieve regularization, we use Bayesian techniques for estimation, and introduce a set of hierarchical global-local priors. The adopted priors center the model on a constant parameter specification with homoscedastic errors, but allow for time-variation if suggested by likelihood information. Moreover, we assume coefficients across economies to be similar, but provide sufficient flexibility via the hierarchical prior for country-specific idiosyncrasies. The results point towards pronounced real and financial effects of uncertainty shocks in all countries, with differences across economies and over time.
Keywords
Cite
@article{arxiv.1908.06325,
title = {Measuring international uncertainty using global vector autoregressions with drifting parameters},
author = {Michael Pfarrhofer},
journal= {arXiv preprint arXiv:1908.06325},
year = {2019}
}
Comments
JEL: C11, C55, E32, E66, G15; Keywords: Bayesian state-space modeling, hierarchical priors, factor stochastic volatility, stochastic volatility in mean