Subspace shrinkage in conjugate Bayesian vector autoregressions

J Appl Econ (Chichester Engl). 2023 Jun-Jul;38(4):556-576. doi: 10.1002/jae.2966. Epub 2023 Mar 15.

Abstract

Macroeconomists using large datasets often face the choice of working with either a large vector autoregression (VAR) or a factor model. In this paper, we develop a conjugate Bayesian VAR with a subspace shrinkage prior that combines the two. This prior shrinks towards the subspace which is defined by a factor model. Our approach allows for estimating the strength of the shrinkage and the number of factors. After establishing the theoretical properties of our prior, we show that it successfully detects the number of factors in simulations and that it leads to forecast improvements using US macroeconomic data.

Keywords: Bayesian VAR; principal component regression; subspace shrinkage.