Forecasting using variational Bayesian inference in large vector autoregressions with hierarchical shrinkage

B-Tier
Journal: International Journal of Forecasting
Year: 2023
Volume: 39
Issue: 1
Pages: 346-363

Score contribution per author:

0.670 = (α=2.01 / 3 authors) × 1.0x B-tier

α: calibrated so average coauthorship-adjusted count equals average raw count

Abstract

Many recent papers in macroeconomics have used large vector autoregressions (VARs) involving 100 or more dependent variables. With so many parameters to estimate, Bayesian prior shrinkage is vital to achieve reasonable results. Computational concerns currently limit the range of priors used and render difficult the addition of empirically important features such as stochastic volatility to the large VAR. In this paper, we develop variational Bayesian methods for large VARs that overcome the computational hurdle and allow for Bayesian inference in large VARs with a range of hierarchical shrinkage priors and with time-varying volatilities. We demonstrate the computational feasibility and good forecast performance of our methods in an empirical application involving a large quarterly US macroeconomic data set.

Technical Details

RePEc Handle
repec:eee:intfor:v:39:y:2023:i:1:p:346-363
Journal Field
Econometrics
Author Count
3
Added to Database
2026-01-25