Using Time-varying Volatility for Identification in Vector Autoregressions
Auteur : Andrea Carriero, Todd E. Clark, Massimiliano Marcellino
Date de publication : 2021
Éditeur : Centre for Economic Policy Research
Nombre de pages : 72
Résumé du livre
We develop a structural vector autoregression with stochastic volatility in which one of the variables can impact both the mean and the variance of the other variables. We provide conditional posterior distributions for this model, develop an MCMC algorithm for estimation, and show how stochastic volatility can be used to provide useful restrictions for the identification of structural shocks. We then use the model with US data to show that some variables have a significant contemporaneous feedback effect on macroeconomic uncertainty, and overlooking this channel can lead to distortions in the estimated effects of uncertainty on the economy.