首页|Estimation of large dimensional time varying VARs using copulas

Estimation of large dimensional time varying VARs using copulas

扫码查看
This paper provides a simple, yet reliable, alternative to the (Bayesian) estimation of large multivariate VARs with time variation in the conditional mean equations and/or in the covariance structure. The original multivariate, n-dimensional model is treated as a set of n univariate estimation problems, and cross-dependence is handled through the use of a copula. This makes it possible to run the estimation of each univariate equation in parallel. Thus, only univariate distribution functions are needed when estimating the individual equations, which are often available in closed form, and easy to handle with MCMC (or other techniques). Thereafter, the individual posteriors are combined with the copula, so obtaining a joint posterior which can be easily resampled. We illustrate our approach using various examples of large time-varying parameter VARs with 129 and even 215 macroeconomic variables.

Vector AutoRegressionTime-varying parametersHeteroskedasticityCopulasBAYESIAN VECTOR AUTOREGRESSIONSMONETARY-POLICYSTOCHASTIC VOLATILITYMODEL SELECTIONLANGEVININFERENCESHOCKS

Tsionas, Mike G.、Izzeldin, Marwan、Trapani, Lorenzo

展开 >

Univ Lancaster

Univ Nottingham

2022

European Economic Review

European Economic Review

ISSHP
ISSN:0014-2921
年,卷(期):2022.141
  • 74