Conjugate priors allow for fast inference in large dimensional vector autoregressive (VAR) models but, at the same time, introduce the restriction that each equation features the same set of explanatory variables. This paper proposes a straightforward means of post-processing posterior estimates of a conjugate Bayesian VAR to effectively perform equation-specific covariate selection. Compared to existing techniques using shrinkage alone, our approach combines shrinkage and sparsity in both the VAR coefficients and the error variance-covariance matrices, greatly reducing estimation uncertainty in large dimensions while maintaining computational tractability. We illustrate our approach by means of two applications. The first application uses ...
Bayesian shrinkage priors have been very popular in estimating vector autoregressions (VARs) of poss...
This paper provides an empirical comparison of various selection and penalized regression approache...
This document introduces the R package BGVAR to estimate Bayesian global vector autoregressions (GVA...
Conjugate priors allow for fast inference in large dimensional vector autoregressive (VAR) models bu...
Vector autoregressive (VAR) models are frequently used for forecasting and impulse response analysis...
We develop a novel, highly scalable estimation method for large Bayesian Vector Autoregressive model...
Macroeconomists using large datasets often face the choice of working with either a large Vector Aut...
This paper proposes full-Bayes priors for time-varying parameter vector autoregressions (TVP-VARs) w...
Macroeconomists are increasingly working with large Vector Autoregressions (VARs) where the number o...
This paper proposes a simulation-free estimation algorithm for vector autoregressions (VARs) that al...
This paper proposes a simulation-free estimation algorithm for vector autoregressions (VARs) that al...
Time-varying parameter (TVP) models have the potential to be over-parameterized, particularly when t...
This paper compares frequentist risks of several Bayesian estimators of the VAR lag parameters and c...
Vectorautogressions (VARs) are widely applied when it comes to modeling and forecasting macroeconomi...
Bayesian shrinkage priors have been very popular in estimating vector autoregressions (VARs) of poss...
This paper provides an empirical comparison of various selection and penalized regression approache...
This document introduces the R package BGVAR to estimate Bayesian global vector autoregressions (GVA...
Conjugate priors allow for fast inference in large dimensional vector autoregressive (VAR) models bu...
Vector autoregressive (VAR) models are frequently used for forecasting and impulse response analysis...
We develop a novel, highly scalable estimation method for large Bayesian Vector Autoregressive model...
Macroeconomists using large datasets often face the choice of working with either a large Vector Aut...
This paper proposes full-Bayes priors for time-varying parameter vector autoregressions (TVP-VARs) w...
Macroeconomists are increasingly working with large Vector Autoregressions (VARs) where the number o...
This paper proposes a simulation-free estimation algorithm for vector autoregressions (VARs) that al...
This paper proposes a simulation-free estimation algorithm for vector autoregressions (VARs) that al...
Time-varying parameter (TVP) models have the potential to be over-parameterized, particularly when t...
This paper compares frequentist risks of several Bayesian estimators of the VAR lag parameters and c...
Vectorautogressions (VARs) are widely applied when it comes to modeling and forecasting macroeconomi...
Bayesian shrinkage priors have been very popular in estimating vector autoregressions (VARs) of poss...
This paper provides an empirical comparison of various selection and penalized regression approache...
This document introduces the R package BGVAR to estimate Bayesian global vector autoregressions (GVA...