BGVAR - Bayesian Global Vector Autoregressions
Estimation of Bayesian Global Vector Autoregressions
(BGVAR) with different prior setups and the possibility to
introduce stochastic volatility. Built-in priors include the
Minnesota, the stochastic search variable selection and
Normal-Gamma (NG) prior. For a reference see also Crespo
Cuaresma, J., Feldkircher, M. and F. Huber (2016) "Forecasting
with Global Vector Autoregressive Models: a Bayesian Approach",
Journal of Applied Econometrics, Vol. 31(7), pp. 1371-1391
<doi:10.1002/jae.2504>. Post-processing functions allow for
doing predictions, structurally identify the model with
short-run or sign-restrictions and compute impulse response
functions, historical decompositions and forecast error
variance decompositions. Plotting functions are also available.
The package has a companion paper: Boeck, M., Feldkircher, M.
and F. Huber (2022) "BGVAR: Bayesian Global Vector
Autoregressions with Shrinkage Priors in R", Journal of
Statistical Software, Vol. 104(9), pp. 1-28
<doi:10.18637/jss.v104.i09>.