This paper develops methods for automatic selection of variables in Bayesian vector autoregressions (VARs) using the Gibbs sampler. In particular, I provide computationally efficient algorithms for stochastic variable selection in generic linear and nonlinear models, as well as models of large dimensions. The performance of the proposed variable selection method is assessed in forecasting three major macroeconomic time series of the UK economy. Data-based restrictions of VAR coefficients can help improve upon their unrestricted counterparts in forecasting, and in many cases they compare favorably to shrinkage estimators
We study the joint determination of the lag length, the dimension of the cointegrating space and the...
Vector autoregressions (VARs) are linear multivariate time-series models able to capture the joint d...
This paper reviews recent advances in the specification and estimation of Bayesian Vector Autoregres...
This paper develops methods for automatic selection of variables in Bayesian vector autoregressions ...
This paper develops methods for automatic selection of variables in Bayesian vector autoregressions ...
This paper examines forecasting performance of a vector autoregressive (VAR) model by a Bayesian sto...
This paper addresses the issue of improving the forecasting performance of vector autoregressions (V...
This paper builds a model which has two extensions over a standard VAR. The first of these is stocha...
This paper builds a model which has two extensions over a standard VAR. The first of these is stocha...
This paper compares multi-period forecasting performances by direct and iterated method using a Baye...
In this paper, we conduct Bayesian stochastic variable selection of Vector Autoregressive (VAR) mode...
This paper compares the performance of Bayesian variable selection approaches for spatial autoregres...
We consider forecast combination and, indirectly, model selection for VAR models when there is uncer...
Empirical work in macroeconometrics has been mostly restricted to using vector autoregressions (VARs...
Speci cation of the linear predictor for a generalised linear model requires de-termining which vari...
We study the joint determination of the lag length, the dimension of the cointegrating space and the...
Vector autoregressions (VARs) are linear multivariate time-series models able to capture the joint d...
This paper reviews recent advances in the specification and estimation of Bayesian Vector Autoregres...
This paper develops methods for automatic selection of variables in Bayesian vector autoregressions ...
This paper develops methods for automatic selection of variables in Bayesian vector autoregressions ...
This paper examines forecasting performance of a vector autoregressive (VAR) model by a Bayesian sto...
This paper addresses the issue of improving the forecasting performance of vector autoregressions (V...
This paper builds a model which has two extensions over a standard VAR. The first of these is stocha...
This paper builds a model which has two extensions over a standard VAR. The first of these is stocha...
This paper compares multi-period forecasting performances by direct and iterated method using a Baye...
In this paper, we conduct Bayesian stochastic variable selection of Vector Autoregressive (VAR) mode...
This paper compares the performance of Bayesian variable selection approaches for spatial autoregres...
We consider forecast combination and, indirectly, model selection for VAR models when there is uncer...
Empirical work in macroeconometrics has been mostly restricted to using vector autoregressions (VARs...
Speci cation of the linear predictor for a generalised linear model requires de-termining which vari...
We study the joint determination of the lag length, the dimension of the cointegrating space and the...
Vector autoregressions (VARs) are linear multivariate time-series models able to capture the joint d...
This paper reviews recent advances in the specification and estimation of Bayesian Vector Autoregres...