The paper addresses the issue of forecasting a large set of variables using multi-variate models. In particular, we propose three alternative reduced rank forecasting models and compare their predictive performance for US time series with the most promising existing alternatives, namely, factor models, large scale Bayesian VARs, and multivariate boosting. Specifically, we focus on classical reduced rank regression, a two-step procedure that applies, in turn, shrinkage and reduced rank restrictions, and the reduced rank Bayesian VAR of Geweke (1996). We find that using shrinkage and rank reduction in combination rather than separately improves substantially the accuracy of forecasts, both when the whole set of variables is to be forecast, ...
This paper builds on a simple unified representation of shrinkage Bayes estimators based on hierarch...
This paper provides an empirical comparison of various selection and penalized regression approache...
This paper shows that vector auto regression (VAR) with Bayesian shrinkage is an appropriate tool fo...
The paper addresses the issue of forecasting a large set of variables using multi-variate models. In...
The paper addresses the issue of forecasting a large set of variables using multivariate models. In ...
The paper addresses the issue of forecasting a large set of variables using multivariate models. In ...
This paper considers Bayesian regression with normal and double-exponential priors as forecasting me...
This paper builds on a simple unified representation of shrinkage Bayes estimators based on hierarch...
Abstract Since Quenouille's influential work on multiple time series, much progress has been ma...
This paper is motivated by the recent interest in the use of Bayesian VARs for forecasting, even in ...
In this paper we analyze the structure and the forecasting performance of the dynamic factor model. ...
This paper proposes a strategy for detecting and imposing reduced-rank restrictions in medium vector...
International audienceResearch on the analysis of time series has gained momentum in recent years, a...
This paper considers Bayesian regression with normal and double-exponential priors as forecasting me...
This paper builds on a simple unified representation of shrinkage Bayes estimators based on hierarch...
This paper provides an empirical comparison of various selection and penalized regression approache...
This paper shows that vector auto regression (VAR) with Bayesian shrinkage is an appropriate tool fo...
The paper addresses the issue of forecasting a large set of variables using multi-variate models. In...
The paper addresses the issue of forecasting a large set of variables using multivariate models. In ...
The paper addresses the issue of forecasting a large set of variables using multivariate models. In ...
This paper considers Bayesian regression with normal and double-exponential priors as forecasting me...
This paper builds on a simple unified representation of shrinkage Bayes estimators based on hierarch...
Abstract Since Quenouille's influential work on multiple time series, much progress has been ma...
This paper is motivated by the recent interest in the use of Bayesian VARs for forecasting, even in ...
In this paper we analyze the structure and the forecasting performance of the dynamic factor model. ...
This paper proposes a strategy for detecting and imposing reduced-rank restrictions in medium vector...
International audienceResearch on the analysis of time series has gained momentum in recent years, a...
This paper considers Bayesian regression with normal and double-exponential priors as forecasting me...
This paper builds on a simple unified representation of shrinkage Bayes estimators based on hierarch...
This paper provides an empirical comparison of various selection and penalized regression approache...
This paper shows that vector auto regression (VAR) with Bayesian shrinkage is an appropriate tool fo...