We develop the methodology and a detailed case study in use of a class of Bayesian predictive synthesis (BPS) models for multivariate time series forecasting. This extends the recently introduced foundational framework of BPS to the multivariate setting, with detailed application in the topical and challenging context of multi-step macroeconomic forecasting in a monetary policy setting. BPS evaluates-- sequentially and adaptively over time-- varying forecast biases and facets of miscalibration of individual forecast densities, and-- critically-- of time-varying inter-dependencies among them over multiple series. We develop new BPS methodology for a specific subclass of the dynamic multivariate latent factor models implied by BPS theory. Str...
The subject of this paper is modelling, estimation, inference and prediction for economic time serie...
Research on and debate about 'wise use' of explicitly Bayesian forecasting procedures has been wides...
We propose a multivariate combination approach to prediction based on a distributional state space r...
We present new methodology and a case study in use of a class of Bayesian predictive synthesis (BPS)...
We discuss Bayesian model uncertainty analysis and forecasting in sequential dynamic modeling of mul...
This PhD thesis comprises three essays which explore novel approaches to modelling and forecasting m...
Using a Bayesian framework this paper provides a multivariate combination approach to prediction bas...
__Abstract__ A Bayesian nonparametric predictive model is introduced to construct time-varying we...
This paper combines multivariate density forecasts of output growth, inflation and interest rates fr...
textabstractWe propose a multivariate combination approach to prediction based on a distributional s...
Macroeconomic practitioners frequently work with multivariate time series models such as VARs, facto...
This dissertation consists of three chapters that study the determinants of macroeconomic fluctuatio...
By employing datasets for seven developed economies and considering four classes of multi- variate f...
A model for U.S. macroeconomic time series that has been used for forecasting for several years is d...
This dissertation consists of three chapters that study the determinants of macroeconomic fluctuatio...
The subject of this paper is modelling, estimation, inference and prediction for economic time serie...
Research on and debate about 'wise use' of explicitly Bayesian forecasting procedures has been wides...
We propose a multivariate combination approach to prediction based on a distributional state space r...
We present new methodology and a case study in use of a class of Bayesian predictive synthesis (BPS)...
We discuss Bayesian model uncertainty analysis and forecasting in sequential dynamic modeling of mul...
This PhD thesis comprises three essays which explore novel approaches to modelling and forecasting m...
Using a Bayesian framework this paper provides a multivariate combination approach to prediction bas...
__Abstract__ A Bayesian nonparametric predictive model is introduced to construct time-varying we...
This paper combines multivariate density forecasts of output growth, inflation and interest rates fr...
textabstractWe propose a multivariate combination approach to prediction based on a distributional s...
Macroeconomic practitioners frequently work with multivariate time series models such as VARs, facto...
This dissertation consists of three chapters that study the determinants of macroeconomic fluctuatio...
By employing datasets for seven developed economies and considering four classes of multi- variate f...
A model for U.S. macroeconomic time series that has been used for forecasting for several years is d...
This dissertation consists of three chapters that study the determinants of macroeconomic fluctuatio...
The subject of this paper is modelling, estimation, inference and prediction for economic time serie...
Research on and debate about 'wise use' of explicitly Bayesian forecasting procedures has been wides...
We propose a multivariate combination approach to prediction based on a distributional state space r...