This paper considers the problem of forecasting real and financial macroeconomic variables across a large number of countries in the global economy. To this end a global vector autoregressive (GVAR) model previously estimated over the 1979Q1-2003Q4 period by Dees, de Mauro, Pesaran, and Smith (2007), is used to generate out-of-sample one quarter and four quarters ahead forecasts of real output, inflation, real equity prices, exchange rates and interest rates over the period 2004Q1-2005Q4. Forecasts are obtained for 134 variables from 26 regions made up of 33 countries covering about 90 % of world output. The forecasts are compared to typical benchmarks: univariate autoregressive and random walk models. Building on the forecast combination l...
We employ datasets for seven developed economies and consider four classes of multivariate forecasti...
This paper uses a time-varying parameter-panel vector autoregressive (TVP-PVAR) model to analyze the...
We analyze how modeling international dependencies improves forecasts for the global economy based o...
This paper considers the problem of forecasting real and financial macroeconomic variables across a ...
This paper develops a Bayesian variant of global vector autoregressive (B-GVAR) models to forecast a...
This article considers some of the technical issues involved in using the global vector autoregressi...
We compare a Global VAR model of actual and expected outputs with alternative models to assess the r...
This thesis aims to out-of-sample forecast the USD/EUR exchange rate using four macroeconomic variab...
This paper uses two-types of large-scale models, namely the Dynamic Factor Model (DFM) and Bayesian ...
Several recent articles have used vector autore-gressive (VAR) models to forecast national and regio...
We present evidence that global vectorautoregressive (GVAR) models produce significantly more accura...
This paper provides new indices of global macroeconomic uncertainty and investigates the cross-count...
This dissertation collects three independent essays in the area of Macroeconomics and Macroeconomic ...
The aim of this paper is to assess whether modeling structural change can help improving the accurac...
This dissertation consists of three chapters dealing with different topics in time series econometri...
We employ datasets for seven developed economies and consider four classes of multivariate forecasti...
This paper uses a time-varying parameter-panel vector autoregressive (TVP-PVAR) model to analyze the...
We analyze how modeling international dependencies improves forecasts for the global economy based o...
This paper considers the problem of forecasting real and financial macroeconomic variables across a ...
This paper develops a Bayesian variant of global vector autoregressive (B-GVAR) models to forecast a...
This article considers some of the technical issues involved in using the global vector autoregressi...
We compare a Global VAR model of actual and expected outputs with alternative models to assess the r...
This thesis aims to out-of-sample forecast the USD/EUR exchange rate using four macroeconomic variab...
This paper uses two-types of large-scale models, namely the Dynamic Factor Model (DFM) and Bayesian ...
Several recent articles have used vector autore-gressive (VAR) models to forecast national and regio...
We present evidence that global vectorautoregressive (GVAR) models produce significantly more accura...
This paper provides new indices of global macroeconomic uncertainty and investigates the cross-count...
This dissertation collects three independent essays in the area of Macroeconomics and Macroeconomic ...
The aim of this paper is to assess whether modeling structural change can help improving the accurac...
This dissertation consists of three chapters dealing with different topics in time series econometri...
We employ datasets for seven developed economies and consider four classes of multivariate forecasti...
This paper uses a time-varying parameter-panel vector autoregressive (TVP-PVAR) model to analyze the...
We analyze how modeling international dependencies improves forecasts for the global economy based o...