A large number of models have been developed in the literature to analyze and forecast changes in output dynamics. The objective of this paper was to compare the predictive ability of univariate and bivariate models, in terms of forecasting US gross national product (GNP) growth at different forecasting horizons, with the bivariate models containing information on a measure of economic uncertainty. Based on point and density forecast accuracy measures, as well as on equal predictive ability (EPA) and superior predictive ability (SPA) tests, we evaluate the relative forecasting performance of different model specifications over the quarterly period of 1919:Q2 until 2014:Q4. We find that the economic policy uncertainty (EPU) index should impr...
We estimate Boosted Regression Trees (BRT) on a sample of monthly data that extends back to 1889 to ...
We consider the impact of data revisions on the forecast performance of a SETAR regime-switching mod...
We forecast US output growth using an array of both Classical and Bayesian models including the rece...
First published: 11 April 2018A large number of models have been developed in the literature to anal...
This paper uses a time-varying parameter-panel vector autoregressive (TVP-PVAR) model to analyze the...
Should we run one regression forecast? We confront the Bayesian Model Averag-ing (BMA) with two majo...
This paper analyzes the performance of the monthly economic policy uncertainty (EPU) index in predic...
The aggregation of the variables that compose an indicator, as GDP, which should be forecasted, is n...
AbstractWe use probit recession forecasting models to assess the ability of economic policy uncertai...
We consider the impact of data revisions on the forecast performance of a SETAR regime-switching mod...
We forecast macroeconomic and financial uncertainties of the USA over the period of 1960:Q3 to 2018:...
High forecasting power is essential for understanding scientific relationships. In economics, foreca...
Numerous time series models are available for forecasting economic output. Autoregressive models wer...
markdownabstract__Abstract__ Time varying patterns in US growth are analyzed using various univar...
Uncertainty about the future affects economic decisions today since there is an option value to post...
We estimate Boosted Regression Trees (BRT) on a sample of monthly data that extends back to 1889 to ...
We consider the impact of data revisions on the forecast performance of a SETAR regime-switching mod...
We forecast US output growth using an array of both Classical and Bayesian models including the rece...
First published: 11 April 2018A large number of models have been developed in the literature to anal...
This paper uses a time-varying parameter-panel vector autoregressive (TVP-PVAR) model to analyze the...
Should we run one regression forecast? We confront the Bayesian Model Averag-ing (BMA) with two majo...
This paper analyzes the performance of the monthly economic policy uncertainty (EPU) index in predic...
The aggregation of the variables that compose an indicator, as GDP, which should be forecasted, is n...
AbstractWe use probit recession forecasting models to assess the ability of economic policy uncertai...
We consider the impact of data revisions on the forecast performance of a SETAR regime-switching mod...
We forecast macroeconomic and financial uncertainties of the USA over the period of 1960:Q3 to 2018:...
High forecasting power is essential for understanding scientific relationships. In economics, foreca...
Numerous time series models are available for forecasting economic output. Autoregressive models wer...
markdownabstract__Abstract__ Time varying patterns in US growth are analyzed using various univar...
Uncertainty about the future affects economic decisions today since there is an option value to post...
We estimate Boosted Regression Trees (BRT) on a sample of monthly data that extends back to 1889 to ...
We consider the impact of data revisions on the forecast performance of a SETAR regime-switching mod...
We forecast US output growth using an array of both Classical and Bayesian models including the rece...