While the combination of several or more models is often found to improve forecasts (Brandt and Bessler, Min and Zellner, Norwood and Schroeder), hypothesis tests are typically conducted using a single model approach 1 . Hypothesis tests and forecasts have similar goals; they seek to define a range over which a parameter should lie within a degree of confidence. If it is true that, on average, composite forecasts are more accurate than a single model's forecast, it might also be true that hypothesis tests using information from numerous models are, on average, more accurate in the sense of lower Type I and Type II errors than hypothesis tests using a single model
In this article, we propose new tests of equal predictive ability between nested models when factor-...
This paper proposes a framework for the analysis of the theoretical properties of forecast combinati...
This paper reviews important concepts and methods that are useful for hypothesis testing. First, we ...
While the combination of several or more models is often found to improve forecasts (Brandt and Bess...
In this paper we systematically compare forecasting accuracy of hypothesis testing procedures with t...
© 2011 by Oxford University Press. All rights reserved.This article focuses on recent developments i...
Copyright © 2014 Chuanjin Jiang et al.This is an open access article distributed under the Creative ...
A new method of assessing the comparative quality of forecasting models is introduced. This method f...
Despite a considerable literature on the combination of forecasts, there is little guidance regardin...
Despite a considerable literature on the combination of forecasts, there is little guidance regardin...
Combination forecasting takes all characters of each single forecasting method into consideration, a...
In this paper we demonstrate that forecast encompassing tests are valuable tools in getting an insig...
Tests for relative predictive accuracy have become a widespread adden-dum to forecast comparisons. M...
In this paper it is advocated to select a model only if it significantly contributes to the accuracy...
We consider combinations of subjective survey forecasts and model-based forecasts from linear and no...
In this article, we propose new tests of equal predictive ability between nested models when factor-...
This paper proposes a framework for the analysis of the theoretical properties of forecast combinati...
This paper reviews important concepts and methods that are useful for hypothesis testing. First, we ...
While the combination of several or more models is often found to improve forecasts (Brandt and Bess...
In this paper we systematically compare forecasting accuracy of hypothesis testing procedures with t...
© 2011 by Oxford University Press. All rights reserved.This article focuses on recent developments i...
Copyright © 2014 Chuanjin Jiang et al.This is an open access article distributed under the Creative ...
A new method of assessing the comparative quality of forecasting models is introduced. This method f...
Despite a considerable literature on the combination of forecasts, there is little guidance regardin...
Despite a considerable literature on the combination of forecasts, there is little guidance regardin...
Combination forecasting takes all characters of each single forecasting method into consideration, a...
In this paper we demonstrate that forecast encompassing tests are valuable tools in getting an insig...
Tests for relative predictive accuracy have become a widespread adden-dum to forecast comparisons. M...
In this paper it is advocated to select a model only if it significantly contributes to the accuracy...
We consider combinations of subjective survey forecasts and model-based forecasts from linear and no...
In this article, we propose new tests of equal predictive ability between nested models when factor-...
This paper proposes a framework for the analysis of the theoretical properties of forecast combinati...
This paper reviews important concepts and methods that are useful for hypothesis testing. First, we ...