This paper considers forecast combination in a predictive regression. We construct the point forecast by combining predictions from all possible linear regression models given a set of potentially relevant predictors. We propose a frequentist model averaging criterion, an asymptotically unbiased estimator of the mean squared forecast error (MSFE), to select forecast weights. In contrast to the existing literature, we derive the MSFE in a local asymptotic framework without the i.i.d. normal assumption. This result allows us to decompose the MSFE into the bias and variance components and also to account for the correlations between candidate models. Monte Carlo simulations show that our averaging estimator has much lower MSFE than alternative...
In the past 20 years, model averaging has been developed as a better tool than model selection in st...
Numerous forecast combination techniques have been proposed. However, these do not systematically ou...
This paper proposes a framework for the analysis of the theoretical properties of forecast combinati...
This paper considers forecast combination in a predictive regression. We construct the point forecas...
This paper considers forecast combination with factor-augmented regression. In this frame-work, a la...
This paper proposes forecast combination based on the method of Mallows Model Averaging (MMA). The ...
Several frequentist and Bayesian model averaging schemes, including a new one that simultaneously al...
This paper proposes a new estimator for least squares model averaging. A model average estimator is ...
A data-driven method for frequentist model averaging weight choice is developed for general likeliho...
We extend the standard approach to Bayesian forecast combina-tion by forming the weights for the for...
textabstractIn this article we consider combining forecasts generated from the same model but over d...
When using linear models, a common practice is to find the single best model fit used in predictions...
This paper derives the limiting distributions of least squares averaging estimators for linear regre...
This chapter summarises the recent approaches to optimal forecast combination from a frequentist per...
This paper proposes a new model averaging estimator for the linear regression model with heteroskeda...
In the past 20 years, model averaging has been developed as a better tool than model selection in st...
Numerous forecast combination techniques have been proposed. However, these do not systematically ou...
This paper proposes a framework for the analysis of the theoretical properties of forecast combinati...
This paper considers forecast combination in a predictive regression. We construct the point forecas...
This paper considers forecast combination with factor-augmented regression. In this frame-work, a la...
This paper proposes forecast combination based on the method of Mallows Model Averaging (MMA). The ...
Several frequentist and Bayesian model averaging schemes, including a new one that simultaneously al...
This paper proposes a new estimator for least squares model averaging. A model average estimator is ...
A data-driven method for frequentist model averaging weight choice is developed for general likeliho...
We extend the standard approach to Bayesian forecast combina-tion by forming the weights for the for...
textabstractIn this article we consider combining forecasts generated from the same model but over d...
When using linear models, a common practice is to find the single best model fit used in predictions...
This paper derives the limiting distributions of least squares averaging estimators for linear regre...
This chapter summarises the recent approaches to optimal forecast combination from a frequentist per...
This paper proposes a new model averaging estimator for the linear regression model with heteroskeda...
In the past 20 years, model averaging has been developed as a better tool than model selection in st...
Numerous forecast combination techniques have been proposed. However, these do not systematically ou...
This paper proposes a framework for the analysis of the theoretical properties of forecast combinati...