This paper proposes forecast combination based on the method of Mallows Model Averaging (MMA). The method selects forecast weights by minimizing a Mallows criterion. This criterion is an asymptotically unbiased estimate of both the in-sample mean-squared error (MSE) and the out-of-sample one-step-ahead mean-squared forecast error (MSFE). Furthermore, the MMA weights are asymptotically mean-square optimal in the absence of time-series dependence. We show how to compute MMA weights in forecasting settings, and investigate the performance of the method in simple but illustrative simulation environments. We find that the MMA forecasts have low MSFE and have much lower maximum regret than other feasible forecasting methods, including equal wei...
Existing results on the properties and performance of forecast combinations have been derived in the...
Motivated by the common finding that linear autoregressive models forecast better than models that i...
Combination of forecasts from survey data is complicated by the frequent entry and exit in real time...
This paper considers the problem of selection of weights for averaging across least squares estimate...
This paper considers forecast combination in a predictive regression. We construct the point forecas...
This paper proposes a new estimator for least squares model averaging. A model average estimator is ...
This paper considers forecast combination with factor-augmented regression. In this frame-work, a la...
Numerous forecast combination techniques have been proposed. However, these do not systematically ou...
This paper is in response to a recent paper by Hansen (2007) who proposed an optimal model average e...
This paper proposes a framework for the analysis of the theoretical properties of forecast combinati...
summary:Employing recently derived asymptotic representation of the least trimmed squares estimator,...
Herein, a modified weighting for combined forecasting methods is established. These weights are used...
This chapter summarises the recent approaches to optimal forecast combination from a frequentist per...
Combining forecasts is an established approach for improving forecast accuracy. So-called optimal we...
We extend the standard approach to Bayesian forecast combina-tion by forming the weights for the for...
Existing results on the properties and performance of forecast combinations have been derived in the...
Motivated by the common finding that linear autoregressive models forecast better than models that i...
Combination of forecasts from survey data is complicated by the frequent entry and exit in real time...
This paper considers the problem of selection of weights for averaging across least squares estimate...
This paper considers forecast combination in a predictive regression. We construct the point forecas...
This paper proposes a new estimator for least squares model averaging. A model average estimator is ...
This paper considers forecast combination with factor-augmented regression. In this frame-work, a la...
Numerous forecast combination techniques have been proposed. However, these do not systematically ou...
This paper is in response to a recent paper by Hansen (2007) who proposed an optimal model average e...
This paper proposes a framework for the analysis of the theoretical properties of forecast combinati...
summary:Employing recently derived asymptotic representation of the least trimmed squares estimator,...
Herein, a modified weighting for combined forecasting methods is established. These weights are used...
This chapter summarises the recent approaches to optimal forecast combination from a frequentist per...
Combining forecasts is an established approach for improving forecast accuracy. So-called optimal we...
We extend the standard approach to Bayesian forecast combina-tion by forming the weights for the for...
Existing results on the properties and performance of forecast combinations have been derived in the...
Motivated by the common finding that linear autoregressive models forecast better than models that i...
Combination of forecasts from survey data is complicated by the frequent entry and exit in real time...