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Forecasting time series of economic processes by model averaging across data frames of various lengths
Authors:Nikita A. Moiseev
Affiliation:Department of Mathematical Methods in Economics, Plekhanov Russian University of Economics, Moscow, Russian Federation
Abstract:This paper presents an extension of mean-squared forecast error (MSFE) model averaging for integrating linear regression models computed on data frames of various lengths. Proposed method is considered to be a preferable alternative to best model selection by various efficiency criteria such as Bayesian information criterion (BIC), Akaike information criterion (AIC), F-statistics and mean-squared error (MSE) as well as to Bayesian model averaging (BMA) and naïve simple forecast average. The method is developed to deal with possibly non-nested models having different number of observations and selects forecast weights by minimizing the unbiased estimator of MSFE. Proposed method also yields forecast confidence intervals with a given significance level what is not possible when applying other model averaging methods. In addition, out-of-sample simulation and empirical testing proves efficiency of such kind of averaging when forecasting economic processes.
Keywords:Data frame selection  Bayesian information criterion  Akaike information criterion  forecast combination  model averaging  interval forecast  mean-squared forecast error model averaging
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