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Model averaging for multivariate multiple regression models
Authors:Rong Zhu  Xinyu Zhang
Institution:Academy of Mathematics and Systems Science, Chinese Academy of Sciences, Beijing, People's Republic of China
Abstract:The theories and applications of model averaging have been developed comprehensively in the past two decades. In this paper, we consider model averaging for multivariate multiple regression models. In order to make use of the correlation information of the dependent variables sufficiently, we propose a model averaging method based on Mahalanobis distance which is related to the correlation of the dependent variables. We prove the asymptotic optimality of the resulting Mahalanobis Mallows model averaging (MMMA) estimators under certain assumptions. In the simulation study, we show that the proposed MMMA estimators compare favourably with model averaging estimators based on AIC and BIC weights and the Mallows model averaging estimators from the single dependent variable regression models. We further apply our method to the real data on urbanization rate and the proportion of non-agricultural population in ethnic minority areas of China.
Keywords:Asymptotic optimality  Mahalanobis distance  Mallows criterion  model averaging  multivariate multiple regression model
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