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Model averaging prediction for time series models with a diverging number of parameters

机译:模型对时间序列模型的平均预测,具有发散数量的参数

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An important problem with the model averaging approach is the choice of weights. In this paper, a generalized Mallows model averaging (GMMA) criterion for choosing weights is developed in the context of an infinite order autoregressive (AR(infinity)) process. The GMMA method adapts to the circumstances in which the dimensions of candidate models can be large and increase with the sample size. The GMMA method is shown to be asymptotically optimal in the sense of achieving the lowest out-of-sample mean squared prediction error (MSPE) for both the independent-realization and the same-realization predictions, which, as a byproduct, solves a conjecture put forward by Hansen (2008) that the well-known Mallows model averaging criterion from Hansen (2007) is asymptotically optimal for predicting the future of a time series. The rate of the GMMA-based weight estimator tending to the optimal weight vector minimizing the independent-realization MSPE is derived as well. Both simulation experiment and real data analysis illustrate the merits of the GMMA method in the prediction of an AR(infinity) process. (C) 2020 Elsevier B.V. All rights reserved.
机译:模型平均法的一个重要问题是权重的选择。本文在无穷阶自回归(AR(infinity))过程的背景下,提出了一种选择权重的广义Mallows模型平均(GMMA)准则。GMMA方法适用于候选模型的维数可能较大且随样本量增加而增加的情况。GMMA方法在独立实现和相同实现预测的样本外均方预测误差(MSPE)最小的意义上被证明是渐近最优的,作为副产品,解决了Hansen(2008)提出的一个猜想,即Hansen(2007)提出的著名Mallows模型平均准则对于预测时间序列的未来是渐近最优的。文中还推导了基于GMMA的权值估计器趋向于最小化独立实现MSPE的最优权值向量的速率。仿真实验和实际数据分析都说明了GMMA方法在预测AR(无穷大)过程中的优点。(C) 2020爱思唯尔B.V.版权所有。

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