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Forecasting cointegrated nonstationary time series with time-varying variance

机译:与时变差的预测结合的非寓言时间序列

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In cointegrated vector autoregressive (VAR) models, error correction terms often have indeterminate effects on forecasting, thus we are concerned with inclusion or exclusion of the cointegration relation in forecast. This paper considers the model averaging strategies for cointegrated VAR models with heterogeneous variance or variance breaks. The estimated cointegration rank along with other data information are used to formulate the model averaging weights. This specific but unknown pattern of time-varying variances has nontrivial effects on the choices of model weights. Our numerical results strongly advocate the Mallows averaging estimator, but caution against the commonly used pre-testing approach. (C) 2016 Elsevier B.V. All rights reserved.
机译:在协整向量自回归(VAR)模型中,误差修正项对预测的影响往往是不确定的,因此我们关注的是预测中是否包含协整关系。本文研究具有异质方差或方差突变的协整VAR模型的模型平均策略。使用估计的协整秩和其他数据信息来制定模型平均权重。这种特定但未知的时变方差模式对模型权重的选择具有重要影响。我们的数值结果强烈支持Mallows平均估计,但对常用的预测试方法持谨慎态度。(C) 2016爱思唯尔B.V.版权所有。

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