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Variable selection, estimation and inference for multi-period forecasting problems

机译:多周期预测问题的变量选择,估计和推断

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摘要

This paper conducts a broad-based comparison of iterated and direct multi-period forecasting approaches applied to both univariate and multivariate models in the form of parsimonious factor-augmented vector autoregressions. To account for serial correlation in the residuals of the multi-period direct forecasting models we propose a new SURE-based estimation method and modified Akaike information criteria for model selection. Empirical analysis of the 170 variables studied by Marcellino, Stock and Watson (2006) shows that information in factors helps improve forecasting performance for most types of economic variables although it can also lead to larger biases. It also shows that SURE estimation and finite-sample modifications to the Akaike information criterion can improve the performance of the direct multi-period forecasts.
机译:本文以简化的因子增强向量自回归的形式,对应用于单变量和多变量模型的迭代和直接多周期预测方法进行了广泛的比较。为了解决多周期直接预测模型残差中的序列相关性,我们提出了一种新的基于SURE的估计方法和经过改进的Akaike信息准则用于模型选择。对Marcellino,Stock和Watson(2006)研究的170个变量的经验分析表明,因素信息有助于改善大多数类型的经济变量的预测绩效,尽管它也可能导致更大的偏差。它还表明,对Akaike信息准则的SURE估计和有限样本修改可以提高直接多周期预测的性能。

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