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Dynamic factor model with infinite-dimensional factor space: Forecasting

机译:具有无限维因子空间的动态因子模型:预测

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摘要

The paper compares the pseudo real-time forecasting performance of three dynamic factor models: (i) the standard principal component model introduced by Stock and Watson in 2002; (ii) the model based on generalized principal components, introduced by Forni, Hallin, Lippi, and Reichlin in 2005; (iii) the model recently proposed by Forni, Hallin, Lippi, and Zaffaroni in 2015. We employ a large monthly dataset of macroeconomic and financial time series for the US economy, which includes the Great Moderation, the Great Recession and the subsequent recovery (an update of the so-called Stock and Watson dataset). Using a rolling window for estimation and prediction, we find that model (iii) significantly outperforms models (i) and (ii) in the Great Moderation period for both industrial production and inflation, and that model (iii) is also the best method for inflation over the full sample. However, model (iii) is outperformed by models (ii) and (i) over the full sample for industrial production.
机译:本文比较了三种动态因子模型的伪实时预测性能:(i)Stock和Watson在2002年引入的标准主成分模型; (ii)2005年由Forni,Hallin,Lippi和Reichlin引入的基于广义主成分的模型; (iii)Forni,Hallin,Lippi和Zaffaroni最近在2015年提出的模型。我们采用了庞大的美国经济宏观和金融时间序列月度数据集,其中包括“大减缓”,“大衰退”和随后的复苏(所谓的Stock和Watson数据集的更新)。使用滚动窗口进行估计和预测,我们发现模型(iii)在工业生产和通货膨胀的大减速时期显着优于模型(i)和(ii),并且模型(iii)也是解决问题的最佳方法整个样本的通货膨胀。但是,在用于工业生产的全部样本中,模型(iii)优于模型(ii)和(i)。

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