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Now-casting inflation using high frequency data

机译:现在使用高频数据进行通胀预测

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摘要

This paper proposes a methodology tor now-casting and forecasting inflation using data with a sampling frequency which is higher than monthly. The data are modeled as a trading day frequency factor model, with missing observations in a state space representation. For the estimation we adopt the methodology proposed by Barlbura and Modugno (2010). In contrast to other existing approaches, the methodology used in this paper has the advantage of modeling all data within a single unified framework which allows one to disentangle the model-based news from each data release and subsequently to assess its impact on the forecast revision. The results show that the inclusion of high frequency data on energy and raw material prices in our data set contributes considerably to the gradual improvement of the model performance. As long as these data sources are included in our data set, the inclusion of financial variables does not make any considerable improvement to the now-casting accuracy.
机译:本文提出了一种方法,该方法可以使用高于每月的采样频率的数据进行即时预测和预测通货膨胀。数据被建模为交易日频率因子模型,但在状态空间表示中缺少观测值。为了进行估算,我们采用了Barlbura和Modugno(2010)提出的方法。与其他现有方法相比,本文使用的方法的优势在于可以在一个统一的框架内对所有数据进行建模,从而可以从每个数据发布中解开基于模型的新闻,并随后评估其对预测修订的影响。结果表明,在我们的数据集中包含有关能源和原材料价格的高频数据,对模型性能的逐步提高有很大贡献。只要这些数据源包含在我们的数据集中,财务变量的包含就不会对现在的预测准确性产生任何显着的改善。

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