Nowcasting World GDP Growth with High-Frequency Data

C. Jardet, Baptiste Meunier
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引用次数: 14

Abstract

The Covid-19 crisis has shown how high-frequency data can help tracking economic turning points in real-time. Our paper investigates whether high-frequency data can also improve the nowcasting performances for world GDP growth on quarterly or annual basis. To this end, we select a large dataset of 151 monthly and 39 weekly series for 17 advanced and emerging countries representing 68% of world GDP. Our approach builds on a Factor-Augmented MIxed DAta Sampling (FA-MIDAS) which allows us to take advantage of our large database and to combine different frequencies. Models that include weekly data significantly outperforms other models relying on monthly or quarterly indicators, both in- and out-of-sample. Breaking down our sample, we show that models with weekly data have similar nowcasting performances relative to other models during “normal” times but strongly outperform them during “crisis” episodes (2008-2009 and 2020). We finally construct a nowcasting model of annual world GDP growth incorporating weekly data which give timely (one every week) and accurate forecasts (close to IMF and OECD projections, but with a 1 to 3 months lead). Policy-wise, this model can provide an alternative “benchmark” projection for world GDP growth during crisis episodes when sudden swings in the economy make the usual “benchmark” projections (from the IMF or the OECD) rapidly outdated
用高频数据预测世界GDP增长
新冠肺炎危机表明,高频数据可以帮助实时跟踪经济转折点。本文研究了高频数据是否也能提高世界GDP季度或年度增长的临近预报性能。为此,我们选择了17个发达和新兴国家的151个月度和39个每周的大数据集,这些国家占世界GDP的68%。我们的方法建立在因子增强混合数据采样(FA-MIDAS)的基础上,它允许我们利用我们的大型数据库并组合不同的频率。包括每周数据的模型明显优于其他依赖月度或季度指标的模型,无论是样本内还是样本外。通过对样本的分析,我们发现,在“正常”时期,每周数据的模型与其他模型的临近预测表现相似,但在“危机”时期(2008-2009年和2020年),其表现明显优于其他模型。最后,我们构建了一个包含每周数据的世界年度GDP增长临近预测模型,该模型给出了及时(每周一个)和准确的预测(接近IMF和OECD的预测,但领先1到3个月)。在政策方面,当经济的突然波动使通常的“基准”预测(来自国际货币基金组织或经合组织)迅速过时时,该模型可以在危机期间为世界GDP增长提供另一种“基准”预测
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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