临近预测全球经济增长:一个因子增强的混合频率方法

L. Ferrara, Clément Marsilli
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引用次数: 31

摘要

面对一些经济和金融的不确定性,准确评估全球经济状况对经济学家来说是一个巨大的挑战。国际货币基金组织(imf)在其定期发布的《世界经济展望》(World Economic Outlook)报告中提出了一个衡量全球GDP年增长率的指标,这通常被宏观经济学家视为临近预测的基准。在本文中,我们提出了一种替代方法来提供全球年增长率的月度临近预测。我们的方法建立在因子增强混合数据抽样(FA-MIDAS)模型的基础上,该模型使(i)能够考虑包括全球经济各个国家和部门在内的大型月度数据库,(ii)使用高频信息对低频宏观经济变量进行临近预测。伪实时结果表明,这种方法提供了可靠和及时的月度世界GDP年增长预测。
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Nowcasting Global Economic Growth: A Factor-Augmented Mixed-Frequency Approach
Facing several economic and financial uncertainties, assessing accurately global economic conditions is a great challenge for economists. The International Monetary Fund proposes within its periodic World Economic Outlook report a measure of the global GDP annual growth, that is often considered as the benchmark nowcast by macroeconomists. In this paper, we put forward an alternative approach to provide monthly nowcasts of the annual global growth rate. Our approach builds on a Factor-Augmented MIxed DAta Sampling (FA-MIDAS) model that enables (i) to account for a large monthly database including various countries and sectors of the global economy and (ii) to nowcast a low-frequency macroeconomic variable using higher-frequency information. Pseudo real-time results show that this approach provides reliable and timely nowcasts of the world GDP annual growth on a monthly basis.
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