Factor-augmented QVAR models: an observation-driven approach

IF 0.7 4区 经济学 Q3 ECONOMICS
Willy Alanya-Beltran
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引用次数: 0

Abstract

I develop and study a factor-augmented quasi-vector autoregressive (FAQVAR) model for economic policy analysis in tumultuous times. An observation-driven framework that exploits the information from the score of the model allows a maximum likelihood estimation. This multivariate FAQVAR model, which assumes a Student t error distribution, is robust to atypical observations such as the global financial crisis and the recent pandemic. The model outperforms the FAVAR moving average model because of the assumed heavy tails that capture the COVID-19 atypical data and other turbulent episodes. An empirical application to the U.S. economy assessing its monetary policy reveals that estimates and impulse responses are stable when considering the sample before and during COVID-19.
因子增强QVAR模型:一种观察驱动的方法
我开发和研究了一个因子增强的准向量自回归(FAQVAR)模型,用于经济政策分析在动荡时期。利用模型得分信息的观察驱动框架允许最大似然估计。这种假设Student t误差分布的多变量FAQVAR模型对全球金融危机和最近的大流行等非典型观测结果具有鲁棒性。该模型优于FAVAR移动平均模型,因为假设的重尾捕获了COVID-19非典型数据和其他湍流事件。对美国经济评估其货币政策的实证应用表明,在COVID-19之前和期间考虑样本时,估计和脉冲响应是稳定的。
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来源期刊
CiteScore
2.10
自引率
11.10%
发文量
59
期刊介绍: Macroeconomic Dynamics publishes theoretical, empirical or quantitative research of the highest standard. Papers are welcomed from all areas of macroeconomics and from all parts of the world. Major advances in macroeconomics without immediate policy applications will also be accepted, if they show potential for application in the future. Occasional book reviews, announcements, conference proceedings, special issues, interviews, dialogues, and surveys are also published.
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