在COVID-19时期的贝叶斯var和先验校准

Benny Hartwig
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摘要

本文研究了几种广义贝叶斯向量自回归处理COVID-19极端观测的能力,并讨论了它们对用于推理和预测目的的先验校准的影响。它表明,首选模型将大流行事件解释为罕见事件,而不是宏观经济波动的持续增加。然而,对于预测而言,当使用大截面信息时,在离群鲁棒误差结构之间的选择就不那么重要了。除了误差结构外,本文还表明标准明尼苏达先验校准是大流行期间宏观经济传导渠道变化的重要来源,改变了实际变量和名义变量的可预测性。为了减轻这种敏感性,提出了一种异常鲁棒先验校准方法。
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Bayesian VARs and prior calibration in times of COVID-19
This paper investigates the ability of several generalized Bayesian vector autoregressions to cope with the extreme COVID-19 observations and discusses their impact on prior calibration for inference and forecasting purposes. It shows that the preferred model interprets the pandemic episode as a rare event rather than a persistent increase in macroeconomic volatility. For forecasting, the choice among outlier-robust error structures is less important, however, when a large cross-section of information is used. Besides the error structure, this paper shows that the standard Minnesota prior calibration is an important source of changing macroeconomic transmission channels during the pandemic, altering the predictability of real and nominal variables. To alleviate this sensitivity, an outlier-robust prior calibration is proposed.
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