How to Estimate a VAR after March 2020

M. Lenza, Giorgio E. Primiceri
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引用次数: 113

Abstract

This paper illustrates how to handle a sequence of extreme observations—such as those recorded during the COVID-19 pandemic—when estimating a Vector Autoregression, which is the most popular time-series model in macroeconomics. Our results show that the ad-hoc strategy of dropping these observations may be acceptable for the purpose of parameter estimation. However, disregarding these recent data is inappropriate for forecasting the future evolution of the economy, because it vastly underestimates uncertainty.
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如何估计2020年3月以后的VAR
本文说明了在估计宏观经济学中最流行的时间序列模型向量自回归时如何处理一系列极端观测,例如在COVID-19大流行期间记录的观测。我们的结果表明,删除这些观测值的临时策略对于参数估计的目的是可以接受的。然而,忽略这些最近的数据是不适合预测未来经济发展的,因为它大大低估了不确定性。
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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