A Joint Impulse Response Function for Vector Autoregressive Models

Thomas F. P. Wiesen, Paul M. Beaumont
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Abstract

Many applications call for measuring the response due to shocks from several variables at once. We introduce a joint impulse response function (jIRF) that is independent of the order of the variables and allows for simultaneous shocks from multiple variables in the VAR, rather than one at a time as in the generalized IRF. The proposed jIRF controls for the cross-correlations of the several simultaneous shocks. As an application of the jIRF, we study the effect of the COVID-19 pandemic on trans-Atlantic volatility transmissions across large financial institutions and show that simply summing the generalized IRFs overestimates volatility transmissions.
向量自回归模型的联合脉冲响应函数
许多应用要求同时测量来自多个变量的冲击的响应。我们引入了一个联合脉冲响应函数(jIRF),它与变量的顺序无关,并允许VAR中的多个变量同时冲击,而不是像广义IRF那样一次一个。所提出的jIRF控制的相互关联的几个同时冲击。作为jIRF的应用,我们研究了COVID-19大流行对大型金融机构跨大西洋波动传导的影响,并表明简单地求和广义irf高估了波动传导。
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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