新冠肺炎-19数据点的影响力有多大?菲律宾小规模DSGE估算模型的新见解

Lawrence B. Dacuycuy
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摘要

全球疫情引发的冲击继续重塑宏观经济格局,使国家增长前景黯淡,延长了家庭、企业和政府的普遍财务困境,并加剧了不确定性。使用菲律宾的小规模新凯恩斯动态随机一般均衡(DSGE)模型,我们检查了该模型对新冠肺炎数据点或极端观测的敏感性。相对于基准期(2002Q1至2019Q4)的估计,从2020年第一季度到全样本,极端数据点的加入逐渐恶化了模型的日志数据密度,这表明与2019冠状病毒病和其他自然灾害相关的冲击传播机制应纳入模型。然而,即使包含了所述极端观测值,只要在后验中值估计下评估识别方案,模型的参数也会被识别。从相对于基本样本的参数估计集来看,极端观测的影响是不均匀的,尤其是冲击的大小。但还有其他参数,尤其是泰勒规则中包含的参数,与一些家庭相关参数一样相对稳定。这些结果表明,需求、供应和货币政策冲击的标准误差大小进行了调整,以部分捕捉极端数据点的影响。
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How influential are COVID–19 data points? A fresh look at an estimated small scale DSGE model for the Philippines
Shocks emanating from the global pandemic continue to reshape the macroeconomic landscape—dimming national growth prospects, prolonging widespread financial distress among households, firms, and governments and heightening uncertainty. Using a small-scale New Keynesian Dynamic Stochastic General Equilibrium (DSGE) model for the Philippines, we examine the model’s sensitivity to COVID-19 datapoints or extreme observations. Relative to estimates during the base period (2002Q1 to 2019Q4), the inclusion of extreme datapoints worsens the model’s log data density progressively, from the consideration of the first quarter of 2020 to the full sample – an indication that shock propagation mechanisms associated with COVID–19 and other natural disasters should be integrated into the model. Even with the inclusion of said extreme observations, however, the model’s parameters are identified, provided identification schemes are evaluated at posterior median estimates. Judging from the sets of parameter estimates relative to the base sample, the effects of extreme observations are found to be non–uniform, especially the size of the shocks. But there are other parameters, notably those that are embedded in the Taylor rule, which are relatively as stable as some household related parameters. These results imply that the size of standard errors for demand, supply, and monetary policy shocks adjust to partially capture the impact of extreme datapoints.
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