This paper extends the canonical model of epidemiology, SIRD model, to allow for time varying parameters for real-time measurement of the stance of the COVID-19 pandemic. Time variation in model parameters is captured using the generalized autoregressive score modelling structure designed for the typically daily count data related to pandemic. The resulting specification permits a flexible yet parsimonious model structure with a very low computational cost. This is especially crucial at the onset of the pandemic when the data is scarce and the uncertainty is abundant. Full sample results show that countries including US, Brazil and Russia are still not able to contain the pandemic with the US having the worst performance. Furthermore, Iran and South Korea are likely to experience the second wave of the pandemic. A real-time exercise show that the proposed structure delivers timely and precise information on the current stance of the pandemic ahead of the competitors that use rolling window. This, in turn, transforms into accurate short-term predictions of the active cases. We further modify the model to allow for unreported cases. Results suggest that the effects of the presence of these cases on the estimation results diminish towards the end of sample with the increasing number of testing.
翻译:本文扩展了流行病学的典型模型,即SIRD模型,以便为实时测量COVID-19大流行的态势留出时间差异的参数。模型参数的时间变异利用为典型的与流行病有关的日常计数数据设计的通用自动递减评分建模结构来捕捉模型参数的变异。由此产生的规格允许使用一种灵活而又荒诞的模型结构,计算成本非常低。当数据稀少且不确定性很大时,这在大流行病爆发之初尤其重要。全面抽样结果显示,包括美国、巴西和俄罗斯在内的国家仍然无法控制这一流行病,美国的表现最差。此外,伊朗和韩国可能经历第二波大流行病。实时作业显示,拟议的结构提供了及时而准确的信息,说明使用滚动窗口的竞争者面前的大流行病现状。这反过来又转变为对活跃案例的准确短期预测。我们进一步修改模型,以允许出现未报告的案例。结果显示,这些案例的存在对估计结果的影响随着测试数量的增加而逐渐降低。