This paper describes the Bayesian SIR modeling of the 3 waves of Covid-19 in two contrasting US states during 2020-2021. A variety of models are evaluated at the county level for goodness-of-fit and an assessment of confounding predictors is also made. It is found that models with three deprivation predictors and neighborhood effects are important. In addition the work index from Google mobility was also found to provide increased explanation of the transmission dynamic.
翻译:本文描述了在2020-2021年期间在两个对比鲜明的美国州对三波Covid-19进行模拟的巴伊西亚SIR模型。在县一级对各种模型进行了评估,以获得良好的服务,并对混乱的预测器进行了评估。人们发现,具有三种剥夺预测器和邻里效应的模型很重要。此外,还发现谷歌流动工作指数为传输动态提供了更多解释。