Exploring the Relationship Between COVID-19 Transmission and Population Mobility over Time

Tanmoy Bhowmik, Naveen Eluru
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Abstract

This study explores the dynamic relationship between COVID-19 transmission and transportation mobility, with an emphasis on understanding the time-varying bidirectional interplay across the different phases of the pandemic. To gain insight into this relationship, we analyzed county-level data on transmission and mobility patterns from the United States over a 74-week period using a comprehensive list of factors including: temporal factors, socio-demographics, health indicators, health care infrastructure attributes, and spatial factors. For our analysis, we proposed a simultaneous econometric model system that explicitly accounts for the bidirectional relationship between COVID-19 transmission and mobility patterns while also accounting for the influence of common unobserved factors on the two variables. The model results strongly support our hypothesis that COVID-19 transmission and mobility patterns are interconnected. Further, our findings show distinct phases of the bidirectional relationship influenced by behavior changes, vaccine availability, and the emergence of new variants. Additionally, we conducted a validation exercise on a hold-out sample to assess the robustness of our model. The results confirm the superiority of the simultaneous model system with enhanced interpretability and prediction capability. By analyzing data from several weeks for the COVID-19 pandemic, our study provides valuable insights into the evolving dynamics and potential strategies for future pandemics.
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探索 COVID-19 传播与人口随时间流动之间的关系
本研究探讨了 COVID-19 传播与交通流动性之间的动态关系,重点是了解大流行不同阶段的时变双向相互作用。为了深入了解这种关系,我们利用包括时间因素、社会人口统计、健康指标、医疗保健基础设施属性和空间因素在内的一系列综合因素,分析了美国 74 周内的县级传播和流动模式数据。在分析中,我们提出了一个同步计量经济学模型系统,该系统明确考虑了 COVID-19 传播与流动模式之间的双向关系,同时也考虑了共同的非观测因素对这两个变量的影响。模型结果有力地支持了我们的假设,即 COVID-19 传播与流动模式是相互关联的。此外,我们的研究结果表明,受行为变化、疫苗可用性和新变种出现的影响,这种双向关系会出现不同的阶段。此外,我们还对一个未接种样本进行了验证,以评估我们模型的稳健性。结果证实了同步模型系统的优越性,并增强了可解释性和预测能力。通过分析 COVID-19 大流行的数周数据,我们的研究为未来大流行的演变动态和潜在策略提供了宝贵的见解。
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