Hajlasz Michal, Pei Sen
Department of Computer Science, Columbia University, 500 W 120th St, New York, NY 10027, USA.
Department of Environmental Health Sciences, Mailman School of Public Health, Columbia University, 722 W 168th St, New York, NY 10032, USA.
PNAS Nexus. 2024 Jul 26;3(8):pgae308. doi: 10.1093/pnasnexus/pgae308. eCollection 2024 Aug.
Human mobility is fundamental to a range of applications including epidemic control, urban planning, and traffic engineering. While laws governing individual movement trajectories and population flows across locations have been extensively studied, the predictability of population-level mobility during the COVID-19 pandemic driven by specific activities such as work, shopping, and recreation remains elusive. Here we analyze mobility data for six place categories at the US county level from 2020 February 15 to 2021 November 23 and measure how the predictability of these mobility metrics changed during the COVID-19 pandemic. We quantify the time-varying predictability in each place category using an information-theoretic metric, permutation entropy. We find disparate predictability patterns across place categories over the course of the pandemic, suggesting differential behavioral changes in human activities perturbed by disease outbreaks. Notably, predictability change in foot traffic to residential locations is mostly in the opposite direction to other mobility categories. Specifically, visits to residences had the highest predictability during stay-at-home orders in March 2020, while visits to other location types had low predictability during this period. This pattern flipped after the lifting of restrictions during summer 2020. We identify four key factors, including weather conditions, population size, COVID-19 case growth, and government policies, and estimate their nonlinear effects on mobility predictability. Our findings provide insights on how people change their behaviors during public health emergencies and may inform improved interventions in future epidemics.
人类流动对于一系列应用至关重要,包括疫情防控、城市规划和交通工程。虽然关于个体移动轨迹和跨地区人口流动的规律已得到广泛研究,但由工作、购物和娱乐等特定活动驱动的新冠疫情期间人口层面流动的可预测性仍然难以捉摸。在此,我们分析了2020年2月15日至2021年11月23日美国县级六个场所类别的流动数据,并衡量了这些流动指标的可预测性在新冠疫情期间是如何变化的。我们使用一种信息论指标——排列熵来量化每个场所类别的时变可预测性。我们发现在疫情期间,不同场所类别的可预测性模式存在差异,这表明疾病爆发扰乱了人类活动中的不同行为变化。值得注意的是,前往居住场所的行人流量的可预测性变化方向大多与其他流动类别相反。具体而言,2020年3月居家令期间,前往居住场所的访问具有最高的可预测性,而在此期间前往其他场所类型的访问可预测性较低。这种模式在2020年夏季限制解除后发生了逆转。我们确定了四个关键因素,包括天气状况、人口规模、新冠病例增长和政府政策,并估计了它们对流动可预测性的非线性影响。我们的研究结果为人们在突发公共卫生事件期间如何改变行为提供了见解,并可能为未来疫情中改进干预措施提供参考。