Gajardo Álvaro, Müller Hans-Georg
Department of Statistics, University of California, Davis, CA, USA.
J Appl Stat. 2021 Mar 29;50(11-12):2294-2309. doi: 10.1080/02664763.2021.1907839. eCollection 2023.
The study of events distributed over time which can be quantified as point processes has attracted much interest over the years due to its wide range of applications. It has recently gained new relevance due to the COVID-19 case and death processes associated with SARS-CoV-2 that characterize the COVID-19 pandemic and are observed across different countries. It is of interest to study the behavior of these point processes and how they may be related to covariates such as mobility restrictions, gross domestic product per capita, and fraction of population of older age. As infections and deaths in a region are intrinsically events that arrive at random times, a point process approach is natural for this setting. We adopt techniques for conditional functional point processes that target point processes as responses with vector covariates as predictors, to study the interaction and optimal transport between case and death processes and doubling times conditional on covariates.
多年来,对可量化为点过程的随时间分布事件的研究因其广泛的应用而备受关注。最近,由于与严重急性呼吸综合征冠状病毒2(SARS-CoV-2)相关的2019冠状病毒病(COVID-19)病例和死亡过程,它有了新的相关性,这些过程表征了COVID-19大流行,并且在不同国家都有观察到。研究这些点过程的行为以及它们如何与诸如行动限制、人均国内生产总值和老年人口比例等协变量相关是很有意义的。由于一个地区的感染和死亡本质上是在随机时间发生的事件,因此点过程方法在这种情况下是很自然的。我们采用针对以向量协变量作为预测变量、点过程作为响应的条件功能点过程的技术,来研究病例和死亡过程之间的相互作用以及最优传输,以及在协变量条件下的倍增时间。