Most COVID-19 studies commonly report figures of the overall infection at a state- or county-level, reporting the aggregated number of cases in a particular region at one time. This aggregation tends to miss out on fine details of the propagation patterns of the virus. This paper is motivated by analyzing a high-resolution COVID-19 dataset in Cali, Colombia, that provides every confirmed case's exact location and time information, offering vital insights for the spatio-temporal interaction between individuals concerning the disease spread in a metropolis. We develop a non-stationary spatio-temporal point process, assuming that previously infected cases trigger newly confirmed ones, and introduce a neural network-based kernel to capture the spatially varying triggering effect. The neural network-based kernel is carefully crafted to enhance expressiveness while maintaining results interpretability. We also incorporate some exogenous influences imposed by city landmarks. The numerical results on real data demonstrate good predictive performances of our method compared to the state-of-the-art as well as its interpretable findings.
翻译:大部分COVID-19研究通常都报告州或县一级总体感染病例的数字,同时报告特定地区病例的总数。这一汇总往往会错失病毒传播模式的精细细节。本文件的动机是分析哥伦比亚卡利的高分辨率COVID-19数据集,提供每个经证实病例的确切位置和时间信息,为在大城市传播疾病的个人之间的时空相互作用提供重要见解。我们开发了一个非静止的时空点进程,假设先前感染病例触发新确认的病例,并引入一个基于神经网络的内核,以捕捉空间变化的触发效应。基于神经网络的内核经过仔细设计,以提高清晰度,同时保持结果的可解释性。我们还吸收了城市地标带来的一些外来影响。关于实际数据的数字结果显示我们的方法与最新数据及其可解释的结果相比的良好预测性表现。