Most COVID-19 studies commonly report figures of the overall infection at a state- or county-level. This aggregation tends to miss out on fine details of virus propagation. In this paper, we analyze a high-resolution COVID-19 dataset in Cali, Colombia, that records the precise time and location of every confirmed case. We develop a non-stationary spatio-temporal point process equipped with a neural network-based kernel to capture the heterogeneous correlations among COVID-19 cases. The kernel is carefully crafted to enhance expressiveness while maintaining model interpretability. We also incorporate some exogenous influences imposed by city landmarks. Our approach outperforms the state-of-the-art in forecasting new COVID-19 cases with the capability to offer vital insights into the spatio-temporal interaction between individuals concerning the disease spread in a metropolis.
翻译:大部分COVID-19研究通常都报告州或县一级的总体感染数字。 这一总数往往忽略了病毒传播的精细细节。 在本文中,我们分析了哥伦比亚卡利的高分辨率COVID-19数据集,该数据集记录了每个已证实案例的确切时间和位置。我们开发了一个非静止的时空点过程,配有神经网络内核,以捕捉COVID-19案例之间的异质关联。内核是精心设计的,目的是提高表达性,同时保持模型可解释性。我们还吸收了城市地标带来的一些外来影响。我们的方法在预测新的COVID-19案例方面优于最新技术,能够对人与在地球上传播的疾病之间的瞬间相互作用提供至关重要的洞察力。</s>