Rawat Siddharth, Deb Soudeep
Indian Institute of Management Bangalore, Bengaluru, India.
J Appl Stat. 2021 Aug 31;50(11-12):2310-2329. doi: 10.1080/02664763.2021.1970122. eCollection 2023.
Coronavirus pandemic has affected the whole world extensively and it is of immense importance to understand how the disease is spreading. In this work, we provide evidence of spatial dependence in the pandemic data and accordingly develop a new statistical technique that captures the spatio-temporal dependence pattern of the COVID-19 spread appropriately. The proposed model uses a separable Gaussian spatio-temporal process, in conjunction with an additive mean structure and a random error process. The model is implemented through a Bayesian framework, thereby providing a computational advantage over the classical way. We use state-level data from the United States of America in this study. We show that a quadratic trend pattern is most appropriate in this context. Interestingly, the population is found not to affect the numbers significantly, whereas the number of deaths in the previous week positively affects the spread of the disease. Residual diagnostics establish that the model is adequate enough to understand the spatio-temporal dependence pattern in the data. It is also shown to have superior predictive power than other spatial and temporal models. In fact, we show that the proposed approach can predict well for both short term (1 week) and long term (up to three months).
冠状病毒大流行已广泛影响全球,了解该疾病的传播方式极为重要。在这项工作中,我们提供了大流行数据中空间依赖性的证据,并据此开发了一种新的统计技术,该技术能恰当地捕捉新冠病毒传播的时空依赖性模式。所提出的模型使用了可分离的高斯时空过程,结合加法均值结构和随机误差过程。该模型通过贝叶斯框架实现,从而相对于传统方法具有计算优势。在本研究中,我们使用了来自美利坚合众国的州级数据。我们表明,在这种情况下二次趋势模式最为合适。有趣的是,发现人口对病例数没有显著影响,而前一周的死亡人数对疾病传播有正向影响。残差诊断表明该模型足以理解数据中的时空依赖性模式。还表明它比其他时空模型具有更强的预测能力。事实上,我们表明所提出的方法在短期(1周)和长期(长达三个月)都能进行良好的预测。