Understanding the spread of COVID-19 has been the subject of numerous studies, highlighting the significance of reliable epidemic models. Here, we introduce a novel epidemic model using a latent Hawkes process with temporal covariates for modelling the infections. Unlike other models, we model the reported cases via a probability distribution driven by the underlying Hawkes process. Modelling the infections via a Hawkes process allows us to estimate by whom an infected individual was infected. We propose a Kernel Density Particle Filter (KDPF) for inference of both latent cases and reproduction number and for predicting the new cases in the near future. The computational effort is proportional to the number of infections making it possible to use particle filter type algorithms, such as the KDPF. We demonstrate the performance of the proposed algorithm on synthetic data sets and COVID-19 reported cases in various local authorities in the UK, and benchmark our model to alternative approaches.
翻译:了解COVID-19的传播是许多研究的主题,突出了可靠的流行病模型的重要性。在这里,我们采用了一种新型的流行病模型,使用潜伏的霍克斯过程和时间性共变来模拟感染。与其他模型不同,我们通过基本霍克斯过程驱动的概率分布来模拟所报告的病例。通过霍克斯过程来模拟感染,使我们能够估计受感染者被感染者被感染者是谁。我们建议使用内核密度粒子过滤器(KDPF)来推断潜在病例和生殖编号,并在不久的将来预测新的病例。计算努力与感染人数成比例,从而可以使用粒子过滤器的算法,如KDPF。我们展示了拟议的合成数据集算法和COVID-19报告案例在联合王国各地方当局的绩效,并将我们的模型作为替代方法的基准。