The outbreaks of Coronavirus Disease 2019 (COVID-19) have impacted the world significantly. Modeling the trend of infection and real-time forecasting of cases can help decision making and control of the disease spread. However, data-driven methods such as recurrent neural networks (RNN) can perform poorly due to limited daily samples in time. In this work, we develop an integrated spatiotemporal model based on the epidemic differential equations (SIR) and RNN. The former after simplification and discretization is a compact model of temporal infection trend of a region while the latter models the effect of nearest neighboring regions. The latter captures latent spatial information. %that is not publicly reported. We trained and tested our model on COVID-19 data in Italy, and show that it out-performs existing temporal models (fully connected NN, SIR, ARIMA) in 1-day, 3-day, and 1-week ahead forecasting especially in the regime of limited training data.
翻译:2019年科罗纳病毒疾病(COVID-19)的爆发对世界产生了重大影响,对感染趋势和病例实时预报进行模拟,有助于决策和控制疾病的传播。然而,由于每天的样本有限,经常神经网络(RNN)等数据驱动方法在时间上表现不佳。在这项工作中,我们根据流行病差异方程式(SIR)和RNN开发了一个综合时空模型。在简化和分解后,前者是一个区域时间感染趋势的紧凑模型,而后者则模拟邻近区域的影响。后者捕捉潜在的空间信息。%这是没有公开报道的。我们在意大利对COVID-19数据模型进行了培训和测试,并表明该模型在1天、3天和1周前比现有的时间模型(完全连接的NN、SIR、ARIMA)完美,特别是在有限的培训数据系统中。