Pandemic(epidemic) modeling, aiming at disease spreading analysis, has always been a popular research topic especially following the outbreak of COVID-19 in 2019. Some representative models including SIR-based deep learning prediction models have shown satisfactory performance. However, one major drawback for them is that they fall short in their long-term predictive ability. Although graph convolutional networks (GCN) also perform well, their edge representations do not contain complete information and it can lead to biases. Another drawback is that they usually use input features which they are unable to predict. Hence, those models are unable to predict further future. We propose a model that can propagate predictions further into the future and it has better edge representations. In particular, we model the pandemic as a spatial-temporal graph whose edges represent the transition of infections and are learned by our model. We use a two-stream framework that contains GCN and recursive structures (GRU) with an attention mechanism. Our model enables mobility analysis that provides an effective toolbox for public health researchers and policy makers to predict how different lock-down strategies that actively control mobility can influence the spread of pandemics. Experiments show that our model outperforms others in its long-term predictive power. Moreover, we simulate the effects of certain policies and predict their impacts on infection control.
翻译:特别是2019年COVID-19爆发后,一些具有代表性的模式,包括基于SIR的深层学习预测模型,都表现出令人满意的业绩。然而,它们的一个主要缺点是,它们长期的预测能力不足。虽然图象变迁网络(GCN)也表现良好,但其边缘表征并不包含完整的信息,并可能导致偏差。另一个缺点是它们通常使用他们无法预测的投入特征。因此,这些模型无法预测未来。我们提出了一个模型,可以进一步向未来传播预测,而且其边缘图示效果更好。特别是,我们将这种流行病模型作为空间时空图,其边缘代表着感染的转变,并且从我们的模型中学习。我们使用一个包含GCN和循环结构(GRU)的双流框架,并带有关注机制。我们的模型使得流动性分析能够为公共卫生研究人员和决策者提供一个有效的工具箱,以预测如何将不同的封闭式战略进一步传播到未来,从而能够积极控制其传染力的传播。实验显示我们长期控制其感染政策的模型。