We introduce EINNs, a framework crafted for epidemic forecasting that builds upon the theoretical grounds provided by mechanistic models as well as the data-driven expressibility afforded by AI models, and their capabilities to ingest heterogeneous information. Although neural forecasting models have been successful in multiple tasks, predictions well-correlated with epidemic trends and long-term predictions remain open challenges. Epidemiological ODE models contain mechanisms that can guide us in these two tasks; however, they have limited capability of ingesting data sources and modeling composite signals. Thus, we propose to leverage work in physics-informed neural networks to learn latent epidemic dynamics and transfer relevant knowledge to another neural network which ingests multiple data sources and has more appropriate inductive bias. In contrast with previous work, we do not assume the observability of complete dynamics and do not need to numerically solve the ODE equations during training. Our thorough experiments on all US states and HHS regions for COVID-19 and influenza forecasting showcase the clear benefits of our approach in both short-term and long-term forecasting as well as in learning the mechanistic dynamics over other non-trivial alternatives.
翻译:我们引入了基于机械模型提供的理论依据以及AI模型所提供的数据驱动的可表达性及其吸收不同信息的能力的流行病预测框架EINNs。虽然神经预报模型在多项任务中取得了成功,但与流行病趋势和长期预测密切相关的预测仍然是尚未解决的挑战。流行病学指标模型包含能够指导我们完成这两项任务的机制;然而,它们获取数据来源和模拟综合信号的能力有限。因此,我们提议利用物理知情神经网络的工作,学习潜在的流行病动态,并将相关知识转让给另一个神经网络,后者利用多种数据源,并具有更适当的感知偏差。与以往的工作不同,我们并不承担完全动态的可视性,在培训期间不需要用数字方式解决脱氧核糖核酸的方程式。我们对所有美国州和HHHS区域进行COVID-19和流感预报的彻底实验,展示了我们在短期和长期预测以及学习其他非三选办法的机械动态方面的明显好处。