论文标题
使用COVID-19的多个数据源检查深度学习模型,预测
Examining Deep Learning Models with Multiple Data Sources for COVID-19 Forecasting
论文作者
论文摘要
1918年流感大流行以来,COVID-19是最重要的公共卫生灾难。在诸如Covid-19之类的大流行期间,及时可靠的时空预测流行动力学至关重要。基于深度学习的预测时间序列模型最近已广受欢迎,并已成功用于流行预测。在这里,我们重点介绍了Covid-19预测的基于深度学习的模型的设计和分析。我们实施了多个基于神经网络的深度学习模型,并使用堆叠合奏技术将它们结合在一起。为了将多种因素在Covid-19传播中纳入效果,我们考虑了多种来源,例如COVID-19已确认,死亡案例计数数据和测试数据以获得更好的预测。为了克服训练数据的稀疏性并解决疾病的动态相关性,我们提出了基于聚类的培训,以进行高分辨率预测。由于各种时空效应,这些方法帮助我们确定某些区域群体的相似趋势。我们研究了提议的预测每周Covid-19-19县,州和国家级别的新案件的方法。进行和分析了COVID-19中不同时间序列模型之间的全面比较。结果表明,与更复杂的模型相比,简单的深度学习模型可以实现可比性或更好的性能。我们目前正在将我们的方法整合为我们提供州和联邦当局的每周预测的一部分。
The COVID-19 pandemic represents the most significant public health disaster since the 1918 influenza pandemic. During pandemics such as COVID-19, timely and reliable spatio-temporal forecasting of epidemic dynamics is crucial. Deep learning-based time series models for forecasting have recently gained popularity and have been successfully used for epidemic forecasting. Here we focus on the design and analysis of deep learning-based models for COVID-19 forecasting. We implement multiple recurrent neural network-based deep learning models and combine them using the stacking ensemble technique. In order to incorporate the effects of multiple factors in COVID-19 spread, we consider multiple sources such as COVID-19 confirmed and death case count data and testing data for better predictions. To overcome the sparsity of training data and to address the dynamic correlation of the disease, we propose clustering-based training for high-resolution forecasting. The methods help us to identify the similar trends of certain groups of regions due to various spatio-temporal effects. We examine the proposed method for forecasting weekly COVID-19 new confirmed cases at county-, state-, and country-level. A comprehensive comparison between different time series models in COVID-19 context is conducted and analyzed. The results show that simple deep learning models can achieve comparable or better performance when compared with more complicated models. We are currently integrating our methods as a part of our weekly forecasts that we provide state and federal authorities.