Publication | Open Access
Examining COVID-19 Forecasting using Spatio-Temporal Graph Neural Networks
148
Citations
25
References
2020
Year
Forecasting MethodologyGraph Neural NetworkEngineeringMachine LearningData SciencePredictive AnalyticsCovid-19 PandemicCovid-19 ForecastingDisease SurveillanceNovel Forecasting ApproachTemporal InformationForecastingComputational EpidemiologyDeep LearningBig Spatiotemporal Data AnalyticsEpidemiologyCovid-19
In this work, we examine a novel forecasting approach for COVID-19 case prediction that uses Graph Neural Networks and mobility data. In contrast to existing time series forecasting models, the proposed approach learns from a single large-scale spatio-temporal graph, where nodes represent the region-level human mobility, spatial edges represent the human mobility based inter-region connectivity, and temporal edges represent node features through time. We evaluate this approach on the US county level COVID-19 dataset, and demonstrate that the rich spatial and temporal information leveraged by the graph neural network allows the model to learn complex dynamics. We show a 6% reduction of RMSLE and an absolute Pearson Correlation improvement from 0.9978 to 0.998 compared to the best performing baseline models. This novel source of information combined with graph based deep learning approaches can be a powerful tool to understand the spread and evolution of COVID-19. We encourage others to further develop a novel modeling paradigm for infectious disease based on GNNs and high resolution mobility data.
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