COVID-19
Emerging12papers using it
2020first seen
The 'COVID-19' dataset/benchmark contains observed time-series data related to the spread of the virus and is used to evaluate forecasting methods for epidemic dynamics.
Papers using COVID-19 (12)
- EpiLLM: Unlocking the Potential of Large Language Models in Epidemic ForecastingPerformative Time-Series ForecastingAdvancing Real-time Pandemic Forecasting Using Large Language Models: A
COVID-19 Case StudyAdaptive County Level COVID-19 Forecast Models: Analysis and ImprovementImproving COVID-19 Forecasting using eXogenous VariablesTemporal Multiresolution Graph Neural Networks For Epidemic PredictionBeyond Hawkes: Neural Multi-event Forecasting on Spatio-temporal Point
ProcessesMSGNN: Multi-scale Spatio-temporal Graph Neural Network for Epidemic
ForecastingTG-PhyNN: An Enhanced Physically-Aware Graph Neural Network framework
for forecasting Spatio-Temporal DataMP-PINN: A Multi-Phase Physics-Informed Neural Network for Epidemic
ForecastingForecasting the changes between endemic and epidemic phases of a
contagious disease, with the example of COVID-19A Multilateral Attention-enhanced Deep Neural Network for Disease
Outbreak Forecasting: A Case Study on COVID-19