Adaptive County Level COVID-19 Forecast Models: Analysis and Improvement
Doe, Stewart W, Seekins, Tyler Russell, Fitzpatrick, David, Blanchard, Dawsin, Sekeh, Salimeh Yasaei
Accurately forecasting county level COVID-19 confirmed cases is crucial to optimizing medical resources. Forecasting emerging outbreaks pose a particular challenge because many existing forecasting techniques learn from historical seasons trends. Recurrent neural networks (RNNs) with LSTM-based cells are a logical choice of model due to their ability to learn temporal dynamics. In this paper, we adapt the state and county level influenza model, TDEFSI-LONLY, proposed in Wang et a. [l2020] to national and county level COVID-19 data. We show that this model poorly forecasts the current pandemic. We analyze the two week ahead forecasting capabilities of the TDEFSI-LONLY model with combinations of regularization techniques. Effective training of the TDEFSI-LONLY model requires data augmentation, to overcome this challenge we utilize an SEIR model and present an inter-county mixing extension to this model to simulate sufficient training data. Further, we propose an alternate forecast model, {\it County Level Epidemiological Inference Recurrent Network} (\alg{}) that trains an LSTM backbone on national confirmed cases to learn a low dimensional time pattern and utilizes a time distributed dense layer to learn individual county confirmed case changes each day for a two weeks forecast. We show that the best, worst, and median state forecasts made using CLEIR-Net model are respectively New York, South Carolina, and Montana.
Jul-1-2020
- Country:
- South America > Brazil (0.04)
- Europe > Italy (0.04)
- North America
- Canada (0.04)
- United States
- New York (0.25)
- Montana (0.24)
- South Carolina (0.24)
- District of Columbia (0.04)
- New Jersey (0.04)
- Wisconsin (0.04)
- Connecticut (0.04)
- Hawaii (0.04)
- Arkansas > Cross County (0.04)
- Pennsylvania (0.04)
- Massachusetts (0.04)
- Maine > Penobscot County
- Orono (0.14)
- Asia
- South Korea (0.04)
- China > Hubei Province
- Wuhan (0.04)
- Genre:
- Research Report (0.50)
- Industry:
- Technology: