Download PDFOpen PDF in browserCharacterizing the Divergence Between Two Different Models for Fitting and Forecasting the COVID-19 PandemicEasyChair Preprint 546410 pages•Date: May 4, 2021AbstractSince the novel Coronavirus (COVID-19) has been announced as a global pandemic, researchers from different disciplines have attempted to describe and forecast the spread of COVID-19. Some recent studies try to predict the future trend of the COVID-19 pandemic by deep learning, e.g., the long short-term memory (LSTM), but most works focus on the compartmental epidemic model based curve fitting and forecast. The susceptible-infected-removed (SIR) model and the susceptible-exposed-infected-removed (SEIR) model are two most commonly used compartmental models. The question is to what extent the choice of epidemic models will affect the fitting and long-term forecast performance. In this work, we compared the fitting and prediction performance by considering and ignoring the exposed state to characterize the divergence between these two different models. Keyphrases: COVID-19 pandemic, Exposed state, forecast
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