Abstract
We propose the SH model, a simplified version of the well-known SIR compartmental model of infectious diseases. With optimized parameters and initial conditions, this time-invariant two-parameter two-dimensional model is able to fit COVID-19 hospitalization data over several months with high accuracy (e.g., the root rela-tive squared error is below 10% for Belgium over the period from 2020-03-15 to 2020-07-15). Moreover, we observed that, when the model is trained on a suitable three-week period around the first hospitalization peak for Belgium, it forecasts the subsequent two months with mean absolute percentage error (MAPE) under 4%. We repeated the experiment for each French department and found 14 of them where the MAPE was below 20%. However, when the model is trained in the in-crease phase, it is less successful at forecasting the subsequent evolution.
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Absil, P. A., Diao, O., & Diallo, M. (2021). Assessment of COVID-19 Hospitalization Forecasts from a Simplified SIR Model. Letters in Biomathematics, 8(1), 215–228. https://doi.org/10.30707/lib8.1.1682013528.154572
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