Identification of a time-varying SIR Model for Covid-19
Walter HMendes aselein, Diego Eckhard

TL;DR
This paper introduces a time-varying SIR model for Covid-19 that estimates dynamic transmission rates using optimization, demonstrating high accuracy in short-term epidemic forecasting with real data from Brazil.
Contribution
It proposes a novel SIR model with a time-varying transmission parameter and an optimization method to estimate it from data, improving long-term epidemic modeling.
Findings
Model achieved 0.13% error for 7-day ahead predictions.
Model achieved 0.6% error for 14-day ahead predictions.
Demonstrated strong forecasting ability with real epidemic data.
Abstract
Throughout human history, epidemics have been a constant presence. Understanding their dynamics is essential to predict scenarios and make substantiated decisions. Mathematical models are powerful tools to describe an epidemic behavior. Among the most used, the compartmental ones stand out, dividing population into classes with well-defined characteristics. One of the most known is the model, based on a set of differential equations describing the rates of change of three categories over time. These equations take into account parameters such as the disease transmission rate and the recovery rate, which both change over time. However, classical models use constant parameters and can not describe the behavior of a disease over long periods. In this work, it is proposed a model with time-varying transmission rate parameter with a method to estimate this parameter based on an…
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Taxonomy
TopicsCOVID-19 diagnosis using AI · Indoor and Outdoor Localization Technologies · Seismology and Earthquake Studies
MethodsSparse Evolutionary Training · Gradient-Based Decision Tree Ensembles
