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Dynamical SEIR Model With Information Entropy Using COVID-19 as a Case Study

Qi Nie, Yifeng Liu, Dong Zhang, Hao Jiang

2021IEEE Transactions on Computational Social Systems34 citationsDOIOpen Access PDF

Abstract

Social network information is a measure of the number of infections. Understanding the effect of social network information on disease spread can help improve epidemic forecasting and uncover preventive measures. Many driving factors for the transmission mechanism of infectious diseases remain unclear. Some experts believe that redundant information on social media may increase people's panic to evade the restrictions or refuse to report their symptoms, which increases the actual infection rate. We analyze the engagement in the COVID-19 topics on the Internet and find that the infection rate is not only related to the total amount of information. In our research, information entropy is introduced into the quantification of the impact of social network information. We find that the amount of information with different distributions has different effects on disease transmission. Furthermore, we build a new dynamic susceptible-exposed-infected-recovered (SEIR) model with information entropy to simulate the epidemic situation in China. Simulation results show that our modified model is effective in predicting the COVID-19 epidemic peaks and sizes.

Topics & Concepts

Epidemic modelEntropy (arrow of time)Computer scienceThe InternetCoronavirus disease 2019 (COVID-19)Social mediaInformation transmissionTransmission (telecommunications)Data scienceEconometricsInfectious disease (medical specialty)DiseaseMathematicsEnvironmental healthComputer networkPopulationMedicineTelecommunicationsWorld Wide WebPhysicsPathologyQuantum mechanicsCOVID-19 epidemiological studiesMisinformation and Its ImpactsData-Driven Disease Surveillance