Epidemic Dynamics via Wavelet Theory and Machine Learning with Applications to Covid-19

We introduce the concept of epidemic-fitted wavelets which comprise, in particular, as special cases the number I(t) of infectious individuals at time in classical SIR models and their derivatives. We present a novel method for modelling epidemic dynamics by a model selection method using wavelet th...

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Veröffentlicht in:Biology (Basel, Switzerland) Switzerland), 2020-12, Vol.9 (12), p.477
Hauptverfasser: Tat Dat, Tô, Frédéric, Protin, Hang, Nguyen T T, Jules, Martel, Duc Thang, Nguyen, Piffault, Charles, Willy, Rodríguez, Susely, Figueroa, Lê, Hông Vân, Tuschmann, Wilderich, Tien Zung, Nguyen
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Sprache:eng
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Zusammenfassung:We introduce the concept of epidemic-fitted wavelets which comprise, in particular, as special cases the number I(t) of infectious individuals at time in classical SIR models and their derivatives. We present a novel method for modelling epidemic dynamics by a model selection method using wavelet theory and, for its applications, machine learning-based curve fitting techniques. Our universal models are functions that are finite linear combinations of epidemic-fitted wavelets. We apply our method by modelling and forecasting, based on the Johns Hopkins University dataset, the spread of the current Covid-19 (SARS-CoV-2) epidemic in France, Germany, Italy and the Czech Republic, as well as in the US federal states New York and Florida.
ISSN:2079-7737
2079-7737
DOI:10.3390/biology9120477