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

27 October 2020
To Tat Dat
Protin Frédéric
Nguyen T.T. Hang
Martel Jules
N. Thang
Charles Piffault
Rodríguez Willy
Figueroa Susely
H. Lê
W. Tuschmann
N. Zung
ArXiv (abs)PDFHTML
Abstract

We introduce the concept of epidemic-fitted wavelets which comprise, in particular, as special cases the number I(t)I(t)I(t) of infectious individuals at time ttt 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 John 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.

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