Random resampling numerical simulations applied to a SEIR compartmental model
NAGIOS: RODERIC FUNCIONANDO

Random resampling numerical simulations applied to a SEIR compartmental model

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Random resampling numerical simulations applied to a SEIR compartmental model

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Morillas Jurado, Francisco Gabriel; Valero, José
This document is a artículoDate2021

In this paper, we apply resampling techniques to a modified compartmental SEIR model which takes into account the existence of undetected infected people in an epidemic. In particular, we implement numerical simulations for the evolution of the first wave of the COVID-19 pandemic in Spain in 2020. We show, by using suitable measures of goodness, that the point estimates obtained by the bootstrap samples improve the ones of the original data. For example, the relative error of detected currently infected people is equal to 0.061 for the initial estimates, while it is reduced to 0.0538 for the mean over all bootstrap estimated series.

    Morillas Jurado, Francisco Gabriel Valero, José 2021 Random resampling numerical simulations applied to a SEIR compartmental model European Physical Journal Plus 136 10 1067
https://doi.org/10.1140/epjp/s13360-021-02003-9

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