Author: Medeiros, Marcelo C.; Street, Alexandre; Valladão, Davi; Vasconcelos, Gabriel; Zilberman, Eduardo
Title: Short-term Covid-19 forecast for latecomers() Cord-id: fnc5bsxf Document date: 2021_10_13
ID: fnc5bsxf
Snippet: The number of new Covid-19 cases is still high in several countries, despite the vaccination of the population. A number of countries are experiencing new and worse waves. Therefore, the availability of reliable forecasts for the number of cases and deaths in the coming days is of fundamental importance. We propose a simple statistical method for short-term real-time forecasting of the number of Covid-19 cases and fatalities in countries that are latecomers – i.e., countries where cases of the
Document: The number of new Covid-19 cases is still high in several countries, despite the vaccination of the population. A number of countries are experiencing new and worse waves. Therefore, the availability of reliable forecasts for the number of cases and deaths in the coming days is of fundamental importance. We propose a simple statistical method for short-term real-time forecasting of the number of Covid-19 cases and fatalities in countries that are latecomers – i.e., countries where cases of the disease started to appear some time after others. In particular, we propose a penalized (LASSO) regression with an error correction mechanism to construct a model of a latecomer in terms of the other countries that were at a similar stage of the pandemic some days before. By tracking the number of cases in those countries, we forecast through an adaptive rolling-window scheme the number of cases and deaths in the latecomer. We apply this methodology to 45 different countries and we show detailed results for four of them: Brazil, Chile, Mexico, and Portugal. We show that the methodology performs very well when compared to alternative methods. These forecasts aim to foster a better short-run management of the health system capacity and can be applied not only to countries but to different regions within a country, as well. Finally, the modeling framework derived in the paper can be applied to other infectious diseases.
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