Short-term forecasting of the coronavirus pandemic

Int J Forecast. 2022 Apr-Jun;38(2):453-466. doi: 10.1016/j.ijforecast.2020.09.003. Epub 2020 Sep 12.

Abstract

We have been publishing real-time forecasts of confirmed cases and deaths from coronavirus disease 2019 (COVID-19) since mid-March 2020 (published at www.doornik.com/COVID-19). These forecasts are short-term statistical extrapolations of past and current data. They assume that the underlying trend is informative regarding short-term developments but without requiring other assumptions about how the severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) virus is spreading, or whether preventative policies are effective. Thus, they are complementary to the forecasts obtained from epidemiological models. The forecasts are based on extracting trends from windows of data using machine learning and then computing the forecasts by applying some constraints to the flexible extracted trend. These methods have been applied previously to various other time series data and they performed well. They have also proved effective in the COVID-19 setting where they provided better forecasts than some epidemiological models in the earlier stages of the pandemic.

Keywords: Automatic forecasting; COVID-19; Epidemiology; Forecast averaging; Forecasting; Machine learning; Smoothing; Time series; Trend indicator saturation.