Abstract

As the COVID-19 outbreak evolves, accurate forecasting continues to play an extremely important role in informing policy decisions. In this article we present our continuous curation of a large data repository containing COVID-19 information from a range of sources. We use this data to develop predictions and corresponding prediction intervals for the short-term trajectory of COVID-19 cumulative death counts at the county level in the United States up to 2 weeks ahead. Using data from January 23 to June 20, 2020, we develop and combine multiple forecasts using ensembling techniques, resulting in an ensemble we refer to as combined linear and exponential predictors (CLEP). Our individual predictors include county-specific exponential and linear predictors, a shared exponential predictor that pools data together across counties, an expanded shared exponential predictor that uses data from neighboring counties, and a demographics-based shared exponential predictor. We use prediction errors from the past 5 days to assess the uncertainty of our death predictions, resulting in generally applicable prediction intervals, maximum (absolute) error prediction intervals (MEPI). MEPI achieves a coverage rate of more than 94% when averaged across counties for predicting cumulative recorded death counts 2 weeks in the future. Our forecasts are currently being used by the nonprofit organization Response4Life to determine the medical supply need for individual hospitals and have directly contributed to the distribution of medical supplies across the country. We hope that our forecasts and data repository at https://covidseverity.com <https://covidseverity.com> can help guide necessary county-specific decision making and help counties prepare for their continued fight against COVID-19.

Highlights

  • In recent months, the COVID-19 pandemic has dramatically changed the shape of our global society and economy to an extent modern civilization has never experienced

  • We find that combined linear and exponential predictors (CLEP) predictions are adaptive to the exponential and subexponential nature of COVID-19 outbreak, with errors of around 15% for 7-day-ahead predictions, and errors of around 30% for 14-day-ahead predictions

  • Data sets used by our predictors: In this article, we focus on predicting the number of recorded COVID-19–related cumulative death counts in each county

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Summary

Introduction

The COVID-19 pandemic has dramatically changed the shape of our global society and economy to an extent modern civilization has never experienced. The vast majority of countries, the United States included, were thoroughly unprepared for the situation we find ourselves in. There are currently many new efforts aimed at understanding and managing this evolving global pandemic. This article, together with the data we have collated (and continue to update), represents one such effort. Our goals are to provide access to a large data repository combining data from a range of different sources and to forecast short-term (up to 2 weeks) COVID-19 mortality at the county level in the United. We provide uncertainty assessments of our forecasts in the form of prediction intervals based on conformal inference (Vovk et al, 2005)

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