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Extended Bayesian endemic–epidemic models to incorporate mobility data into COVID‐19 forecasting
Author(s) -
DouwesSchultz Dirk,
Sun Shuo,
Schmidt Alexandra M.,
Moodie Erica E. M.
Publication year - 2022
Publication title -
canadian journal of statistics
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.804
H-Index - 51
eISSN - 1708-945X
pISSN - 0319-5724
DOI - 10.1002/cjs.11723
Subject(s) - covid-19 , bayesian probability , econometrics , pandemic , computer science , artificial intelligence , virology , mathematics , medicine , outbreak , infectious disease (medical specialty) , disease , pathology
Forecasting the number of daily COVID‐19 cases is critical in the short‐term planning of hospital and other public resources. One potentially important piece of information for forecasting COVID‐19 cases is mobile device location data that measure the amount of time an individual spends at home. Endemic–epidemic (EE) time series models are recently proposed autoregressive models where the current mean case count is modelled as a weighted average of past case counts multiplied by an autoregressive rate, plus an endemic component. We extend EE models to include a distributed‐lag model in order to investigate the association between mobility and the number of reported COVID‐19 cases; we additionally include a weekly first‐order random walk to capture additional temporal variation. Further, we introduce a shifted negative binomial weighting scheme for the past counts that is more flexible than previously proposed weighting schemes. We perform inference under a Bayesian framework to incorporate parameter uncertainty into model forecasts. We illustrate our methods using data from four US counties.