Flexible Modeling of Epidemics with an Empirical Bayes Framework
Logan C. Brooks, David C. Farrow, Sangwon Hyun, Ryan J. Tibshirani,, Roni Rosenfeld

TL;DR
This paper introduces a flexible, data-driven Empirical Bayes framework for real-time epidemic forecasting, capable of modeling various epidemic behaviors and providing complete posterior distributions, demonstrated on influenza data.
Contribution
It presents a novel semiparametric Bayesian approach that captures epidemic variability without strict domain assumptions, improving forecast accuracy and applicability to other diseases.
Findings
Accurately predicted influenza season onset, peak, and duration.
Produced comprehensive posterior distributions for epidemic forecasts.
Outperformed baseline models in cross-validation tests.
Abstract
Seasonal influenza epidemics cause consistent, considerable, widespread loss annually in terms of economic burden, morbidity, and mortality. With access to accurate and reliable forecasts of a current or upcoming influenza epidemic's behavior, policy makers can design and implement more effective countermeasures. We developed a framework for in-season forecasts of epidemics using a semiparametric Empirical Bayes framework, and applied it to predict the weekly percentage of outpatient doctors visits for influenza-like illness, as well as the season onset, duration, peak time, and peak height, with and without additional data from Google Flu Trends, as part of the CDC's 2013--2014 "Predict the Influenza Season Challenge". Previous work on epidemic modeling has focused on developing mechanistic models of disease behavior and applying time series tools to explain historical data. However,…
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