Flusion: Integrating multiple data sources for accurate influenza predictions
Evan L. Ray, Yijin Wang, Russell D. Wolfinger, Nicholas G. Reich

TL;DR
Flusion is an ensemble model that combines multiple data sources and modeling techniques to improve influenza forecasting accuracy, demonstrating superior performance in CDC challenge results.
Contribution
This paper introduces Flusion, a novel ensemble approach integrating diverse influenza data sources with advanced models for improved predictions.
Findings
Flusion outperformed other models in CDC's 2023/24 influenza prediction challenge.
Joint training on multiple signals and locations significantly enhanced model performance.
Sharing information across data sources and regions is crucial for effective influenza forecasting.
Abstract
Over the last ten years, the US Centers for Disease Control and Prevention (CDC) has organized an annual influenza forecasting challenge with the motivation that accurate probabilistic forecasts could improve situational awareness and yield more effective public health actions. Starting with the 2021/22 influenza season, the forecasting targets for this challenge have been based on hospital admissions reported in the CDC's National Healthcare Safety Network (NHSN) surveillance system. Reporting of influenza hospital admissions through NHSN began within the last few years, and as such only a limited amount of historical data are available for this signal. To produce forecasts in the presence of limited data for the target surveillance system, we augmented these data with two signals that have a longer historical record: 1) ILI+, which estimates the proportion of outpatient doctor visits…
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Taxonomy
TopicsInfluenza Virus Research Studies
MethodsSparse Evolutionary Training
