Forecasting the 2013--2014 Influenza Season using Wikipedia
Kyle S. Hickmann, Geoffrey Fairchild, Reid Priedhorsky, Nicholas, Generous, James M. Hyman, Alina Deshpande, Sara Y. Del Valle

TL;DR
This paper presents a method combining Wikipedia access logs and CDC reports to forecast influenza seasons, demonstrating early prediction capabilities and model bias adjustments, applicable to various disease outbreaks.
Contribution
The study introduces a novel approach integrating Wikipedia data with disease modeling for early and accurate influenza forecasting.
Findings
Wikipedia logs correlate strongly with ILI data
Forecasts predicted peak influenza weeks in advance
Model adjustments improve bias detection
Abstract
Infectious diseases are one of the leading causes of morbidity and mortality around the world; thus, forecasting their impact is crucial for planning an effective response strategy. According to the Centers for Disease Control and Prevention (CDC), seasonal influenza affects between 5% to 20% of the U.S. population and causes major economic impacts resulting from hospitalization and absenteeism. Understanding influenza dynamics and forecasting its impact is fundamental for developing prevention and mitigation strategies. We combine modern data assimilation methods with Wikipedia access logs and CDC influenza like illness (ILI) reports to create a weekly forecast for seasonal influenza. The methods are applied to the 2013--2014 influenza season but are sufficiently general to forecast any disease outbreak, given incidence or case count data. We adjust the initialization and…
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