Forecasting infectious disease prevalence with associated uncertainty using neural networks
Michael Morris

TL;DR
This paper introduces neural network frameworks with uncertainty estimates for infectious disease forecasting, demonstrating improved accuracy over existing models using influenza data and innovative architectures like IRNN and neural ODEs.
Contribution
It develops two novel neural network frameworks with uncertainty quantification for epidemic forecasting, integrating Web search data and mechanistic models.
Findings
IRNN reduces MAE by 10.3% and improves Skill by 17.1%.
Neural ODE models outperform IRNN0 by 16% in Skill.
Web search data enhances forecasting accuracy.
Abstract
Infectious diseases pose significant human and economic burdens. Accurately forecasting disease incidence can enable public health agencies to respond effectively to existing or emerging diseases. Despite progress in the field, developing accurate forecasting models remains a significant challenge. This thesis proposes two methodological frameworks using neural networks (NNs) with associated uncertainty estimates - a critical component limiting the application of NNs to epidemic forecasting thus far. We develop our frameworks by forecasting influenza-like illness (ILI) in the United States. Our first proposed method uses Web search activity data in conjunction with historical ILI rates as observations for training NN architectures. Our models incorporate Bayesian layers to produce uncertainty intervals, positioning themselves as legitimate alternatives to more conventional approaches.…
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Taxonomy
TopicsAdvanced Clustering Algorithms Research · Anomaly Detection Techniques and Applications
MethodsFocus
