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|a dc
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|a Rahmandad, Hazhir
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|a Xu, Ran
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|a Ghaffarzadegan, Navid
|e author
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|a Enhancing long-term forecasting: Learning from COVID-19 models
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|b Public Library of Science (PLoS),
|c 2022-08-04T17:40:07Z.
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|z Get fulltext
|u https://hdl.handle.net/1721.1/144230
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|a <jats:p>While much effort has gone into building predictive models of the COVID-19 pandemic, some have argued that early exponential growth combined with the stochastic nature of epidemics make the long-term prediction of contagion trajectories impossible. We conduct two complementary studies to assess model features supporting better long-term predictions. First, we leverage the diverse models contributing to the CDC repository of COVID-19 USA death projections to identify factors associated with prediction accuracy across different projection horizons. We find that better long-term predictions correlate with: (1) capturing the physics of transmission (instead of using black-box models); (2) projecting human behavioral reactions to an evolving pandemic; and (3) resetting state variables to account for randomness not captured in the model before starting projection. Second, we introduce a very simple model, SEIRb, that incorporates these features, and few other nuances, offers informative predictions for as far as 20-weeks ahead, with accuracy comparable with the best models in the CDC set. Key to the long-term predictive power of multi-wave COVID-19 trajectories is capturing behavioral responses endogenously: balancing feedbacks where the perceived risk of death continuously changes transmission rates through the adoption and relaxation of various Non-Pharmaceutical Interventions (NPIs).</jats:p>
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|a Article
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|t 10.1371/journal.pcbi.1010100
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|t PLOS Computational Biology
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