As COVID-19 pandemic progresses, severe flu seasons may happen alongside an increase in cases in cases and death of COVID-19, causing severe burdens on health care resources and public safety. A consequence of a twindemic may be a mixture of two different infections in the same person at the same time, "flurona". Admist the raising trend of "flurona", forecasting both influenza outbreaks and COVID-19 waves in a timely manner is more urgent than ever, as accurate joint real-time tracking of the twindemic aids health organizations and policymakers in adequate preparation and decision making. Under the current pandemic, state-of-art influenza and COVID-19 forecasting models carry valuable domain information but face shortcomings under current complex disease dynamics, such as similarities in symptoms and public healthcare seeking patterns of the two diseases. Inspired by the inner-connection between influenza and COVID-19 activities, we propose ARGOX-Joint-Ensemble which allows us to combine historical influenza and COVID-19 disease forecasting models to a new ensemble framework that handles scenarios where flu and COVID co-exist. Our framework is able to emphasize learning from COVID-related or influenza signals, through a winner-takes-all ensemble fashion. Moreover, our experiments demonstrate that our approach is successful in adapting past influenza forecasting models to the current pandemic, while improving upon previous COVID-19 forecasting models, by steadily outperforming alternative benchmark methods, and remaining competitive with publicly available models.
翻译:随着COVID-19大流行的进展,严重流感季节可能与COVID-19案件和死亡病例的增加和死亡病例的增加同时发生,从而给保健资源和公共安全造成沉重负担。一种双重疾病的后果可能是同一人同时出现两种不同的感染“氟诺纳 ” 。由于流感与COVID-19活动之间的内在联系,我们提议采用ARCOX联合组合方式,使我们能够将历史流感和COVID-19疾病预测模型纳入新的组合框架,处理流感和COVID共同存在的各种情景。我们的框架通过不断改进的COVI方法,通过不断改进的COVI方法,稳步地展示了我们的CVI方法。