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Individual versus superensemble forecasts of seasonal influenza outbreaks in the United States

机译:美国季节性流感暴发的个人预报与整体预报

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Recent research has produced a number of methods for forecasting seasonal influenza outbreaks. However, differences among the predicted outcomes of competing forecast methods can limit their use in decision-making. Here, we present a method for reconciling these differences using Bayesian model averaging. We generated retrospective forecasts of peak timing, peak incidence, and total incidence for seasonal influenza outbreaks in 48 states and 95 cities using 21 distinct forecast methods, and combined these individual forecasts to create weighted-average superensemble forecasts. We compared the relative performance of these individual and superensemble forecast methods by geographic location, timing of forecast, and influenza season. We find that, overall, the superensemble forecasts are more accurate than any individual forecast method and less prone to producing a poor forecast. Furthermore, we find that these advantages increase when the superensemble weights are stratified according to the characteristics of the forecast or geographic location. These findings indicate that different competing influenza prediction systems can be combined into a single more accurate forecast product for operational delivery in real time.
机译:最近的研究已经产生了许多预测季节性流感爆发的方法。但是,竞争性预测方法的预测结果之间的差异可能会限制其在决策中的使用。在这里,我们提出一种使用贝叶斯模型平均来调和这些差异的方法。我们使用21种不同的预测方法,对48个州和95个城市的季节性流感爆发的高峰时间,高峰发生率和总发生率进行了回顾性预测,并结合了这些单独的预测以创建加权平均超级整体预测。我们通过地理位置,预报时间和流感季节比较了这些个体和超综合预报方法的相对性能。我们发现,总体而言,超级集合预测比任何单个预测方法都更准确,并且更不容易产生不良预测。此外,我们发现,根据预测或地理位置的特征对超级集合权重进行分层时,这些优势会增加。这些发现表明,可以将不同的竞争性流感预测系统组合为一个更准确的预测产品,以便实时进行操作交付。

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