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Nonmechanistic forecasts of seasonal influenza with iterative one-week-ahead distributions

机译:提前一星期进行迭代的季节性流感的非机械性预测

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摘要

Accurate and reliable forecasts of seasonal epidemics of infectious disease can assist in the design of countermeasures and increase public awareness and preparedness. This article describes two main contributions we made recently toward this goal: a novel approach to probabilistic modeling of surveillance time series based on “delta densities”, and an optimization scheme for combining output from multiple forecasting methods into an adaptively weighted ensemble. Delta densities describe the probability distribution of the change between one observation and the next, conditioned on available data; chaining together nonparametric estimates of these distributions yields a model for an entire trajectory. Corresponding distributional forecasts cover more observed events than alternatives that treat the whole season as a unit, and improve upon multiple evaluation metrics when extracting key targets of interest to public health officials. Adaptively weighted ensembles integrate the results of multiple forecasting methods, such as delta density, using weights that can change from situation to situation. We treat selection of optimal weightings across forecasting methods as a separate estimation task, and describe an estimation procedure based on optimizing cross-validation performance. We consider some details of the data generation process, including data revisions and holiday effects, both in the construction of these forecasting methods and when performing retrospective evaluation. The delta density method and an adaptively weighted ensemble of other forecasting methods each improve significantly on the next best ensemble component when applied separately, and achieve even better cross-validated performance when used in conjunction. We submitted real-time forecasts based on these contributions as part of CDC’s 2015/2016 FluSight Collaborative Comparison. Among the fourteen submissions that season, this system was ranked by CDC as the most accurate.
机译:准确可靠地预测季节性传染病的流行可以帮助设计对策,并提高公众的意识和防范能力。本文介绍了我们最近为实现该目标所做的两个主要贡献:一种基于“增量密度”的监视时间序列概率建模的新颖方法,以及一种将多种预测方法的输出组合为自适应加权集合的优化方案。 Delta密度描述了一个观察值与另一个观察值之间变化的概率分布,其条件是可用数据为准;将这些分布的非参数估计值链接在一起,就可以得出整个轨迹的模型。相对于将整个季节作为一个整体的替代方法,相应的分布预测所涵盖的事件要多得多,并且在提取公共卫生官员感兴趣的关键指标时,可以改善多种评估指标。自适应加权的集合使用权重可能会因情况而异的方式,集成了多种预测方法(例如增量密度)的结果。我们将跨预测方法的最佳权重选择作为单独的评估任务,并描述了基于优化交叉验证性能的评估程序。我们在构建这些预测方法时以及在进行回顾性评估时都会考虑数据生成过程的一些细节,包括数据修订和假日影响。单独使用时,增量密度方法和其他预测方法的自适应加权集成分别显着改善了次佳的集成组件,并结合使用时可实现更好的交叉验证性能。我们根据这些贡献提交了实时预测,这是CDC 2015/2016 FluSight合作比较的一部分。在该季节的14个提交文件中,该系统被CDC评为最准确。

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