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动态分层状态空间预测。

Dynamic hierarchical state space forecasting.

机构信息

Department of Biostatistics and Health Data Science, Indiana University School of Medicine, Indianapolis, Indiana.

Department of Biostatistics, Epidemiology and Informatics, University of Pennsylvania, Philadelphia, Pennsylvania.

出版信息

Stat Med. 2024 Jun 15;43(13):2655-2671. doi: 10.1002/sim.10097. Epub 2024 May 1.

Abstract

In this paper, we aim to both borrow information from existing units and incorporate the target unit's history data in time series forecasting. We consider a situation when we have time series data from multiple units that share similar patterns when aligned in terms of an internal time. The internal time is defined as an index according to evolving features of interest. When mapped back to the calendar time, these time series can span different time intervals that can include the future calendar time of the targeted unit, over which we can borrow the information from other units in forecasting the targeted unit. We first build a hierarchical state space model for the multiple time series data in terms of the internal time, where the shared components capture the similarities among different units while allowing for unit-specific deviations. A conditional state space model is then constructed to incorporate the information of existing units as the prior information in forecasting the targeted unit. By running the Kalman filtering based on the conditional state space model on the targeted unit, we incorporate both the information from the other units and the history of the targeted unit. The forecasts are then transformed from internal time back into calendar time for ease of interpretation. A simulation study is conducted to evaluate the finite sample performance. Forecasting state-level new COVID-19 cases in United States is used for illustration.

摘要

在本文中,我们旨在从现有单位中借鉴信息,并在时间序列预测中纳入目标单位的历史数据。我们考虑一种情况,即我们有来自多个单位的时间序列数据,这些数据在内部时间方面对齐时具有相似的模式。内部时间被定义为根据感兴趣的演变特征的索引。当映射回日历时间时,这些时间序列可以跨越不同的时间间隔,其中可能包括目标单位的未来日历时间,我们可以在预测目标单位时从其他单位借用这些时间序列的数据。我们首先根据内部时间为多个时间序列数据构建层次状态空间模型,其中共享分量捕获不同单位之间的相似性,同时允许单位特定的偏差。然后构建条件状态空间模型,将现有单位的信息作为预测目标单位的先验信息。通过基于条件状态空间模型对目标单位运行卡尔曼滤波,我们整合了其他单位的信息和目标单位的历史数据。然后,将预测从内部时间转换回日历时间,以便于解释。进行了模拟研究以评估有限样本性能。以美国州级新的 COVID-19 病例预测为例。

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