计算机科学
推论
系列(地层学)
迭代函数
马尔可夫链
灵活性(工程)
时间序列
过程(计算)
马尔可夫过程
非线性系统
马尔可夫模型
数据挖掘
算法
机器学习
数学
人工智能
统计
数学分析
物理
古生物学
操作系统
生物
量子力学
作者
Carles Bretó,Edward L. Ionides,Aaron A. King
标识
DOI:10.1080/01621459.2019.1604367
摘要
Panel data, also known as longitudinal data, consist of a collection of time series. Each time series, which could itself be multivariate, comprises a sequence of measurements taken on a distinct unit. Mechanistic modeling involves writing down scientifically motivated equations describing the collection of dynamic systems giving rise to the observations on each unit. A defining characteristic of panel systems is that the dynamic interaction between units should be negligible. Panel models therefore consist of a collection of independent stochastic processes, generally linked through shared parameters while also having unit-specific parameters. To give the scientist flexibility in model specification, we are motivated to develop a framework for inference on panel data permitting the consideration of arbitrary nonlinear, partially observed panel models. We build on iterated filtering techniques that provide likelihood-based inference on nonlinear partially observed Markov process models for time series data. Our methodology depends on the latent Markov process only through simulation; this plug-and-play property ensures applicability to a large class of models. We demonstrate our methodology on a toy example and two epidemiological case studies. We address inferential and computational issues arising due to the combination of model complexity and dataset size. Supplementary materials for this article are available online.
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