English

Panel data analysis via mechanistic models

Methodology 2021-05-27 v2

Abstract

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.

Keywords

Cite

@article{arxiv.1801.05695,
  title  = {Panel data analysis via mechanistic models},
  author = {Carles Bretó and Edward L. Ionides and Aaron A. King},
  journal= {arXiv preprint arXiv:1801.05695},
  year   = {2021}
}

Comments

Accepted for publication in Journal of the American Statistical Association

R2 v1 2026-06-22T23:47:52.579Z