panelPomp: Analysis of Panel Data via Partially Observed Markov Processes in R
Panel data arise when time series measurements are collected from multiple, dynamically independent but structurally related systems. In such cases, each system's time series can be modeled as a partially observed Markov process (POMP), and the ensemble of these models is called a PanelPOMP. If...
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Zusammenfassung: | Panel data arise when time series measurements are collected from multiple,
dynamically independent but structurally related systems. In such cases, each
system's time series can be modeled as a partially observed Markov process
(POMP), and the ensemble of these models is called a PanelPOMP. If the time
series are relatively short, statistical inference for each time series must
draw information from across the entire panel. Every time series has a name,
called its unit label, which may correspond to an object on which that time
series was collected. Differences between units may be of direct inferential
interest or may be a nuisance for studying the commonalities. The R package
panelPomp supports analysis of panel data via a general class of PanelPOMP
models. This includes a suite of tools for manipulation of models and data that
take advantage of the panel structure. The panelPomp package currently
emphasizes recent advances enabling likelihood-based inference via
simulation-based algorithms. However, the general framework provided by
panelPomp supports development of additional, new inference methodology for
panel data. |
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DOI: | 10.48550/arxiv.2410.07934 |