An iterated block particle filter for inference on coupled dynamic systems with shared and unit-specific parameters
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Publication:6554557
DOI10.5705/ss.202022.0188MaRDI QIDQ6554557
Edward L. Ionides, Ning Ning, Jesse Wheeler
Publication date: 12 June 2024
Published in: STATISTICA SINICA (Search for Journal in Brave)
maximum likelihood estimationsequential Monte Carlometapopulationspatiotemporalpartially observed Markov process
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