An additive approximate Gaussian process model for large spatio-temporal data
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Publication:6626104
DOI10.1002/env.2569zbMath1545.6286MaRDI QIDQ6626104
Emily L. Kang, Bledar A. Konomi, Pulong Ma
Publication date: 28 October 2024
Published in: Environmetrics (Search for Journal in Brave)
Gaussian processspatio-temporal dataBayesian inferenceadditive modelnonseparable covariance functionMetropolis-within-Gibbs sampler
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