Spatio‐temporal smoothing and EM estimation for massive remote‐sensing data sets
DOI10.1111/j.1467-9892.2011.00732.xzbMath1294.62119OpenAlexW1836081558WikidataQ104697214 ScholiaQ104697214MaRDI QIDQ5495689
Noel Cressie, Matthias Katzfuss
Publication date: 6 August 2014
Published in: Journal of Time Series Analysis (Search for Journal in Brave)
Full work available at URL: https://doi.org/10.1111/j.1467-9892.2011.00732.x
EM algorithmmaximum likelihood estimationspatio-temporal statisticsmixed effects modelsAIRS instrumentfixed rank smoothingglobal CO\(_{2}\)
Directional data; spatial statistics (62H11) Inference from spatial processes (62M30) Classification and discrimination; cluster analysis (statistical aspects) (62H30) Applications of statistics to environmental and related topics (62P12) Point estimation (62F10)
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