Article
Spatially Varying Autoregressive Processes
Registro en:
NOBRE, Aline Araujo; SANSO, Bruno; SCHMIDT, Alexandra Mello. Spatially Varying Autoregressive Processes. Technometrics, v. 53, n. 3, p. 310-321, Aug. 2011.
0040-1706
10.1198/TECH.2011.10008
Autor
Nobre, Aline Araujo
Sanso, Bruno
Schmidt, Alexandra Mello
Resumen
We develop a class of models for processes indexed in time and space that are based on autoregressive (AR) processes at each location. We use a Bayesian hierarchical structure to impose spatial coherence for the coefficients of the AR processes. The priors on such coefficients consist of spatial processes that guarantee time stationarity at each point in the spatial domain. The AR structures are coupled with a dynamic model for the mean of the process, which is expressed as a linear combination of time-varying parameters. We use satellite data on sea surface temperature for the North Pacific to illustrate how the model can be used to separate trends, cycles, and short-term variability for high-frequency environmental data. This article has supplementary material online.
Ítems relacionados
Mostrando ítems relacionados por Título, autor o materia.
-
Micro-organismes et matiere organique du sol (modele MOMOS): bilan de 20 ans de modelisation basée sur le tracage isotopique in situ
Pansu, Marc; Sarmiento, Lina; Bottner, P. -
On Paradigms, Theories and Models
KHAN, HEIDER