Spatial and spatio-temporal Bayesian models with R-INLA

The Bayesian approach is particularly effective at modeling large datasets including spatial and temporal information due to its flexibility and ease with which it can formally include correlation and hierarchical structures in the data. However, classical simulation methods such as Markov Chain Monte Carlo can become computationally unfeasible; this book presents the Integrated Nested Laplace Approximations (INLA) approach as a computationally effective and extremely powerful alternative. Spatial and Spatio-temporal Bayesian Models with R-INLA introduces the basic paradigms of the Bayesian approach and describes the associated computational issues. Detailing the theory behind the INLA approach and the R-INLA package, it focuses on spatial and spatio-temporal modeling for area and point-referenced data. The combination of detailed theory and practical data analysis is beneficial for readers at any level. The coding of all the examples in R-INLA and the availability of all the datasets used throughout the book on the INLA website (www.r-inla.org) make an appealing feature for applied researchers wanting to approach or increase their knowledge and practice of the INLA method.

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Bibliographic Details
Main Authors: Blangiardo, Marta autor/a, Cameletti, Michela autor/a
Format: Texto biblioteca
Language:eng
Published: Chichester, West Sussex, United Kingdom John Wiley and Sons 2015
Subjects:Teoría bayesiana de decisiones estadísticas, Análisis espacial (Estadística), Distribución asintótica (Teoría de probabilidades), R (Lenguaje de programación para computadora),
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