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PENALIZED STRUCTURED ADDITIVE REGRESSION FOR SPACE-TIME DATA: A BAYESIAN PERSPECTIVE
by
Lang, Stefan
, Fahrmeir, Ludwig
, Kneib, Thomas
in
Binomials
/ Data smoothing
/ Inference
/ Linear regression
/ Mathematical independent variables
/ Matrices
/ Modeling
/ Nonparametric and Semiparametric Regression
/ Random walk
/ Spatial models
/ Statistical variance
2004
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PENALIZED STRUCTURED ADDITIVE REGRESSION FOR SPACE-TIME DATA: A BAYESIAN PERSPECTIVE
by
Lang, Stefan
, Fahrmeir, Ludwig
, Kneib, Thomas
in
Binomials
/ Data smoothing
/ Inference
/ Linear regression
/ Mathematical independent variables
/ Matrices
/ Modeling
/ Nonparametric and Semiparametric Regression
/ Random walk
/ Spatial models
/ Statistical variance
2004
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Do you wish to request the book?
PENALIZED STRUCTURED ADDITIVE REGRESSION FOR SPACE-TIME DATA: A BAYESIAN PERSPECTIVE
by
Lang, Stefan
, Fahrmeir, Ludwig
, Kneib, Thomas
in
Binomials
/ Data smoothing
/ Inference
/ Linear regression
/ Mathematical independent variables
/ Matrices
/ Modeling
/ Nonparametric and Semiparametric Regression
/ Random walk
/ Spatial models
/ Statistical variance
2004
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PENALIZED STRUCTURED ADDITIVE REGRESSION FOR SPACE-TIME DATA: A BAYESIAN PERSPECTIVE
Journal Article
PENALIZED STRUCTURED ADDITIVE REGRESSION FOR SPACE-TIME DATA: A BAYESIAN PERSPECTIVE
2004
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Overview
We propose extensions of penalized spline generalized additive models for analyzing space-time regression data and study them from a Bayesian perspective. Non-linear effects of continuous covariates and time trends are modelled through Bayesian versions of penalized splines, while correlated spatial effects follow a Markov random field prior. This allows to treat all functions and effects within a unified general framework by assigning appropriate priors with different forms and degrees of smoothness. Inference can be performed either with full (FB) or empirical Bayes (EB) posterior analysis. FB inference using MCMC techniques is a slight extension of previous work. For EB inference, a computationally efficient solution is developed on the basis of a generalized linear mixed model representation. The second approach can be viewed as posterior mode estimation and is closely related to penalized likelihood estimation in a frequentist setting. Variance components, corresponding to inverse smoothing parameters, are then estimated by marginal likelihood. We carefully compare both inferential procedures in simulation studies and illustrate them through data applications. The methodology is available in the open domain statistical package BayesX and as an S-plus/R function.
Publisher
Institute of Statistical Science, Academia Sinica and International Chinese Statistical Association
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