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Estimation and prediction for spatial generalized linear mixed models using high order Laplace approximation
Authors:Evangelos Evangelou  Zhengyuan ZhuRichard L. Smith
Affiliation:a Department of Mathematical Sciences, University of Bath, Bath BA2 7AY, UK
b Department of Statistics, Iowa State University, Ames IA, USA
c Department of Statistics and Operations Research, UNC Chapel Hill, Chapel Hill NC, USA
Abstract:Estimation and prediction in generalized linear mixed models are often hampered by intractable high dimensional integrals. This paper provides a framework to solve this intractability, using asymptotic expansions when the number of random effects is large. To that end, we first derive a modified Laplace approximation when the number of random effects is increasing at a lower rate than the sample size. Second, we propose an approximate likelihood method based on the asymptotic expansion of the log-likelihood using the modified Laplace approximation which is maximized using a quasi-Newton algorithm. Finally, we define the second order plug-in predictive density based on a similar expansion to the plug-in predictive density and show that it is a normal density. Our simulations show that in comparison to other approximations, our method has better performance. Our methods are readily applied to non-Gaussian spatial data and as an example, the analysis of the rhizoctonia root rot data is presented.
Keywords:Generalized linear mixed models   Laplace approximation   Maximum likelihood estimation   Predictive inference   Spatial statistics
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