Literature DB >> 11890307

On estimation and prediction for spatial generalized linear mixed models.

Hao Zhang1.   

Abstract

We use spatial generalized linear mixed models (GLMM) to model non-Gaussian spatial variables that are observed at sampling locations in a continuous area. In many applications, prediction of random effects in a spatial GLMM is of great practical interest. We show that the minimum mean-squared error (MMSE) prediction can be done in a linear fashion in spatial GLMMs analogous to linear kriging. We develop a Monte Carlo version of the EM gradient algorithm for maximum likelihood estimation of model parameters. A by-product of this approach is that it also produces the MMSE estimates for the realized random effects at the sampled sites. This method is illustrated through a simulation study and is also applied to a real data set on plant root diseases to obtain a map of disease severity that can facilitate the practice of precision agriculture.

Mesh:

Year:  2002        PMID: 11890307     DOI: 10.1111/j.0006-341x.2002.00129.x

Source DB:  PubMed          Journal:  Biometrics        ISSN: 0006-341X            Impact factor:   2.571


  8 in total

1.  Accounting for biological variability and sampling scale: a multi-scale approach to building epidemic models.

Authors:  S Soubeyrand; G Thébaud; J Chadoeuf
Journal:  J R Soc Interface       Date:  2007-10-22       Impact factor: 4.118

2.  Aberrant crypt foci and semiparametric modeling of correlated binary data.

Authors:  Tatiyana V Apanasovich; David Ruppert; Joanne R Lupton; Natasa Popovic; Nancy D Turner; Robert S Chapkin; Raymond J Carroll
Journal:  Biometrics       Date:  2007-08-28       Impact factor: 2.571

3.  Visiting nearby natural settings supported wellbeing during Sweden's "soft-touch" pandemic restrictions.

Authors:  Karl Samuelsson; Stephan Barthel; Matteo Giusti; Terry Hartig
Journal:  Landsc Urban Plan       Date:  2021-07-02       Impact factor: 8.119

4.  Geostatistical Methods for Disease Mapping and Visualisation Using Data from Spatio-temporally Referenced Prevalence Surveys.

Authors:  Emanuele Giorgi; Peter J Diggle; Robert W Snow; Abdisalan M Noor
Journal:  Int Stat Rev       Date:  2018-04-25       Impact factor: 2.217

5.  Mapping, bayesian geostatistical analysis and spatial prediction of lymphatic filariasis prevalence in Africa.

Authors:  Hannah Slater; Edwin Michael
Journal:  PLoS One       Date:  2013-08-12       Impact factor: 3.240

6.  Bayesian spatiotemporal modelling for identifying unusual and unstable trends in mammography utilisation.

Authors:  Earl W Duncan; Nicole M White; Kerrie Mengersen
Journal:  BMJ Open       Date:  2016-05-26       Impact factor: 2.692

7.  Mapping species abundance by a spatial zero-inflated Poisson model: a case study in the Wadden Sea, the Netherlands.

Authors:  Olga Lyashevska; Dick J Brus; Jaap van der Meer
Journal:  Ecol Evol       Date:  2016-01-09       Impact factor: 2.912

8.  Geospatial Analysis of Risk Factors Contributing to Loss to Follow-up in Cleft Lip/Palate Care.

Authors:  Banafsheh Sharif-Askary; Peter G Bittar; Alfredo E Farjat; Beiyu Liu; Joao Ricardo Nickenig Vissoci; Alexander C Allori
Journal:  Plast Reconstr Surg Glob Open       Date:  2018-09-14
  8 in total

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