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Bayesian inference in Gaussian model-based geostatistics.

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Bayesian inference in Gaussian model-based geostatistics. / Diggle, Peter J.; Ribeiro Jr, Paulo J.
In: Geographical and Environmental Modelling, Vol. 6, No. 2, 11.2002, p. 129-146.

Research output: Contribution to Journal/MagazineJournal articlepeer-review

Harvard

Diggle, PJ & Ribeiro Jr, PJ 2002, 'Bayesian inference in Gaussian model-based geostatistics.', Geographical and Environmental Modelling, vol. 6, no. 2, pp. 129-146. https://doi.org/10.1080/1361593022000029467

APA

Diggle, P. J., & Ribeiro Jr, P. J. (2002). Bayesian inference in Gaussian model-based geostatistics. Geographical and Environmental Modelling, 6(2), 129-146. https://doi.org/10.1080/1361593022000029467

Vancouver

Diggle PJ, Ribeiro Jr PJ. Bayesian inference in Gaussian model-based geostatistics. Geographical and Environmental Modelling. 2002 Nov;6(2):129-146. doi: 10.1080/1361593022000029467

Author

Diggle, Peter J. ; Ribeiro Jr, Paulo J. / Bayesian inference in Gaussian model-based geostatistics. In: Geographical and Environmental Modelling. 2002 ; Vol. 6, No. 2. pp. 129-146.

Bibtex

@article{ffbe03aa12cf4c53b06186fcfbb18698,
title = "Bayesian inference in Gaussian model-based geostatistics.",
abstract = "In a geostatistical analysis, spatial interpolation or smoothing of the observed values is often carried out by a procedure known as kriging. In its basic form, kriging involves the construction of a linear predictor for an unobserved value of the process, and the form of this linear predictor is chosen with reference to the covariance structure of the data as estimated by a data-analytic tool known as the variogram. Often, no explicit underlying stochastic model is declared. We adopt a model-based approach to this class of problems, by which we mean that we start with an explicit stochastic model and derive associated methods of parameter estimation, interpolation and smoothing by the application of general statistical principles. In particular, we use Bayesian methods of inference so as to make proper allowance for the uncertainty associated with estimating the unknown values of model parameters. To illustrate the model-based approach we analyse data on precipitation levels in Paran State, Brazil.",
author = "Diggle, {Peter J.} and {Ribeiro Jr}, {Paulo J.}",
year = "2002",
month = nov,
doi = "10.1080/1361593022000029467",
language = "English",
volume = "6",
pages = "129--146",
journal = "Geographical and Environmental Modelling",
issn = "1361-5939",
publisher = "Carfax Publishing Ltd.",
number = "2",

}

RIS

TY - JOUR

T1 - Bayesian inference in Gaussian model-based geostatistics.

AU - Diggle, Peter J.

AU - Ribeiro Jr, Paulo J.

PY - 2002/11

Y1 - 2002/11

N2 - In a geostatistical analysis, spatial interpolation or smoothing of the observed values is often carried out by a procedure known as kriging. In its basic form, kriging involves the construction of a linear predictor for an unobserved value of the process, and the form of this linear predictor is chosen with reference to the covariance structure of the data as estimated by a data-analytic tool known as the variogram. Often, no explicit underlying stochastic model is declared. We adopt a model-based approach to this class of problems, by which we mean that we start with an explicit stochastic model and derive associated methods of parameter estimation, interpolation and smoothing by the application of general statistical principles. In particular, we use Bayesian methods of inference so as to make proper allowance for the uncertainty associated with estimating the unknown values of model parameters. To illustrate the model-based approach we analyse data on precipitation levels in Paran State, Brazil.

AB - In a geostatistical analysis, spatial interpolation or smoothing of the observed values is often carried out by a procedure known as kriging. In its basic form, kriging involves the construction of a linear predictor for an unobserved value of the process, and the form of this linear predictor is chosen with reference to the covariance structure of the data as estimated by a data-analytic tool known as the variogram. Often, no explicit underlying stochastic model is declared. We adopt a model-based approach to this class of problems, by which we mean that we start with an explicit stochastic model and derive associated methods of parameter estimation, interpolation and smoothing by the application of general statistical principles. In particular, we use Bayesian methods of inference so as to make proper allowance for the uncertainty associated with estimating the unknown values of model parameters. To illustrate the model-based approach we analyse data on precipitation levels in Paran State, Brazil.

U2 - 10.1080/1361593022000029467

DO - 10.1080/1361593022000029467

M3 - Journal article

VL - 6

SP - 129

EP - 146

JO - Geographical and Environmental Modelling

JF - Geographical and Environmental Modelling

SN - 1361-5939

IS - 2

ER -