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Bayesian Analysis of Geostatistical Models With an Auxiliary Lattice
Jincheol Park, Faming Liang
Research output
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Contribution to journal
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Article
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peer-review
5
Scopus citations
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Keyphrases
Computation Time
100%
Bayesian Analysis
100%
Gaussian Random Field
100%
Geostatistical Model
100%
Numerical Results
50%
Computational Complexity
50%
Matrix Inversion
50%
Supplemental Materials
50%
Gaussian Markov Random Field
50%
Spatial Data
50%
Correlation Length
50%
Prediction Error
50%
Random Field Model
50%
Large Covariance Matrix
50%
Very Large Datasets
50%
Lattice-based
50%
Mathematics
Lattices
100%
Bayesian Analysis
100%
Gaussian Distribution
50%
Gaussian Random Field
50%
Number
50%
Covariance Matrix
25%
Matrix Inversion
25%
correlation length ξ
25%
Prediction Error
25%
Markov Random Fields
25%
Approximates
25%
Real Data
25%
Spatial Data
25%
Engineering
Gaussians
100%
Computational Time
50%
Random Field
50%
Real Data
25%
Correlation Length
25%
Random Field Model
25%
Covariance Matrix
25%
Computational Complexity
25%
Prediction Error
25%
Spatial Data
25%
Physics
Gaussian Distribution
100%
Covariance
25%
Chemical Engineering
Auxiliaries
100%