Elsevier

Journal of Multivariate Analysis

Volume 168, November 2018, Pages 185-200
Journal of Multivariate Analysis

Efficient likelihood computations for some multivariate Gaussian Markov random fields

https://doi.org/10.1016/j.jmva.2018.07.007Get rights and content
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Abstract

Data collected from spatial locations are often multivariate. Gaussian conditional autoregressive (CAR) models, also known as Gaussian Markov random fields, are frequently used to analyze such continuous data, or as models for the parameters of discrete distributions. Two difficulties in Gaussian maximum likelihood estimation are ensuring that the parameter estimates are allowable values, and computing the likelihood efficiently. It is shown here that, for some commonly-used multivariate CAR models, checking for allowable parameter values can be facilitated, and the likelihood can be computed very quickly.

AMS 2000 subject classifications

62H11
62H12
62H35

Keywords

Conditional autoregressive model
Gaussian Markov random fields
Lattice data
Maximum likelihood estimation
Multivariate observations
Regional data

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