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Maximum likelihood and restricted maximum likelihood estimation for a class of Gaussian Markov random fields

机译:一类高斯马尔可夫随机场的最大似然和受限最大似然估计

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摘要

This work describes a Gaussian Markov random field model that includes several previously proposed models, and studies properties of its maximum likelihood (ML) and restricted maximum likelihood (REML) estimators in a special case. Specifically, for models where a particular relation holds between the regression and precision matrices of the model, we provide sufficient conditions for existence and uniqueness of ML and REML estimators of the covariance parameters, and provide a straightforward way to compute them. It is found that the ML estimator always exists while the REML estimator may not exist with positive probability. A numerical comparison suggests that for this model ML estimators of covariance parameters have, overall, better frequentist properties than REML estimators.
机译:这项工作描述了一个包括几个先前提出的模型的高斯马尔可夫随机场模型,并研究了在特殊情况下其最大似然(ML)和受限最大似然(REML)估计量的性质。具体来说,对于模型的回归矩阵与精度矩阵之间具有特定关系的模型,我们为协方差参数的ML和REML估计的存在和唯一性提供了充分的条件,并提供了一种简单的方法来计算它们。发现ML估计量始终存在,而REML估计量可能不存在正概率。数值比较表明,对于此模型,协方差参数的ML估计量总体上比REML估计量具有更好的频繁性。

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