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On estimation and prediction for spatial generalized linear mixed models.

机译:关于空间广义线性混合模型的估计和预测。

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摘要

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.
机译:我们使用空间广义线性混合模型(GLMM)对在连续区域的采样位置观察到的非高斯空间变量进行建模。在许多应用中,预测空间GLMM中的随机效应具有很大的实际意义。我们表明,最小均方误差(MMSE)预测可以在类似于线性克里金法的空间GLMM中以线性方式完成。我们开发了EM梯度算法的Monte Carlo版本,用于模型参数的最大似然估计。这种方法的副产品是,它还会针对采样点处已实现的随机效应生成MMSE估计。通过模拟研究对这种方法进行了说明,并将其应用于植物根部疾病的真实数据集,以获得可以促进精准农业实践的疾病严重性地图。

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