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Approximate likelihood inference in spatial generalized linear mixed models with closed skew normal latent variables

机译:具有闭合偏正态潜在变量的空间广义线性混合模型的近似似然推断

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摘要

Spatial generalized linear mixed models are used commonly for modeling discrete spatial responses, where spatial correlation of the data is considered via latent variables which follow the normal distribution. From a computational point of view, the normal assumption for latent variables are considered just for the convenience of calculations. In this paper, the closed skew normal distribution which is more flexible and includes the normal distribution is considered for the spatial latent variables. A new approximate algorithm is introduced to obtain maximum likelihood estimates of the parameters. Prediction of the latent variables at a new unsampled location is obtained using a new approximation minimum mean square error method. The performance of the proposed method is illustrated on a simulation study and on a real data set.
机译:空间广义线性混合模型通常用于建模离散空间响应,其中通过遵循正态分布的潜在变量来考虑数据的空间相关性。从计算的角度来看,潜变量的正常假设只是为了方便计算。在本文中,对于空间潜在变量,考虑了更灵活且包含正态分布的闭合偏态正态分布。引入了一种新的近似算法以获得参数的最大似然估计。使用新的近似最小均方误差方法可以获得在新的未采样位置处的潜在变量的预测。仿真研究和真实数据集说明了该方法的性能。

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