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Maximum Likelihood Estimation for Spatial GLM Models

机译:空间GLM模型的最大似然估计

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Spatial generalized linear mixed models are usually used for modelling non-Gaussian and discrete spatial responses. In these models, spatial correlation of the data is usually modelled by spatial latent variables. Although, it is a standard assumption that the latent variables have normal distribution, in practice this assumption may not be valid. The first purpose of this paper is to use a closed skew normal distribution for the spatial latent variables which is more flexible distribution and also includes normal and skew normal distributions. The second is to develop Monte Carlo EM gradient algorithm for maximum likelihood estimation of the model parameters. Then, the performance of the proposed model is illustrated through a simulation study. Finally, the model and algorithm are applied to a case study on a temperature data.
机译:空间广义线性混合模型通常用于建模非高斯和离散的空间响应。在这些模型中,数据的空间相关通常由空间潜变量建模。虽然,它是标准假设,即潜在变量具有正常分布,实际上此假设可能无效。本文的第一个目的是为空间潜变量使用闭合偏斜的正态分布,这是更灵活的分布,并且还包括正常和歪斜的正常分布。第二代是开发Monte Carlo EM梯度算法,以获得模型参数的最大似然估计。然后,通过模拟研究说明所提出的模型的性能。最后,模型和算法应用于温度数据的案例研究。

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