具有偏高斯随机效应的空间广义线性混合模型的拉普拉斯近似参数估计

SeyedReza HosseiniShojaei, Y. Waghei, M. Mohammadzadeh
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引用次数: 0

摘要

. 空间广义线性混合模型通常用于非高斯离散空间响应的建模。提出了一种利用似然函数的拉普拉斯近似对模型进行参数估计的算法。在这些模型中,数据的空间相关性结构是通过随机效应或潜在变量来实现的。在大多数空间分析中,假设随机效应具有高斯分布,但这种假设是有问题的。在本文的工作中,这个假设被取代,使用一个偏高斯分布的潜在变量,这是更灵活的,包括高斯分布。我们使用一个真实的离散数据集来检验所提出的方法。
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Parameter Estimation in Spatial Generalized Linear Mixed Models with Skew Gaussian Random Effects using Laplace Approximation
. Spatial generalized linear mixed models are used commonly for modelling non-Gaussian discrete spatial responses. We present an algorithm for parameter estimation of the models using Laplace approximation of likelihood function. In these models, the spatial correlation structure of data is carried out by random effects or latent variables. In most spatial analysis, it is assumed that random effects have Gaussian distribution, but the assumption is questionable. This assumption is replaced in the present work, using a skew Gaussian distribution for the latent variables, which is more flexible and includes Gaussian distribution. We examine the proposed method using a real discrete data set.
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