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首页> 外文期刊>Journal of Multivariate Analysis: An International Journal >Non-Gaussian modeling of spatial data using scale mixing of a unified skew Gaussian process
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Non-Gaussian modeling of spatial data using scale mixing of a unified skew Gaussian process

机译:使用统一偏斜高斯过程的比例混合对空间数据进行非高斯建模

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摘要

In this paper, we introduce a unified skew Gaussian-log Gaussian model and propose a general class of spatial sampling models that can account for both heavy tails and skewness. This class includes some models proposed previously in the literature. The likelihood function involves analytically intractable integrals and direct maximization of the marginal likelihood is numerically difficult. We obtain maximum likelihood estimates of the model parameters, using a stochastic approximation of the EM algorithm (SAEM). The predictive distribution at unsampled sites is approximated based on Markov chain Monte Carlo samples. The identifiability of the parameters and the performance of the proposed model is investigated by a simulation study. The usefulness of our methodology is demonstrated by analyzing a Pb data set in a region of north Iran.
机译:在本文中,我们介绍了统一的偏斜高斯-对数高斯模型,并提出了可同时考虑粗尾和偏斜的通用类空间采样模型。该类包括一些先前文献中提出的模型。似然函数涉及解析上难解的积分,并且边缘极大似然的直接最大化在数值上很困难。我们使用EM算法(SAEM)的随机逼近来获得模型参数的最大似然估计。基于马尔可夫链蒙特卡洛样本,对未采样站点的预测分布进行了估算。通过仿真研究来研究参数的可识别性和所提出模型的性能。通过分析伊朗北部地区的Pb数据集,证明了我们方法的有效性。

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