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Approximate composite marginal likelihood inference in spatial generalized linear mixed models

机译:空间广义线性混合模型中的近似复合边缘似然推论

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摘要

Non-Gaussian spatial responses are usually modeled using spatial generalized linear mixed model with spatial random effects. The likelihood function of this model cannot usually be given in a closed form, thus the maximum likelihood approach is very challenging. There are numerical ways to maximize the likelihood function, such as Monte Carlo Expectation Maximization and Quadrature Pairwise Expectation Maximization algorithms. They can be applied but may in such cases be computationally very slow or even prohibitive. Gauss-Hermite quadrature approximation only suitable for low-dimensional latent variables and its accuracy depends on the number of quadrature points. Here, we propose a new approximate pairwise maximum likelihood method to the inference of the spatial generalized linear mixed model. This approximate method is fast and deterministic, using no sampling-based strategies. The performance of the proposed method is illustrated through two simulation examples and practical aspects are investigated through a case study on a rainfall data set.
机译:通常使用具有空间随机效应的空间广义线性混合模型来建模非高斯空间响应。该模型的可能性通常不能以封闭形式给出,因此最大似然方法非常具有挑战性。有数值方法可以最大化似然函数,例如Monte Carlo期望最大化和正交成对期望最大化算法。它们可以应用,但在这种情况下可能会计算地非常缓慢甚至持久。高斯 - Hermite正交近似仅适用于低维潜变量及其精度取决于正交点的数量。这里,我们提出了一种新的近似成对最大似然方法,用于推断空间广义线性混合模型。这种近似方法是快速和确定的,不使用基于采样的策略。所提出的方法的性能通过两个模拟实施例说明,通过对降雨数据集的案例研究来研究实际方面。

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