Roy Vivekananda, Evangelou Evangelos, Zhu Zhengyuan
Department of Statistics, Iowa State University, Ames, Iowa 50011, U.S.A.
Department of Mathematical Sciences, University of Bath, Bath, BA2 7AY, U.K.
Biometrics. 2016 Mar;72(1):289-98. doi: 10.1111/biom.12371. Epub 2015 Aug 31.
Spatial generalized linear mixed models (SGLMMs) are popular models for spatial data with a non-Gaussian response. Binomial SGLMMs with logit or probit link functions are often used to model spatially dependent binomial random variables. It is known that for independent binomial data, the robit regression model provides a more robust (against extreme observations) alternative to the more popular logistic and probit models. In this article, we introduce a Bayesian spatial robit model for spatially dependent binomial data. Since constructing a meaningful prior on the link function parameter as well as the spatial correlation parameters in SGLMMs is difficult, we propose an empirical Bayes (EB) approach for the estimation of these parameters as well as for the prediction of the random effects. The EB methodology is implemented by efficient importance sampling methods based on Markov chain Monte Carlo (MCMC) algorithms. Our simulation study shows that the robit model is robust against model misspecification, and our EB method results in estimates with less bias than full Bayesian (FB) analysis. The methodology is applied to a Celastrus Orbiculatus data, and a Rhizoctonia root data. For the former, which is known to contain outlying observations, the robit model is shown to do better for predicting the spatial distribution of an invasive species. For the latter, our approach is doing as well as the classical models for predicting the disease severity for a root disease, as the probit link is shown to be appropriate. Though this article is written for Binomial SGLMMs for brevity, the EB methodology is more general and can be applied to other types of SGLMMs. In the accompanying R package geoBayes, implementations for other SGLMMs such as Poisson and Gamma SGLMMs are provided.
空间广义线性混合模型(SGLMMs)是用于具有非高斯响应的空间数据的流行模型。具有logit或probit链接函数的二项式SGLMMs通常用于对空间相关的二项式随机变量进行建模。已知对于独立的二项式数据,稳健回归模型为更流行的逻辑模型和概率模型提供了一种更稳健(针对极端观测值)的替代方案。在本文中,我们为空间相关的二项式数据引入了一种贝叶斯空间稳健回归模型。由于在SGLMMs中为链接函数参数以及空间相关参数构建有意义的先验很困难,我们提出了一种经验贝叶斯(EB)方法来估计这些参数以及预测随机效应。EB方法通过基于马尔可夫链蒙特卡罗(MCMC)算法的高效重要性抽样方法来实现。我们的模拟研究表明,稳健回归模型对模型误设具有稳健性,并且我们的EB方法所得到的估计比全贝叶斯(FB)分析的偏差更小。该方法应用于南蛇藤数据和丝核菌根数据。对于前者,已知其中包含异常观测值,稳健回归模型在预测入侵物种的空间分布方面表现更好。对于后者,我们的方法在预测根病的病害严重程度方面与经典模型表现相当,因为概率链接被证明是合适的。尽管本文为简洁起见是针对二项式SGLMMs编写的,但EB方法更具通用性,可应用于其他类型的SGLMMs。在随附的R包geoBayes中,提供了泊松和伽马SGLMMs等其他SGLMMs的实现。