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Structured additive regression for multicategorical space-time data: a mixed model approach

机译:多分类时空数据的结构化附加回归:混合模型方法

摘要

4208 In many practical situations, simple regression models suffer from the fact that the dependence of responses on covariates can not be sufficiently described by a purely parametric predictor. For example effects of continuous covariates may be nonlinear or complex interactions between covariates may be present. A specific problem of space-time data is that observations are in general spatially and/or temporally correlated. Moreover, unobserved heterogeneity between individuals or units may be present. While, in recent years, there has been a lot of work in this area dealing with univariate response models, only limited attention has been given to models for multicategorical space-time data. We propose a general class of structured additive regression models (STAR) for multicategorical responses, allowing for a flexible semiparametric predictor. This class includes models for multinomial responses with unordered categories as well as models for ordinal responses. Non-linear effects of continuous covariates, time trends and interactions between continuous covariates are modelled through Bayesian versions of penalized splines and flexible seasonal components. Spatial effects can be estimated based on Markov random fields, stationary Gaussian random fields or two-dimensional penalized splines. We present our approach from a Bayesian perspective, allowing to treat all functions and effects within a unified general framework by assigning appropriate priors with different forms and degrees of smoothness. Inference is performed on the basis of a multicategorical linear mixed model representation. This can be viewed as posterior mode estimation and is closely related to penalized likelihood estimation in a frequentist setting. Variance components, corresponding to inverse smoothing parameters, are then estimated by using restricted maximum likelihood. Numerically efficient algorithms allow computations even for fairly large data sets. As a typical example we present results on an analysis of data from a forest health survey.
机译:4208在许多实际情况下,简单的回归模型会遭受以下事实的困扰:纯粹的参数预测变量无法充分描述响应对协变量的依赖性。例如,连续协变量的影响可能是非线性的,或者协变量之间可能存在复杂的相互作用。时空数据的一个特定问题是,观测通常在空间和/或时间上相关。而且,在个体或单位之间可能存在未观察到的异质性。尽管近年来,在该领域中有很多工作涉及单变量响应模型,但是对于多类别时空数据的模型只给予了有限的关注。我们为多类别响应提出了通用的结构化加性回归模型(STAR)类,从而允许使用灵活的半参数预测器。此类包括具有无序类别的多项式响应模型以及序数响应模型。连续协变量,时间趋势和连续协变量之间的相互作用的非线性影响通过惩罚样条的贝叶斯版本和灵活的季节性成分进行建模。可以基于马尔可夫随机场,平稳高斯随机场或二维罚样条估计空间效应。我们从贝叶斯角度介绍我们的方法,通过分配具有不同形式和平滑度的适当先验,允许在统一的通用框架内处理所有功能和效果。推断是基于多类别线性混合模型表示进行的。这可以看作是后验模式估计,并且与频繁出现的情况下的惩罚似然估计密切相关。然后,通过使用受限的最大似然来估计与反平滑参数相对应的方差分量。数值高效的算法甚至可以对相当大的数据集进行计算。作为一个典型的例子,我们介绍了对森林健康调查数据的分析结果。

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