首页> 外文会议>International Workshop on Statistical Modelling; 20040704-08; Florence(IT) >Structured additive regression for multicategorical space-time data: A mixed model approach
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Structured additive regression for multicategorical space-time data: A mixed model approach

机译:多类别时空数据的结构化加性回归:一种混合模型方法

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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. 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. 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. Variance components, corresponding to inverse smoothing parameters, are then estimated by using restricted maximum likelihood.
机译: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。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。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。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。

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