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Hierarchical generalised linear models: A synthesis of generalised linear models, random-effect models and structured dispersions

机译:分层广义线性模型:广义线性模型,随机效应模型和结构化色散的综合

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Hierarchical generalised linear models are developed as a synthesis of generalised linear models, mixed linear models and structured dispersions. We generalise the restricted maximum likelihood method for the estimation of dispersion to the wider class and show how the joint fitting of models for mean and dispersion can be expressed by two interconnected generalised linear models. The method allows models with (i) any combination of a generalised linear model distribution for the response with any conjugate distribution for the random effects, (ii) structured dispersion components, (iii) different link and variance functions for the fixed and random effects, and (iv) the use of quasilikelihoods in place of likelihoods for either or both of the mean and dispersion models. Inferences can be made by applying standard procedures, in particular those for model checking, to components of either generalised linear model. We also show by numerical studies that the new method gives an efficient estimation procedure for substantial class of models of practical importance. Likelihood-type inference is extended to this wide class of models in a unified way.
机译:分层广义线性模型是广义线性模型,混合线性模型和结构化色散的综合。我们将用于估计色散的受限最大似然方法推广到更广泛的类别,并展示如何通过两个互连的广义线性模型来表示均值和色散模型的联合拟合。该方法允许模型具有(i)用于响应的广义线性模型分布与用于随机效应的任何共轭分布的任意组合,(ii)结构化的色散分量,(iii)用于固定效应和随机效应的不同链接和方差函数的模型, (iv)使用均值似然代替均值和离散模型之一或两者的可能性。可以通过对任一广义线性模型的组件应用标准程序(尤其是用于模型检查的程序)进行推断。我们还通过数值研究表明,该新方法为具有实际重要性的大量模型提供了有效的估算程序。可能性类型的推断以统一的方式扩展到了这一广泛的模型。

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