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Components of overdispersion in hierarchical generalized linear models.

机译:分层广义线性模型中过度分散的成分。

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摘要

A hierarchical generalized linear model is developed in which the data are allowed to determine the distributional assumptions of the dispersion sub-models while considering fixed and random effects. In addition the model allows for covariates to be included in both the mean and dispersion sub-models.;In recent times the pseudo-likelihood and double extended quasi-likelihood models were developed for modeling data from a hierarchical generalized linear structure. The pseudo-likelihood model is appropriate for any response distribution from the exponential family, but its systematic component is approximated by restricting to a normal random variable. In addition, the pseudo-likelihood model only allows for a constant dispersion correction, and cannot include dispersion covariates. The double extended quasi-likelihood model is appropriate for any response and random effect distributions from the exponential family, and does allow dispersion sub-models with dispersion covariates. However, the double extended quasi-likelihood model imposes a specific mean-variance relationship for both dispersion sub-models.;In hierarchical generalized linear models it is natural to account for components of overdispersion separately at each level of clustering. The dispersion sub-models developed can be used to model components of overdispersion. In this research the double generalized extended quasi-likelihood model consists of power functions which are defined by the mean-variance relationships in the dispersion sub-models as determined by the data, and thus are expected to more accurately model the dispersion in the data.;The models developed are compared to the pseudo-likelihood and double extended quasi-likelihood models through a simulation study. The performances of these models are assessed through data simulated with various distributional assumptions, and also in data simulated with overdispersion present at different levels. The double generalized extended quasi-likelihood is shown to be reliable and performs consistently better than existing models. These models are used to analyze a commonly known respiratory data set.
机译:建立了分层广义线性模型,其中在考虑固定效应和随机效应的同时,允许数据确定色散子模型的分布假设。另外,该模型允许将协变量包括在均值和离散子模型中。最近,伪似然模型和双扩展拟似然模型被开发出来,用于对来自分层广义线性结构的数据进行建模。伪似然模型适用于指数族的任何响应分布,但通过限制为正常随机变量来近似其系统成分。另外,伪似然模型仅允许进行恒定的色散校正,而不能包含色散协变量。双重扩展拟似然模型适用于指数族的任何响应和随机效应分布,并且确实允许具有色散协变量的色散子模型。但是,双扩展拟似然模型对两个色散子模型都施加了特定的均值-方差关系。在分层广义线性模型中,很自然地要在每个聚类级别分别考虑过度色散的分量。所开发的色散子模型可用于建模过度色散的组件。在这项研究中,双重广义扩展拟似然模型由幂函数组成,这些幂函数由数据确定的色散子模型中的均值-方差关系定义,因此有望更准确地对数据中的色散建模。 ;通过仿真研究,将开发的模型与伪似然模型和双扩展拟似然模型进行比较。这些模型的性能是通过在各种分布假设下模拟的数据以及在不同水平存在过度分散的模拟数据中进行评估的。事实证明,双重广义扩展拟似然性是可靠的,并且与现有模型相比,性能始终如一。这些模型用于分析众所周知的呼吸数据集。

著录项

  • 作者

    Lalonde, Trent Lewis.;

  • 作者单位

    Arizona State University.;

  • 授予单位 Arizona State University.;
  • 学科 Statistics.
  • 学位 Ph.D.
  • 年度 2009
  • 页码 118 p.
  • 总页数 118
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:38:09

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