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Estimating negative variance components from Gaussian and non-Gaussian data: A mixed models approach

机译:从高斯和非高斯数据估计负方差成分:混合模型方法

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摘要

The occurrence of negative variance components is a reasonably well understood phenomenon in the case of linear models for hierarchical data, such as variance-component models in designed experiments or linear mixed models for longitudinal data. In many cases, such negative variance components can be translated as negative within-unit correlations. It is shown that negative variance components, with corresponding negative associations, can occur in hierarchical models for non-Gaussian outcomes as well, such as repeated binary data or counts. While this feature poses no problem for marginal models, in which the mean and correlation functions are modeled directly and separately, the issue is more complicated in, for example, generalized linear mixed models. This owes in part to the non-linear nature of the link function, non-constant residual variance stemming from the mean-variance link, and the resulting lack of closed-form expressions for the marginal correlations. It is established that such negative variance components in generalized linear mixed models can occur in practice and that they can be estimated using standard statistical software. Marginal-correlation functions are derived. Important implications for interpretation and model choice are discussed. Simulations and the analysis of data from a developmental toxicity experiment underscore these results.
机译:在用于分层数据的线性模型(例如设计实验中的方差分量模型或用于纵向数据的线性混合模型)的情况下,负方差分量的出现是一个相当容易理解的现象。在许多情况下,此类负方差分量可以转换为负单位内相关性。结果表明,具有负相关性的负方差分量也可能出现在非高斯结果的层次模型中,例如重复的二进制数据或计数。尽管此功能对于边际模型没有问题,在边际模型中,均值和相关函数分别直接建模,但在例如广义线性混合模型中,问题更加复杂。这部分归因于链接函数的非线性性质,由于均值-方差链接而引起的非恒定残差以及导致缺乏边际相关的闭合形式的表达式。已经建立了这样的负方差分量可以在实践中出现,并且可以使用标准统计软件对其进行估计。导出边际相关函数。讨论了解释和模型选择的重要含义。模拟和对发育毒性实验数据的分析强调了这些结果。

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