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Goodness-of-fit methods for generalized linear mixed models.

机译:广义线性混合模型的拟合优度方法。

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摘要

We develop graphical and numerical methods for checking the adequacy of generalized linear mixed models (GLMMs). These methods are based on the cumulative sums of residuals over covariates or predicted values of the response variable. Under the assumed model, the asymptotic distributions of these stochastic processes can be approximated by certain zero-mean Gaussian processes, whose realizations can be generated through Monte Carlo simulation. Each observed process can then be compared, both visually and analytically, to a number of realizations simulated from the null distribution. These comparisons enable one to assess objectively whether the observed residual patterns reflect model misspecification or random variation. The proposed methods are particularly useful for checking the functional form of a covariate or the link function. Extensive simulation studies show that the proposed goodness-of-fit tests have proper sizes and are sensitive to model misspecification. Applications to two medical studies lead to improved models.
机译:我们开发了图形和数值方法来检查广义线性混合模型(GLMM)的适当性。这些方法基于协变量或响应变量的预测值上的残差累积和。在假定的模型下,这些随机过程的渐近分布可以通过某些零均值高斯过程来近似,其实现可以通过蒙特卡洛模拟来产生。然后可以将每个观察到的过程在视觉和分析上与从零分布模拟的许多实现进行比较。这些比较使人们能够客观地评估观察到的残差模式是否反映了模型规格不正确或随机变化。所提出的方法对于检查协变量或链接函数的功能形式特别有用。大量的仿真研究表明,拟议的拟合优度测试具有适当的大小,并且对模型错误指定敏感。在两项医学研究中的应用导致模型的改进。

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