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Deletion Diagnostics for the Generalised Linear Mixed Model with independent random effects

机译:具有独立随机效应的广义线性混合模型的删除诊断

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摘要

The Generalised Linear Mixed Model (GLMM) is widely used for modelling environmental data. However, such data are prone to influential observations which can distort the estimated exposure-response curve particularly in regions of high exposure. Deletion diagnostics for iterative estimation schemes commonly derive the deleted estimates based on a single iteration of the full system holding certain pivotal quantities such as the information matrix to be constant. In this paper, we present an approximate formula for the deleted estimates and Cook’s distance for the GLMM which does not assume that the estimates of variance parameters are unaffected by deletion. The procedure allows the user to calculate standardised DFBETAs for mean as well as variance parameters. In certain cases, such as when using the GLMM as a device for smoothing, such residuals for the variance parameters are interesting in their own right. In general, the procedure leads to deleted estimates of mean parameters which are corrected for the effect of deletion on variance components as estimation of the two sets of parameters is interdependent. The probabilistic behaviour of these residuals is investigated and a simulation based procedure suggested for their standardisation. The method is used to identify influential individuals in an occupational cohort exposed to silica. The results show that failure to conduct post model fitting diagnostics for variance components can lead to erroneous conclusions about the fitted curve and unstable confidence intervals.
机译:广义线性混合模型(GLMM)被广泛用于对环境数据进行建模。但是,此类数据易于产生有影响力的观察结果,尤其是在高暴露区域,可能会使估计的暴露-响应曲线失真。用于迭代估计方案的删除诊断通常基于保持某些关键量(例如恒定的信息矩阵)的整个系统的单个迭代来得出删除的估计。在本文中,我们为GLMM给出了删除的估计值和库克距离的近似公式,该公式不假定方差参数的估计值不受删除影响。该程序允许用户计算平均值和方差参数的标准DFBETA。在某些情况下,例如当使用GLMM作为平滑设备时,方差参数的此类残差本身就很有趣。通常,该过程会导致均值参数的估计值被删除,由于两组参数的估计值是相互依赖的,因此将针对删除对方差分量的影响进行校正。研究了这些残差的概率行为,并建议了基于模拟的程序对其进行标准化。该方法用于识别接触二氧化硅的职业人群中有影响力的个体。结果表明,未能对方差分量进行模型后拟合诊断会导致关于拟合曲线和不稳定的置信区间的错误结论。

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