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Deletion measures for generalized linear mixed effects models

机译:广义线性混合效应模型的删除措施

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摘要

Generalized linear mixed models (GLMMs) have wide applications in practice. Similar to other data analyses, the identification of influential observations that may be potential outliers is an important step beyond estimation in GLMMs. Since the pioneering work of Cook in 1977, deletion measures have been applied to many statistical models for identifying influential observations. However, as this well-known approach is based on the observed-data likelihood, it is very difficult to apply it to developing diagnostic measures for GLMMs due to the complexity of the observed-data likelihood that involves multidimensional integrals. The objective of this article is to develop diagnostic measures for identifying influential observations.
机译:广义线性混合模型(GLMM)在实践中具有广泛的应用。与其他数据分析相似,识别可能是潜在异常值的影响性观察是超越GLMM估计的重要一步。自1977年Cook的开创性工作以来,删除措施已应用于许多统计模型中,以识别有影响的观察结果。但是,由于这种众所周知的方法是基于观测数据似然性的,因此由于涉及多维积分的观测数据似然性的复杂性,很难将其应用于为GLMM开发诊断方法。本文的目的是开发用于确定有影响的观察结果的诊断措施。

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