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Strong Consistency of MLE in Nonlinear Mixed-effects Models with Large Cluster Size

机译:大型簇非线性混合效应模型中MLE的强一致性

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The search for conditions for the consistency of maximum likelihood estimators in nonlinear mixed effects models is difficult due to the fact that, in general, the likelihood can only be expressed as an integral over the random effects. For repeated measurements or clustered data, we focus on asymptotic theory for the maximum likelihood estimator for the case where the cluster sizes go to infinity, which is a minimum assumption required to validate most of the available methods of inference in nonlinear mixed-effects models. In particular, we establish sufficient conditions for the (strong) consistency of the maximum likelihood estimator of the fixed effects. Our results extend the results of Jennrich (1969) and Wu (1981) for nonlinear fixed-effects models to nonlinear mixed-effects models.
机译:在非线性混合效应模型中寻找最大似然估计的一致性的条件是困难的,因为通常情况下,似然只能表示为随机效应的整数。对于重复测量或聚类数据,在聚类大小达到无穷大的情况下,我们关注最大似然估计的渐近理论,这是验证非线性混合效应模型中大多数可用推论方法所需的最小假设。特别是,我们为固定效应的最大似然估计器的(强)一致性建立了充分的条件。我们的研究结果将Jennrich(1969)和Wu(1981)的非线性固定效应模型的结果扩展到非线性混合效应模型。

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