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Influence analyses of nonlinear mixed-effects models

机译:非线性混合效应模型的影响分析

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摘要

Nonlinear mixed-effects models are very useful in analyzing repeated-measures data and have received a lot of attention in the field. In this paper, we propose a method to detect influential observations in such models, on the basis of the maximum likelihood estimates that are obtained by a stochastic approximation algorithm with Markov chain Monte Carlo method. The development utilizes the data augmentation technique that treats the random effects as missing data, and considers the conditional expectation of the complete-data log-likelihood function relating to an EM algorithm. Diagnostic measures are derived from the case-deletion approach and the local influence approach, and are approximated by a large sample of random effects that are simulated from the appropriate conditional distributions by a Metropolis–Hastings algorithm. Results obtained from two illustrative examples are reported.
机译:非线性混合效应模型在分析重复测量数据中非常有用,并在该领域引起了很多关注。在本文中,我们提出了一种基于马尔可夫链蒙特卡罗方法的随机近似算法获得的最大似然估计的检测此类模型中有影响力的观测值的方法。该开发利用将随机效应视为丢失数据的数据增强技术,并考虑了与EM算法有关的完整数据对数似然函数的条件期望。诊断方法是从案例删除方法和局部影响方法得出的,并通过大量随机效应进行近似,该随机效应是通过Metropolis-Hastings算法从适当的条件分布中模拟得出的。报告了从两个说明性实施例获得的结果。

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