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Quasi-complete separation in random effects of binary response mixed models

机译:二元响应混合模型随机效应中的拟完全分离

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摘要

Clustered observations such as longitudinal data are often analysed with generalized linear mixed models (GLMM). Approximate Bayesian inference for GLMMs with normally distributed random effects can be done using integrated nested Laplace approximations (INLA), which is in general known to yield accurate results. However, INLA is known to be less accurate for GLMMs with binary response. For longitudinal binary response data it is common that patients do not change their health state during the study period. In this case the grouping covariate perfectly predicts a subset of the response, which implies a monotone likelihood with diverging maximum likelihood (ML) estimates for cluster-specific parameters. This is known as quasi-complete separation. In this paper we demonstrate, based on longitudinal data from a randomized clinical trial and two simulations, that the accuracy of INLA decreases with increasing degree of cluster-specific quasi-complete separation. Comparing parameter estimates by INLA, Markov chain Monte Carlo sampling and ML shows that INLA increasingly deviates from the other methods in such a scenario.
机译:通常使用广义线性混合模型(GLMM)对诸如纵向数据之类的聚集观测进行分析。具有正态分布随机效应的GLMM的近似贝叶斯推断可以使用集成的嵌套拉普拉斯近似(INLA)来完成,众所周知,该近似可产生准确的结果。但是,已知INLA对于具有二进制响应的GLMM不太准确。对于纵向二进制响应数据,通常患者在研究期间不改变其健康状况。在这种情况下,分组协变量完美地预测了响应的子集,这暗示了单调似然性,并且针对簇特定参数的最大似然性(ML)估计有所不同。这称为准完全分离。在本文中,我们基于一项随机临床试验的纵向数据和两次模拟,证明了INLA的准确度随簇特异性准完全分离程度的增加而降低。通过比较INLA,马尔可夫链蒙特卡洛采样和ML的参数估计,可以看出在这种情况下INLA越来越偏离其他方法。

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