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Multivariate generalized linear mixed models with semi-nonparametric and smooth nonparametric random effects densities

机译:具有半非参数和光滑非参数随机效应密度的多元广义线性混合模型

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摘要

We extend the family of multivariate generalized linear mixed models to include random effects that are generated by smooth densities. We consider two such families of densities, the so-called semi-nonparametric (SNP) and smooth nonparametric (SMNP) densities. Maximum likelihood estimation, under either the SNP or the SMNP densities, is carried out using a Monte Carlo EM algorithm. This algorithm uses rejection sampling and automatically increases the MC sample size as it approaches convergence. In a simulation study we investigate the performance of these two densities in capturing the true underlying shape of the random effects distribution. We also examine the implications of misspecification of the random effects distribution on the estimation of the fixed effects and their standard errors. The impact of the assumed random effects density on the estimation of the random effects themselves is investigated in a simulation study and also in an application to a real data set.
机译:我们扩展了多元广义线性混合模型的族,以包括由平滑密度产生的随机效应。我们考虑了两个这样的密度族,即所谓的半非参数(SNP)和光滑非参数(SMNP)密度。使用Monte Carlo EM算法,可以在SNP或SMNP密度下进行最大似然估计。该算法使用拒绝采样,并在趋近收敛时自动增加MC样本大小。在模拟研究中,我们调查了这两种密度在捕获随机效应分布的真实基础形状方面的性能。我们还研究了随机效应分布的错误指定对固定效应及其标准误差的估计的影响。在模拟研究中以及在对真实数据集的应用中,研究了假设的随机效应密度对随机效应自身估计的影响。

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