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Some asymptotic results for semiparametric nonlinear mixed-effects models with incomplete data

机译:具有不完整数据的半参数非线性混合效应模型的一些渐近结果

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摘要

In modeling complex longitudinal data, semiparametric nonlinear mixed-effects (SNLME) models are very flexible and useful. Covariates are often introduced in the models to partially explain the inter-individual variations. In practice, data are often incomplete in the sense that there are often measurement errors and missing data in longitudinal studies. The likelihood method is a standard approach for inference for these models but it can be computationally very challenging, so computationally efficient approximate methods are quite valuable. However, the performance of these approximate methods is often based on limited simulation studies, and theoretical results are unavailable for many approximate methods. In this article, we consider a computationally efficient approximate method for a class of SNLME models with incomplete data and investigate its theoretical properties. We show that the estimates based on the approximate method are consistent and asymptotically normally distributed.
机译:在对复杂的纵向数据进行建模时,半参数非线性混合效应(SNLME)模型非常灵活且有用。通常在模型中引入协变量以部分解释个体之间的变异。实际上,在纵向研究中经常存在测量误差和数据丢失的意义上,数据通常是不完整的。似然法是这些模型推论的一种标准方法,但是它在计算上非常具有挑战性,因此计算有效的近似方法非常有价值。但是,这些近似方法的性能通常基于有限的模拟研究,并且许多近似方法都无法获得理论结果。在本文中,我们考虑了一类具有不完整数据的SNLME模型的高效计算近似方法,并研究了其理论性质。我们表明,基于近似方法的估计是一致的,并且渐近正态分布。

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