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Estimation of Time-Unstructured Nonlinear Mixed-Effects Mixture Models

机译:时间非结构化非线性混合效应混合模型的估计

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Change over time often takes on a nonlinear form. Furthermore, change patterns can be characterized by heterogeneity due to unobserved subpopulations. Nonlinear mixed-effects mixture models provide one way of addressing both of these issues. This study attempts to extend these models to accommodate time-unstructured data. We develop methods to fit these models in both the structural equation modeling framework as well as the Bayesian framework and evaluate their performance. Simulations show that the success of these methods is driven by the separation between latent classes. When classes are well separated, a sample of 200 is sufficient. Otherwise, a sample of 1,000 or more is required before parameters can be accurately recovered. Ignoring individually varying measurement occasions can also lead to substantial bias, particularly in the random-effects parameters. Finally, we demonstrate the application of these techniques to a data set involving the development of reading ability in children.
机译:随着时间的变化通常采用非线性形式。此外,由于未观察到的亚群,变化模式的特征可以是异质性。非线性混合效应混合模型提供了解决这两个问题的一种方法。这项研究试图扩展这些模型以适应非结构​​化数据。我们开发了在结构方程建模框架和贝叶斯框架中都适合这些模型的方法,并评估了它们的性能。仿真表明,这些方法的成功取决于潜在类之间的分离。如果将各类很好地分开,则200个样本就足够了。否则,在可以准确恢复参数之前,需要1,000个或更多的样本。忽略个别变化的测量场合也会导致很大的偏差,尤其是在随机效应参数方面。最后,我们证明了这些技术在涉及儿童阅读能力发展的数据集上的应用。

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