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Correcting Model Fit Criteria for Small Sample Latent Growth Models With Incomplete Data

机译:修正不完整数据的小样本潜在增长模型的模型拟合标准

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摘要

To date, small sample problems with latent growth models (LGMs) have not received the amount of attention in the literature as related mixed-effect models (MEMs). Although many models can be interchangeably framed as a LGM or a MEM, LGMs uniquely provide criteria to assess global data–model fit. However, previous studies have demonstrated poor small sample performance of these global data–model fit criteria and three post hoc small sample corrections have been proposed and shown to perform well with complete data. However, these corrections use sample size in their computation—whose value is unclear when missing data are accommodated with full information maximum likelihood, as is common with LGMs. A simulation is provided to demonstrate the inadequacy of these small sample corrections in the near ubiquitous situation in growth modeling where data are incomplete. Then, a missing data correction for the small sample correction equations is proposed and shown through a simulation study to perform well in various conditions found in practice. An applied developmental psychology example is then provided to demonstrate how disregarding missing data in small sample correction equations can greatly affect assessment of global data–model fit.
机译:迄今为止,与潜在的混合效应模型(MEMs)相比,具有潜在增长模型(LGM)的小样本问题在文献中还没有得到足够的重视。尽管许多模型可以互换地构造为LGM或MEM,但是LGM唯一地提供了评估全局数据模型拟合的标准。但是,先前的研究表明,这些全局数据模型拟合标准的小样本性能较差,并且提出了三个事后小样本校正,并显示在完整数据下表现良好。但是,这些校正在计算中使用样本大小-当丢失的数据以完整的信息最大似然性容纳时,其值尚不清楚,这与LGM常见。提供了一个仿真,以证明在数据不完整的增长建模中几乎无处不在的情况下,这些小样本校正的不足。然后,提出了针对小样本校正方程的缺失数据校正,并通过仿真研究显示了该数据校正,以在实践中发现的各种条件下表现良好。然后提供了一个实用的发展心理学示例,以演示忽略小样本校正方程式中的缺失数据会如何极大地影响对全局数据模型拟合的评估。

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