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Normal Theory GLS Estimator for Missing Data: An Application to Item-Level Missing Data and a Comparison to Two-Stage ML

机译:缺失数据的正态理论GLS估计器:项目级缺失数据的应用和两阶段ML的比较

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Structural equation models (SEMs) can be estimated using a variety of methods. For complete normally distributed data, two asymptotically efficient estimation methods exist: maximum likelihood (ML) and generalized least squares (GLS). With incomplete normally distributed data, an extension of ML called “full information” ML (FIML), is often the estimation method of choice. An extension of GLS to incomplete normally distributed data has never been developed or studied. In this article we define the “full information” GLS estimator for incomplete normally distributed data (FIGLS). We also identify and study an important application of the new GLS approach. In many modeling contexts, the variables in the SEM are linear composites (e.g., sums or averages) of the raw items. For instance, SEMs often use parcels (sums of raw items) as indicators of latent factors. If data are missing at the item level, but the model is at the composite level, FIML is not possible. In this situation, FIGLS may be the only asymptotically efficient estimator available. Results of a simulation study comparing the new FIGLS estimator to the best available analytic alternative, two-stage ML, with item-level missing data are presented.
机译:结构方程模型(SEM)可以使用多种方法进行估算。对于完整的正态分布数据,存在两种渐近有效的估计方法:最大似然(ML)和广义最小二乘(GLS)。对于不完整的正态分布数据,通常将ML称为“完整信息” ML(FIML)的扩展作为估计方法。从未开发或研究将GLS扩展到不完整的正态分布数据。在本文中,我们为不完整的正态分布数据(FIGLS)定义了“完整信息” GLS估计器。我们还将确定并研究新GLS方法的重要应用。在许多建模环境中,SEM中的变量是原始项目的线性组合(例如,总和或平均值)。例如,SEM经常使用包裹(原始项目的总和)作为潜在因素的指标。如果在项目级别缺少数据,但模型在组合级别,则FIML是不可能的。在这种情况下,FIGLS可能是唯一可用的渐近有效估计器。提出了一项仿真研究的结果,将新的FIGLS估算器与最佳可用分析替代方案(两阶段ML)进行了比较,并得出了项目级别的缺失数据。

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