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Local Fit Evaluation of Structural Equation Models Using Graphical Criteria

机译:使用图形标准对结构方程模型的局部拟合评估

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Evaluation of model fit is critically important for every structural equation model (SEM), and sophisticated methods have been developed for this task. Among them are the χ~2 goodness-of-fit test, decomposition of the χ~2, derived measures like the popular root mean square error of approximation (RMSEA) or comparative fit index (CFI), or inspection of residuals or modification indices. Many of these methods provide a global approach to model fit evaluation: A single index is computed that quantifies the fit of the entire SEM to the data. In contrast, graphical criteria like d-separation or trek-separation allow derivation of implications that can be used for local fit evaluation, an approach that is hardly ever applied. We provide an overview of local fit evaluation from the viewpoint of SEM practitioners. In the presence of model misfit, local fit evaluation can potentially help in pinpointing where the problem with the model lies. For models that do fit the data, local tests can identify the parts of the model that are corroborated by the data. Local tests can also be conducted before a model is fitted at all, and they can be used even for models that are globally underidentified. We discuss appropriate statistical local tests, and provide applied examples. We also present novel software in'R that automates this type of local fit evaluation.
机译:模型拟合的评估对于每个结构方程模型(SEM)至关重要,并且已经为此任务开发了复杂的方法。其中包括χ〜2拟合测试,χ2的分解,衍生的措施,例如流行的均方根近似(RMSEA)或比较拟合指数(CFI)或对残差或修改指标的检查。其中许多方法提供了一种全局模型拟合评估的方法:计算单个索引,以量化整个SEM对数据的拟合。相反,诸如D分隔或跋涉分离之类的图形标准允许推导可用于局部拟合评估的含义,这是一种几乎无法应用的方法。我们从SEM从业人员的角度提供了本地拟合评估的概述。在模型不合适的情况下,局部拟合评估可能有助于指出模型的问题所在的位置。对于确实适合数据的模型,本地测试可以识别模型的部分,这些部分是由数据证实的。在完全拟合模型之前,还可以进行本地测试,即使是用于全球识别的模型,也可以使用它们。我们讨论适当的局部测试,并提供应用示例。我们还展示了自动化这种本地拟合评估的新型软件。

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