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首页> 外文期刊>Multivariate behavioral research >The Influence of Number of Categories and Threshold Values on Fit Indices in Structural Equation Modeling with Ordered Categorical Data
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The Influence of Number of Categories and Threshold Values on Fit Indices in Structural Equation Modeling with Ordered Categorical Data

机译:秩序分类数据结构方程模型中拟合指标对拟合指标的影响

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摘要

This study examines the unscaled and scaled root mean square error of approximation (RMSEA), comparative fit index (CFI), and Tucker-Lewis index (TLI) of diagonally weighted least squares (DWLS) and unweighted least squares (ULS) estimators in structural equation modeling with ordered categorical data. We show that the number of categories and threshold values for categorization can unappealingly impact the DWLS unscaled and scaled fit indices, as well as the ULS scaled fit indices in the population, given that analysis models are misspecified and that the threshold structure is saturated. Consequently, a severely misspecified model may be considered acceptable, depending on how the underlying continuous variables are categorized. The corresponding CFI and TLI are less dependent on the categorization than RMSEA but are less sensitive to model misspecification in general. In contrast, the number of categories and threshold values do not impact the ULS unscaled fit indices in the population.
机译:本研究检查了近似(RMSEA),对角线加权最小二乘(DWLS)的近似(RMSEA),比较拟合指数(CFI)和Tucker-Lewis指数(TLI)的未划分和缩放的根均方误差和结构中的未加权最小二乘法(ULS)估计值有序分类数据的等式建模。我们表明,分类的类别数量和阈值可以解开地影响DWLS Unscaled和缩放的拟合指数,以及鉴于分析模型被遗漏并且阈值结构饱和而达到群体中的ULS缩放符合索引。因此,根据基础连续变量如何分类,可能被认为是可接受的。相应的CFI和TLI依赖于分类而不是RMSEA,但通常对模型误操作敏感。相比之下,类别和阈值的数量不会影响人口中的ULS Unscaled Fit指数。

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