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The Choice of Normal-Theory Weight Matrix When Computing Robust Standard Errors in Confirmatory Factor Analysis

机译:验证性因子分析中计算稳健标准误差时标准理论权重矩阵的选择

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摘要

Robust standard errors are of central importance in confirmatory factor models. In calculating these statistics a central ingredient is the inverse of the asymptotic covariance matrix of second-order moments calculated under the assumption of normality. Currently, two ways of estimating this matrix are employed in software packages. One approach uses the sample covariance matrix, the other the model-implied covariance matrix. Previous research based on a small confirmatory factor model demonstrated that the latter approach yielded a slight improvement in standard error performance. The present study argues theoretically that the discrepancy between the two approaches increases in models where there are few model parameters relative to , where is the number of observed variables. We present simulation results that support this claim, in both small and large correctly specified models, across a large variety of non-normal conditions. We recommend the model-implied covariance matrix for robust standard error computation.
机译:稳健的标准误差在确认因子模型中至关重要。在计算这些统计量时,中心成分是在正态性假设下计算的二阶矩的渐近协方差矩阵的逆。当前,在软件包中采用了两种估计该矩阵的方式。一种方法使用样本协方差矩阵,另一种方法使用模型暗示的协方差矩阵。先前基于小的验证性因子模型的研究表明,后一种方法在标准差错性能方面产生了轻微的改善。从理论上讲,本研究认为,在模型参数相对于,观察变量数量为的模型较少的情况下,两种方法之间的差异会增加。我们提供了模拟结果,在各种非正常条件下,无论大小正确,该模型都支持正确的大小模型。我们建议使用模型隐含的协方差矩阵进行鲁棒的标准误差计算。

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