Asymptotic Relative Efficiency Comparison for some Fit Indices in Structural Equation Modeling

İlkay Doğan, İ. Doğan, N. Doğan
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Abstract

There are many fit statistics used in the structural equation modeling, and new ones are consistently being developed. Because of the variety of fit statistics, it is very important to be able to decide which fit statistics are appropriate to use in studies. When comparing any two statistics, the asymptotic relative efficiency (ARE) between them is used. The ARE can use as a power of the fit indices is one of the familiar optimal criteria. It is frequently more convenient, and also more suggestive, to use a measure of relative merit called the relative efficiency. This study aimed to compare of fit indices using Fraser’s asymptotic relative efficiency. The data sets were derived from the multivariate normal distribution using the mean vector and covariance matrix. It was determined that the most efficient fit indices in terms of asymptotic relative efficiency were Z-Test of Wilson & Hilferty (W&H), Root Mean Square Error of Approximation (RMSEA), and Chi-Square indices, respectively.
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结构方程模型中一些拟合指标的渐近相对效率比较
结构方程建模中使用的拟合统计量有很多,而且新的拟合统计量还在不断开发中。由于拟合统计量种类繁多,因此在研究中决定使用哪种拟合统计量是非常重要的。在比较任何两个统计量时,都要使用它们之间的渐近相对效率(ARE)。ARE 可以用作拟合指数的幂次,是我们熟悉的最优标准之一。通常,使用一种称为相对效率的相对优劣度量更为方便,也更具暗示性。本研究旨在使用 Fraser 的渐近相对效率对拟合指数进行比较。数据集来自多元正态分布,使用均值向量和协方差矩阵。结果表明,就渐近相对效率而言,最有效的拟合指数分别是 Wilson & Hilferty(W&H)的 Z 检验指数、均方根近似误差(RMSEA)指数和 Chi-Square 指数。
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审稿时长
10 weeks
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