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Maximum Likelihood Estimation of Structural Equation Models for Continuous Data: Standard Errors and Goodness of Fit

机译:连续数据的结构方程模型的最大似然估计:标准误差和拟合优度

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摘要

Classical accounts of maximum likelihood (ML) estimation of structural equation models for continuous outcomes involve normality assumptions: standard errors (SEs) are obtained using the expected information matrix and the goodness of fit of the model is tested using the likelihood ratio (LR) statistic. Satorra and Bentler (1994) introduced SEs and mean adjustments or mean and variance adjustments to the LR statistic (involving also the expected information matrix) that are robust to nonnormality. However, in recent years, SEs obtained using the observed information matrix and alternative test statistics have become available. We investigate what choice of SE and test statistic yields better results using an extensive simulation study. We found that robust SEs computed using the expected information matrix coupled with a mean- and variance-adjusted LR test statistic (i.e., MLMV) is the optimal choice, even with normally distributed data, as it yielded the best combination of accurate SEs and Type I errors.
机译:结构方程模型对连续结果的最大似然(ML)估计的经典解释包括正态性假设:使用预期信息矩阵获得标准误差(SE),并使用似然比(LR)统计量测试模型的拟合优度。 Satorra和Bentler(1994)将SE和均值调整或均值和方差调整引入了对非正态性很强的LR统计量(还涉及预期的信息矩阵)。但是,近年来,已经有了使用观察到的信息矩阵和替代测试统计数据获得的SE。我们使用广泛的模拟研究来研究选择SE和检验统计量会产生更好的结果。我们发现,使用期望的信息矩阵以及均值和方差调整后的LR测试统计量(即MLMV)计算出的鲁棒SE是最佳选择,即使使用正态分布的数据也是如此,因为它产生了精确SE和类型的最佳组合我错了。

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