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Recovery of weak factor loadings in confirmatory factor analysis under conditions of model misspecification

机译:在模型错误指定的情况下,在验证性因子分析中恢复弱因子负载

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This article presents the results of two Monte Carlo simulation studies of the recovery of weak factor loadings, in the context of confirmatory factor analysis, for models that do not exactly hold in the population. This issue has not been examined in previous research. Model error was introduced using a procedure that allows for specifying a covariance structure with a specified discrepancy in the population. The effects of sample size, estimation method (maximum likelihood vs. unweighted least squares), and factor correlation were also considered. The first simulation study examined recovery for models correctly specified with the known number of factors, and the second investigated recovery for models incorrectly specified by underfactoring. The results showed that recovery was not affected by model discrepancy for the correctly specified models but was affected for the incorrectly specified models. Recovery improved in both studies when factors were correlated, and unweighted least squares performed better than maximum likelihood in recovering the weak factor loadings.
机译:本文介绍了两次蒙特卡洛模拟研究的结果,这些研究是在不确定性因子分析的背景下,针对不完全包含在总体中的模型的弱因子负载的恢复。在以前的研究中尚未研究此问题。使用允许指定总体中具有指定差异的协方差结构的过程引入了模型误差。还考虑了样本量,估计方法(最大似然比与未加权最小二乘法)和因子相关性的影响。第一次仿真研究检查了使用已知数目的因子正确指定的模型的恢复,第二次研究研究了因分解不足而错误指定的模型的恢复。结果表明,对于正确指定的模型,恢复不受模型差异的影响,但对于错误指定的模型,恢复影响。当因子相关时,两项研究的恢复均得到改善,未加权最小二乘法在恢复弱因子负荷方面的表现优于最大可能性。

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