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A Solution to Modeling Multilevel Confirmatory Factor Analysis with Data Obtained from Complex Survey Sampling to Avoid Conflated Parameter Estimates

机译:一种使用复杂调查抽样数据避免多参数确认因子建模的避免建模参数估计的解决方案

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The issue of equality in the between-and within-level structures in Multilevel Confirmatory Factor Analysis (MCFA) models has been influential for obtaining unbiased parameter estimates and statistical inferences. A commonly seen condition is the inequality of factor loadings under equal level-varying structures. With mathematical investigation and Monte Carlo simulation, this study compared the robustness of five statistical models including two model-based (a true and a mis-specified models), one design-based, and two maximum models (two models where the full rank of variance-covariance matrix is estimated in between level and within level, respectively) in analyzing complex survey measurement data with level-varying factor loadings. The empirical data of 120 3rd graders' (from 40 classrooms) perceived Harter competence scale were modeled using MCFA and the parameter estimates were used as true parameters to perform the Monte Carlo simulation study. Results showed maximum models was robust to unequal factor loadings while the design-based and the miss-specified model-based approaches produced conflated results and spurious statistical inferences. We recommend the use of maximum models if researchers have limited information about the pattern of factor loadings and measurement structures. Measurement models are key components of Structural Equation Modeling (SEM); therefore, the findings can be generalized to multilevel SEM and CFA models. Mplus codes are provided for maximum models and other analytical models.
机译:多级验证性因子分析(MCFA)模型中的层级内部结构之间的相等性问题对于获得无偏参数估计和统计推断具有影响力。一个常见的条件是在等高不变结构下因素荷载的不平等性。通过数学调查和蒙特卡洛模拟,本研究比较了五个统计模型的稳健性,其中包括两个基于模型的(正确和错误指定的模型),一个基于设计的模型和两个最大模型(两个模型的全等级为在分析具有水平变化因子负载的复杂调查测量数据时,分别在水平之间和水平内估计方差-协方差矩阵。使用MCFA对120名三年级学生(来自40个教室)的Harter能力量表的经验数据进行建模,并将参数估计值用作真实参数,以进行蒙特卡洛模拟研究。结果表明,最大模型对于不等因子加载具有鲁棒性,而基于设计和未指定模型的方法则产生了混淆的结果和虚假的统计推断。如果研究人员对因子加载和测量结构的信息了解有限,我们建议使用最大模型。测量模型是结构方程模型(SEM)的关键组成部分;因此,研究结果可以推广到多层次SEM和CFA模型。提供了Mplus代码用于最大模型和其他分析模型。

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