多级模型
统计
验证性因素分析
随机效应模型
潜变量
潜在类模型
相关性
群(周期表)
分层数据库模型
层次聚类
因子分析
数学
结构方程建模
计算机科学
数据挖掘
聚类分析
荟萃分析
医学
化学
几何学
内科学
有机化学
作者
Eunsook Kim,Chunhua Cao
标识
DOI:10.1080/00273171.2015.1021447
摘要
Considering that group comparisons are common in social science, we examined two latent group mean testing methods when groups of interest were either at the between or within level of multilevel data: multiple-group multilevel confirmatory factor analysis (MG ML CFA) and multilevel multiple-indicators multiple-causes modeling (ML MIMIC). The performance of these methods were investigated through three Monte Carlo studies. In Studies 1 and 2, either factor variances or residual variances were manipulated to be heterogeneous between groups. In Study 3, which focused on within-level multiple-group analysis, six different model specifications were considered depending on how to model the intra-class group correlation (i.e., correlation between random effect factors for groups within cluster). The results of simulations generally supported the adequacy of MG ML CFA and ML MIMIC for multiple-group analysis with multilevel data. The two methods did not show any notable difference in the latent group mean testing across three studies. Finally, a demonstration with real data and guidelines in selecting an appropriate approach to multilevel multiple-group analysis are provided.
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