范畴变量
测量不变性
差异项目功能
验证性因素分析
统计
项目反应理论
数学
计量经济学
序数数据
多向拉希模型
心理学
心理测量学
结构方程建模
作者
Eunsook Kim,Myeongsun Yoon
标识
DOI:10.1080/10705511.2011.557337
摘要
This study investigated two major approaches in testing measurement invariance for ordinal measures: multiple-group categorical confirmatory factor analysis (MCCFA) and item response theory (IRT). Unlike the ordinary linear factor analysis, MCCFA can appropriately model the ordered-categorical measures with a threshold structure. A simulation study under various conditions was conducted for the comparison of MCCFA and IRT with respect to the power to detect the lack of invariance across groups. Both MCCFA and IRT showed reasonable power to identify the noninvariant item when differential item functioning (DIF) was large. The false positive rates were relatively high in both methods, however. The adjustment of critical values improved the performance of MCCFA by reducing false positive rates substantially and yet yielding adequate power. Alternative model fit indexes of MCCFA were also examined and they were found to be reliable to detect DIF, in general.
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