分析观察到的组间综合差异:部分测量不变性是否足够?

IF 2 3区 心理学 Q2 PSYCHOLOGY, MATHEMATICAL
Holger Steinmetz
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引用次数: 228

摘要

虽然结构方程模型的使用在过去几十年中有所增加,但调查组间平均差异的典型程序仍然是从几个指标中创建观察到的综合得分,并比较组间综合得分的平均值。尽管结构方程建模文献强调,潜在均值的比较以大多数指标(即部分不变性)的因子载荷和指标截距相等为前提,但依赖于观察到的复合材料时,部分不变性是否足够仍然未知。这项蒙特卡罗研究调查了一个或两个不相等的因素负荷和指标截点是否会导致关于潜在均值差异的错误结论。结果表明,不相等的指标截距极大地影响了综合平均差和显著综合差的概率。相反,不相等的因子负荷只显示出很小的影响。结论是……
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analyzing observed composite differences across groups: Is partial measurement invariance enough?
Although the use of structural equation modeling has increased during the last decades, the typical procedure to investigate mean differences across groups is still to create an observed composite score from several indicators and to compare the composite’s mean across the groups. Whereas the structural equation modeling literature has emphasized that a comparison of latent means presupposes equal factor loadings and indicator intercepts for most of the indicators (i.e., partial invariance), it is still unknown if partial invariance is sufficient when relying on observed composites. This Monte-Carlo study investigated whether one or two unequal factor loadings and indicator intercepts in a composite can lead to wrong conclusions regarding latent mean differences. Results show that unequal indicator intercepts substantially affect the composite mean difference and the probability of a significant composite difference. In contrast, unequal factor loadings demonstrate only small effects. It is concluded that...
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来源期刊
CiteScore
2.70
自引率
6.50%
发文量
16
审稿时长
36 weeks
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