Hsiao Yu-Yu, Lai Mark H C
Center on Alcoholism, Substance Abuse, and Addictions, University of New Mexico, Albuquerque, NM, United States.
School of Education, University of Cincinnati, Cincinnati, OH, United States.
Front Psychol. 2018 May 15;9:740. doi: 10.3389/fpsyg.2018.00740. eCollection 2018.
Moderation effect is a commonly used concept in the field of social and behavioral science. Several studies regarding the implication of moderation effects have been done; however, little is known about how partial measurement invariance influences the properties of tests for moderation effects when categorical moderators were used. Additionally, whether the impact is the same across single and multilevel data is still unknown. Hence, the purpose of the present study is twofold: (a) To investigate the performance of the moderation test in single-level studies when measurement invariance does not hold; (b) To examine whether unique features of multilevel data, such as intraclass correlation (ICC) and number of clusters, influence the effect of measurement non-invariance on the performance of tests for moderation. Simulation results indicated that falsely assuming measurement invariance lead to biased estimates, inflated Type I error rates, and more gain or more loss in power (depends on simulation conditions) for the test of moderation effects. Such patterns were more salient as sample size and the number of non-invariant items increase for both single- and multi-level data. With multilevel data, the cluster size seemed to have a larger impact than the number of clusters when falsely assuming measurement invariance in the moderation estimation. ICC was trivially related to the moderation estimates. Overall, when testing moderation effects with categorical moderators, employing a model that accounts for the measurement (non)invariance structure of the predictor and/or the outcome is recommended.
调节效应是社会和行为科学领域常用的概念。已有多项关于调节效应含义的研究;然而,当使用分类调节变量时,部分测量不变性如何影响调节效应检验的性质却鲜为人知。此外,这种影响在单层次数据和多层次数据中是否相同仍不清楚。因此,本研究的目的有两个:(a) 研究在测量不变性不成立时,单层次研究中调节检验的表现;(b) 检验多层次数据的独特特征,如组内相关系数(ICC)和聚类数量,是否会影响测量非不变性对调节检验表现的作用。模拟结果表明,错误地假定测量不变性会导致有偏估计、第一类错误率膨胀,以及调节效应检验的功效有更多增加或减少(取决于模拟条件)。对于单层次和多层次数据,随着样本量和非不变项目数量的增加,这种模式更加明显。对于多层次数据,在调节效应估计中错误地假定测量不变性时,聚类大小似乎比聚类数量的影响更大。ICC与调节效应估计的关系微不足道。总体而言,当使用分类调节变量检验调节效应时,建议采用考虑预测变量和/或结果的测量(非)不变性结构的模型。