Geiser Christian, Bishop Jacob, Lockhart Ginger
Department of Psychology, Utah State University Logan, UT, USA.
Front Psychol. 2015 Aug 3;6:946. doi: 10.3389/fpsyg.2015.00946. eCollection 2015.
Models of confirmatory factor analysis (CFA) are frequently applied to examine the convergent validity of scores obtained from multiple raters or methods in so-called multitrait-multimethod (MTMM) investigations. Many applications of CFA-MTMM and similarly structured models result in solutions in which at least one method (or specific) factor shows non-significant loading or variance estimates. Eid et al. (2008) distinguished between MTMM measurement designs with interchangeable (randomly selected) vs. structurally different (fixed) methods and showed that each type of measurement design implies specific CFA-MTMM measurement models. In the current study, we hypothesized that some of the problems that are commonly seen in applications of CFA-MTMM models may be due to a mismatch between the underlying measurement design and fitted models. Using simulations, we found that models with M method factors (where M is the total number of methods) and unconstrained loadings led to a higher proportion of solutions in which at least one method factor became empirically unstable when these models were fit to data generated from structurally different methods. The simulations also revealed that commonly used model goodness-of-fit criteria frequently failed to identify incorrectly specified CFA-MTMM models. We discuss implications of these findings for other complex CFA models in which similar issues occur, including nested (bifactor) and latent state-trait models.
验证性因子分析(CFA)模型经常被用于检验在所谓的多特质多方法(MTMM)研究中从多个评分者或方法获得的分数的收敛效度。CFA-MTMM以及结构相似模型的许多应用都得到了这样的结果:至少有一个方法(或特定)因子显示出不显著的载荷或方差估计。艾 Eid等人(2008)区分了具有可互换(随机选择)方法与结构不同(固定)方法的MTMM测量设计,并表明每种测量设计都意味着特定的CFA-MTMM测量模型。在当前的研究中,我们假设CFA-MTMM模型应用中常见的一些问题可能是由于潜在的测量设计与拟合模型之间的不匹配。通过模拟,我们发现具有M个方法因子(其中M是方法的总数)且载荷无约束的模型,当这些模型拟合从结构不同的方法生成的数据时,会导致更高比例的解,其中至少有一个方法因子在经验上变得不稳定。模拟还表明,常用的模型拟合优度标准经常无法识别指定错误的CFA-MTMM模型。我们讨论了这些发现对其他出现类似问题的复杂CFA模型的影响,包括嵌套(双因子)模型和潜在状态-特质模型。