Tomas J M, Hontangas P M, Oliver A
Multivariate Behav Res. 2000 Oct 1;35(4):469-99. doi: 10.1207/S15327906MBR3504_03.
Two models for confirmatory factor analysis of multitrait-multimethod data (MTMM) were assessed, the correlated traits-correlated methods (CTCM), and the correlated traits-correlated uniqueness models (CTCU). Two Monte Carlo experiments (100 replications per cell) were performed to study the behavior of these models in terms of magnitude and direction of bias, and accuracy of estimates. Study one included a single indicator per trait-method combination, and it manipulated three independent variables: matrix type, from three traits-three methods to six traits-six methods; correlation among method factors, from zero to .6; and model type (CTCM and CTCU). Study two included simulated MTMM matrices with two or more indicators per trait-method combination. Again, three independent variables were manipulated: number of indicators per trait-method combination, from 2 to 5; correlation among methods; and model type, CTCM and CTCU. The results from study one showed that the CTCU model performed very well for MTMM designs with a single indicator per trait-method combination, and consistently better than the CTCM model. However, the results from study two showed that the CTCM model worked reasonably well and better than the CTCU model when more than two indicators per trait-method combination were available. Despite the CTCM model's allowance for correlation between methods, results pointed to better estimates when methods were orthogonal. The main conclusion of the present article is that the use of CTCU models in the situations described in study one and the use of CTCM models in those represented in study two could be recommended.
对多特质-多方法数据(MTMM)的验证性因素分析的两种模型进行了评估,即相关特质-相关方法(CTCM)模型和相关特质-相关独特性模型(CTCU)。进行了两项蒙特卡洛实验(每个单元格100次重复),以研究这些模型在偏差的大小和方向以及估计准确性方面的表现。研究一在每个特质-方法组合中包含一个单一指标,并操纵了三个自变量:矩阵类型,从三特质-三方法到六特质-六方法;方法因素之间的相关性,从零到0.6;以及模型类型(CTCM和CTCU)。研究二包含每个特质-方法组合有两个或更多指标的模拟MTMM矩阵。同样,操纵了三个自变量:每个特质-方法组合的指标数量,从2到5;方法之间的相关性;以及模型类型,CTCM和CTCU。研究一的结果表明,对于每个特质-方法组合有一个单一指标的MTMM设计,CTCU模型表现非常好,并且始终优于CTCM模型。然而,研究二的结果表明,当每个特质-方法组合有两个以上指标时,CTCM模型运行得相当好,并且比CTCU模型更好。尽管CTCM模型允许方法之间存在相关性,但结果表明当方法正交时估计效果更好。本文的主要结论是,建议在研究一描述的情况下使用CTCU模型,在研究二代表的情况下使用CTCM模型。