Shi Dexin, Lee Taehun, Maydeu-Olivares Alberto
University of South Carolina, Columbia, SC, USA.
Chung-Ang University, Seoul, South Korea.
Educ Psychol Meas. 2019 Apr;79(2):310-334. doi: 10.1177/0013164418783530. Epub 2018 Jun 29.
This study investigated the effect the number of observed variables () has on three structural equation modeling indices: the comparative fit index (CFI), the Tucker-Lewis index (TLI), and the root mean square error of approximation (RMSEA). The behaviors of the population fit indices and their sample estimates were compared under various conditions created by manipulating the number of observed variables, the types of model misspecification, the sample size, and the magnitude of factor loadings. The results showed that the effect of on the population CFI and TLI depended on the type of specification error, whereas a higher was associated with lower values of the population RMSEA regardless of the type of model misspecification. In finite samples, all three fit indices tended to yield estimates that suggested a worse fit than their population counterparts, which was more pronounced with a smaller sample size, higher , and lower factor loading.
本研究调查了观测变量数量()对三个结构方程建模指标的影响:比较拟合指数(CFI)、塔克-刘易斯指数(TLI)和近似均方根误差(RMSEA)。在通过操纵观测变量数量、模型错误设定类型、样本量和因子载荷大小所创建的各种条件下,比较了总体拟合指数及其样本估计值的表现。结果表明,观测变量数量对总体CFI和TLI的影响取决于错误设定的类型,而无论模型错误设定的类型如何,较高的观测变量数量与总体RMSEA的较低值相关。在有限样本中,所有三个拟合指数所产生的估计值往往表明拟合效果比其总体对应值更差,在样本量较小、观测变量数量较多和因子载荷较低的情况下更为明显。