Li Cheng-Hsien
Department of Pediatrics, Children's Learning Institute, University of Texas Health Science Center at Houston, Houston, TX, USA.
Behav Res Methods. 2016 Sep;48(3):936-49. doi: 10.3758/s13428-015-0619-7.
In confirmatory factor analysis (CFA), the use of maximum likelihood (ML) assumes that the observed indicators follow a continuous and multivariate normal distribution, which is not appropriate for ordinal observed variables. Robust ML (MLR) has been introduced into CFA models when this normality assumption is slightly or moderately violated. Diagonally weighted least squares (WLSMV), on the other hand, is specifically designed for ordinal data. Although WLSMV makes no distributional assumptions about the observed variables, a normal latent distribution underlying each observed categorical variable is instead assumed. A Monte Carlo simulation was carried out to compare the effects of different configurations of latent response distributions, numbers of categories, and sample sizes on model parameter estimates, standard errors, and chi-square test statistics in a correlated two-factor model. The results showed that WLSMV was less biased and more accurate than MLR in estimating the factor loadings across nearly every condition. However, WLSMV yielded moderate overestimation of the interfactor correlations when the sample size was small or/and when the latent distributions were moderately nonnormal. With respect to standard error estimates of the factor loadings and the interfactor correlations, MLR outperformed WLSMV when the latent distributions were nonnormal with a small sample size of N = 200. Finally, the proposed model tended to be over-rejected by chi-square test statistics under both MLR and WLSMV in the condition of small sample size N = 200.
在验证性因素分析(CFA)中,使用最大似然法(ML)时假定观测指标服从连续的多元正态分布,这对于有序观测变量并不适用。当这种正态性假设被轻微或中度违背时,稳健最大似然法(MLR)已被引入到CFA模型中。另一方面,对角加权最小二乘法(WLSMV)是专门为有序数据设计的。虽然WLSMV对观测变量不做分布假设,但假定每个观测分类变量背后存在正态潜在分布。进行了一项蒙特卡罗模拟,以比较潜在反应分布的不同配置、类别数量和样本量对相关双因素模型中模型参数估计、标准误差和卡方检验统计量的影响。结果表明,在几乎所有条件下,WLSMV在估计因素载荷时比MLR偏差更小且更准确。然而,当样本量较小或/且潜在分布为中度非正态时,WLSMV会对因素间相关性产生中度高估。关于因素载荷和因素间相关性的标准误差估计,当潜在分布为非正态且样本量较小时(N = 200),MLR的表现优于WLSMV。最后,在样本量较小(N = 200)的情况下,在MLR和WLSMV两种方法下,所提出的模型往往会被卡方检验统计量过度拒绝。