Lee Chun-Ting, Zhang Guangjian, Edwards Michael C
a University of Notre Dame.
b The Ohio State University.
Multivariate Behav Res. 2012 Mar 30;47(2):314-39. doi: 10.1080/00273171.2012.658340.
Exploratory factor analysis (EFA) is often conducted with ordinal data (e.g., items with 5-point responses) in the social and behavioral sciences. These ordinal variables are often treated as if they were continuous in practice. An alternative strategy is to assume that a normally distributed continuous variable underlies each ordinal variable. The EFA model is specified for these underlying continuous variables rather than the observed ordinal variables. Although these underlying continuous variables are not observed directly, their correlations can be estimated from the ordinal variables. These correlations are referred to as polychoric correlations. This article is concerned with ordinary least squares (OLS) estimation of parameters in EFA with polychoric correlations. Standard errors and confidence intervals for rotated factor loadings and factor correlations are presented. OLS estimates and the associated standard error estimates and confidence intervals are illustrated using personality trait ratings from 228 college students. Statistical properties of the proposed procedure are explored using a Monte Carlo study. The empirical illustration and the Monte Carlo study showed that (a) OLS estimation of EFA is feasible with large models, (b) point estimates of rotated factor loadings are unbiased,
探索性因素分析(EFA)在社会科学和行为科学中常被用于有序数据(例如,具有5级回答的项目)。在实际操作中,这些有序变量常常被当作连续变量来处理。另一种策略是假设每个有序变量都有一个服从正态分布的连续变量作为其基础。EFA模型是针对这些潜在的连续变量而非观测到的有序变量来设定的。尽管这些潜在的连续变量不能直接观测到,但它们的相关性可以从有序变量中估计出来。这些相关性被称为多列相关。本文关注的是具有多列相关的EFA中参数的普通最小二乘法(OLS)估计。文中给出了旋转因子载荷和因子相关性的标准误差和置信区间。利用228名大学生的人格特质评分对OLS估计以及相关的标准误差估计和置信区间进行了说明。通过蒙特卡罗研究探索了所提出方法的统计特性。实证例证和蒙特卡罗研究表明:(a)对于大型模型,EFA的OLS估计是可行的;(b)旋转因子载荷的点估计是无偏的,