Green Samuel B, Redell Nickalus, Thompson Marilyn S, Levy Roy
Arizona State University, Tempe, AZ, USA.
Educ Psychol Meas. 2016 Feb;76(1):5-21. doi: 10.1177/0013164415581898. Epub 2015 Apr 21.
Parallel analysis (PA) is a useful empirical tool for assessing the number of factors in exploratory factor analysis. On conceptual and empirical grounds, we argue for a revision to PA that makes it more consistent with hypothesis testing. Using Monte Carlo methods, we evaluated the relative accuracy of the revised PA (R-PA) and traditional PA (T-PA) methods for factor analysis of tetrachoric correlations between items with binary responses. We manipulated five data generation factors: number of observations, type of factor model, factor loadings, correlation between factors, and distribution of thresholds. The R-PA method tended to be more accurate than T-PA, although not uniformly across conditions. R-PA tended to perform better relative to T-PA if the underlying model (a) was unidimensional but had some unique items, (b) had highly correlated factors, or (c) had a general factor as well as a group factor. In addition, R-PA tended to outperform T-PA if items had higher factor loadings and sample size was large. A major disadvantage of the T-PA method was that it frequently yielded inflated Type I error rates.
平行分析(PA)是探索性因素分析中评估因素数量的一种有用的实证工具。基于概念和实证依据,我们主张对PA进行修订,使其与假设检验更加一致。我们使用蒙特卡洛方法,评估了修订后的PA(R-PA)和传统PA(T-PA)方法在对具有二元反应的项目之间的四分相关进行因素分析时的相对准确性。我们操纵了五个数据生成因素:观察次数、因素模型类型、因素负荷、因素之间的相关性以及阈值分布。R-PA方法往往比T-PA更准确,尽管并非在所有条件下都是如此。如果基础模型(a)是单维的但有一些独特项目,(b)有高度相关的因素,或(c)有一个一般因素以及一个组因素,相对于T-PA,R-PA往往表现更好。此外,如果项目具有较高的因素负荷且样本量较大,R-PA往往优于T-PA。T-PA方法的一个主要缺点是它经常产生过高的I型错误率。