Lee Hyunjung, Cham Heining
Fordham University, Bronx, NY, USA.
Educ Psychol Meas. 2024 Dec;84(6):1173-1202. doi: 10.1177/00131644241240435. Epub 2024 Apr 17.
Determining the number of factors in exploratory factor analysis (EFA) is crucial because it affects the rest of the analysis and the conclusions of the study. Researchers have developed various methods for deciding the number of factors to retain in EFA, but this remains one of the most difficult decisions in the EFA. The purpose of this study is to compare the parallel analysis with the performance of fit indices that researchers have started using as another strategy for determining the optimal number of factors in EFA. The Monte Carlo simulation was conducted with ordered categorical items because there are mixed results in previous simulation studies, and ordered categorical items are common in behavioral science. The results of this study indicate that the parallel analysis and the root mean square error of approximation (RMSEA) performed well in most conditions, followed by the Tucker-Lewis index (TLI) and then by the comparative fit index (CFI). The robust corrections of CFI, TLI, and RMSEA performed better in detecting misfit underfactored models than the original fit indices. However, they did not produce satisfactory results in dichotomous data with a small sample size. Implications, limitations of this study, and future research directions are discussed.
在探索性因子分析(EFA)中确定因子数量至关重要,因为它会影响分析的其余部分以及研究结论。研究人员已开发出各种方法来确定EFA中要保留的因子数量,但这仍然是EFA中最困难的决策之一。本研究的目的是将平行分析与拟合指数的性能进行比较,研究人员已开始将拟合指数用作确定EFA中最佳因子数量的另一种策略。由于先前的模拟研究结果不一,且有序分类项目在行为科学中很常见,因此对有序分类项目进行了蒙特卡罗模拟。本研究结果表明,平行分析和近似均方根误差(RMSEA)在大多数情况下表现良好,其次是塔克-刘易斯指数(TLI),然后是比较拟合指数(CFI)。CFI、TLI和RMSEA的稳健校正比原始拟合指数在检测欠因子模型的失配方面表现更好。然而,在小样本量的二分数据中,它们并未产生令人满意的结果。讨论了本研究的意义、局限性以及未来的研究方向。