Xia Yan
University of Illinois at Urbana-Champaign, Champaign, IL, USA.
Educ Psychol Meas. 2021 Dec;81(6):1143-1171. doi: 10.1177/0013164421992836. Epub 2021 Feb 15.
Despite the existence of many methods for determining the number of factors, none outperforms the others under every condition. This study compares traditional parallel analysis (TPA), revised parallel analysis (RPA), Kaiser's rule, minimum average partial, sequential χ, and sequential root mean square error of approximation, comparative fit index, and Tucker-Lewis index under a realistic scenario in behavioral studies, where researchers employ a closing-fitting parsimonious model with factors to approximate a population model, leading to a trivial model-data misfit. Results show that while traditional and RPA both stand out when zero population-level misfits exist, the accuracy of RPA substantially deteriorates when a -factor model can closely approximate the population. TPA is the least sensitive to trivial misfits and results in the highest accuracy across most simulation conditions. This study suggests the use of TPA for the investigated models. Results also imply that RPA requires further revision to accommodate a degree of model-data misfit that can be tolerated.
尽管存在许多确定因子数量的方法,但在任何情况下都没有一种方法能优于其他方法。本研究在行为研究的实际场景中比较了传统平行分析(TPA)、修正平行分析(RPA)、凯泽法则、最小平均偏相关、逐次χ²和逐次近似均方根误差、比较拟合指数和塔克-刘易斯指数,在这种场景中,研究人员采用具有因子的拟合紧密的简约模型来近似总体模型,从而导致模型与数据存在轻微不匹配。结果表明,虽然当总体水平不存在不匹配时传统平行分析和修正平行分析都很突出,但当一个因子模型能够紧密近似总体时,修正平行分析的准确性会大幅下降。传统平行分析对轻微不匹配最不敏感,并且在大多数模拟条件下结果准确性最高。本研究建议对所研究的模型使用传统平行分析。结果还意味着修正平行分析需要进一步修订,以适应一定程度的可容忍的模型与数据不匹配。