Universidad Autónoma de Madrid.
Universidad Camilo José Cela.
Multivariate Behav Res. 2021 Jan-Feb;56(1):101-119. doi: 10.1080/00273171.2020.1736977. Epub 2020 May 23.
As general factor modeling continues to grow in popularity, researchers have become interested in assessing how reliable general factor scores are. Even though omega hierarchical estimation has been suggested as a useful tool in this context, little is known about how to approximate it using modern bi-factor exploratory factor analysis methods. This study is the first to compare how omega hierarchical estimates were recovered by six alternative algorithms: Bi-quartimin, bi-geomin, Schmid-Leiman (SL), empirical iterative empirical target rotation based on an initial SL solution (SLiD), direct SL (DSL), and direct bi-factor (DBF). The algorithms were tested in three Monte-Carlo simulations including bi-factor and second-order structures and presenting complexities such as cross-loadings or pure indicators of the general factor and structures without a general factor. Results showed that SLiD provided the best approximation to omega hierarchical under most conditions. Overall, neither SL, bi-quartimin, nor bi-geomin produced an overall satisfactory recovery of omega hierarchical. Lastly, the performance of DSL and DBF depended upon the average discrepancy between the loadings of the general and the group factors. The re-analysis of eight classical datasets further illustrated how algorithm selection could influence judgments regarding omega hierarchical.
随着通用因素建模的日益普及,研究人员开始关注如何评估通用因素得分的可靠性。尽管 omega 层次估计已被提议作为一种有用的工具,但对于如何使用现代双因素探索性因素分析方法来近似它,人们知之甚少。本研究首次比较了六种替代算法(Bi-quartimin、bi-geomin、Schmid-Leiman(SL)、基于初始 SL 解的经验迭代经验目标旋转(SLiD)、直接 SL(DSL)和直接双因素(DBF))对 omega 层次估计的恢复情况。这些算法在三个包含双因素和二阶结构的蒙特卡罗模拟中进行了测试,并呈现出交叉负荷或通用因素和没有通用因素的结构的纯指标等复杂性。结果表明,在大多数情况下,SLiD 提供了对 omega 层次的最佳近似。总的来说,SL、Bi-quartimin 和 bi-geomin 都没有对 omega 层次进行总体令人满意的恢复。最后,DSL 和 DBF 的性能取决于通用和组因素之间的负荷差异的平均值。对八个经典数据集的重新分析进一步说明了算法选择如何影响对 omega 层次的判断。