Ferrando Pere J, Navarro-González David, Lorenzo-Seva Urbano
Universitat Rovira i Virgili, Tarragona, Spain.
Educ Psychol Meas. 2024 Aug;84(4):736-752. doi: 10.1177/00131644231196482. Epub 2023 Sep 7.
Descriptive fit indices that do not require a formal statistical basis and do not specifically depend on a given estimation criterion are useful as auxiliary devices for judging the appropriateness of unrestricted or exploratory factor analytical (UFA) solutions, when the problem is to decide the most appropriate number of common factors. While overall indices of this type are well known in UFA applications, especially those intended for item analysis, difference indices are much more scarce. Recently, Raykov and collaborators proposed a family of effect-size-type descriptive difference indices that are promising for UFA applications. As a starting point, we considered the simplest measure of this family, which (a) can be viewed as absolute and (b) from which only tentative cutoffs and reference values have been provided so far. In this situation, this article has three aims. The first is to propose a relative version of Raykov's effect-size measure, intended to be used as a complement of the original measure, in which the increase in explained common variance is related to the overall prior estimated amount of common factor variance. The second is to establish reference values for both indices in item-analysis scenarios using simulation. And the third aim (instrumental) is to implement the proposal in both R language and a well-known non-commercial factor analysis program. The functioning and usefulness of the proposal is illustrated using an existing empirical dataset.
描述性拟合指数不需要正式的统计基础,也不特别依赖于给定的估计标准,当问题是确定最合适的公共因子数量时,作为辅助手段来判断无约束或探索性因子分析(UFA)解决方案的适用性很有用。虽然这类总体指数在UFA应用中是众所周知的,特别是那些用于项目分析的指数,但差异指数要少得多。最近,雷科夫及其合作者提出了一类效应量型描述性差异指数,有望用于UFA应用。作为起点,我们考虑了这类指数中最简单的度量,它(a)可以被视为绝对的,并且(b)到目前为止只提供了暂定的临界值和参考值。在这种情况下,本文有三个目标。第一个目标是提出雷科夫效应量度量的相对版本,旨在用作原始度量的补充,其中解释的公共方差的增加与公共因子方差的总体先验估计量相关。第二个目标是使用模拟为项目分析场景中的这两个指数建立参考值。第三个目标(工具性目标)是在R语言和一个著名的非商业因子分析程序中实现该提议。使用现有的实证数据集说明了该提议的功能和实用性。