The comparison data forest: A new comparison data approach to determine the number of factors in exploratory factor analysis.

IF 4.6 2区 心理学 Q1 PSYCHOLOGY, EXPERIMENTAL Behavior Research Methods Pub Date : 2024-03-01 Epub Date: 2023-06-15 DOI:10.3758/s13428-023-02122-4
David Goretzko, John Ruscio
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Abstract

Developing psychological assessment instruments often involves exploratory factor analyses, during which one must determine the number of factors to retain. Several factor-retention criteria have emerged that can infer this number from empirical data. Most recently, simulation-based procedures like the comparison data approach have shown the most accurate estimation of dimensionality. The factor forest, an approach combining extensive data simulation and machine learning modeling, showed even higher accuracy across various common data conditions. Because this approach is very computationally costly, we combine the factor forest and the comparison data approach to present the comparison data forest. In an evaluation study, we compared this new method with the common comparison data approach and identified optimal parameter settings for both methods given various data conditions. The new comparison data forest approach achieved slightly higher overall accuracy, though there were some important differences under certain data conditions. The CD approach tended to underfactor and the CDF tended to overfactor, and their results were also complementary in that for the 81.7% of instances when they identified the same number of factors, these results were correct 96.6% of the time.

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比较数据森林:在探索性因素分析中确定因素数量的新比较数据方法。
开发心理评估工具通常需要进行探索性因子分析,在这一过程中,我们必须确定需要保留的因子数量。目前已经出现了几种因子保留标准,可以从经验数据中推断出因子数量。最近,基于模拟的程序(如比较数据法)显示出了最准确的维度估计。因子森林是一种结合了大量数据模拟和机器学习建模的方法,在各种常见数据条件下显示出更高的准确性。由于这种方法的计算成本很高,我们将因子森林和对比数据方法结合起来,提出了对比数据森林。在一项评估研究中,我们将这种新方法与常见的比较数据方法进行了比较,并确定了两种方法在各种数据条件下的最佳参数设置。尽管在某些数据条件下存在一些重要差异,但新的对比数据森林方法的总体准确率略高。CD 方法倾向于因子不足,而 CDF 则倾向于因子过多,它们的结果也是互补的,因为在它们识别出相同数量因子的 81.7% 的实例中,这些结果在 96.6% 的时间内都是正确的。
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来源期刊
CiteScore
10.30
自引率
9.30%
发文量
266
期刊介绍: Behavior Research Methods publishes articles concerned with the methods, techniques, and instrumentation of research in experimental psychology. The journal focuses particularly on the use of computer technology in psychological research. An annual special issue is devoted to this field.
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