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通过贝叶斯方法将不确定性纳入并行分析以选择因子数量

Incorporating Uncertainty Into Parallel Analysis for Choosing the Number of Factors via Bayesian Methods.

作者信息

Levy Roy, Xia Yan, Green Samuel B

机构信息

Arizona State University, Tempe, AZ, USA.

University of Illinois at Urbana-Champaign, Urbana, IL, USA.

出版信息

Educ Psychol Meas. 2021 Jun;81(3):466-490. doi: 10.1177/0013164420942806. Epub 2020 Jul 22.

Abstract

A number of psychometricians have suggested that parallel analysis (PA) tends to yield more accurate results in determining the number of factors in comparison with other statistical methods. Nevertheless, all too often PA can suggest an incorrect number of factors, particularly in statistically unfavorable conditions (e.g., small sample sizes and low factor loadings). Because of this, researchers have recommended using multiple methods to make judgments about the number of factors to extract. Implicit in this recommendation is that, when the number of factors is chosen based on PA, uncertainty nevertheless exists. We propose a Bayesian parallel analysis (B-PA) method to incorporate the uncertainty with decisions about the number of factors. B-PA yields a probability distribution for the various possible numbers of factors. We implement and compare B-PA with a frequentist approach, revised parallel analysis (R-PA), in the contexts of real and simulated data. Results show that B-PA provides relevant information regarding the uncertainty in determining the number of factors, particularly under conditions with small sample sizes, low factor loadings, and less distinguishable factors. Even if the indicated number of factors with the highest probability is incorrect, B-PA can show a sizable probability of retaining the correct number of factors. Interestingly, when the mode of the distribution of the probabilities associated with different numbers of factors was treated as the number of factors to retain, B-PA was somewhat more accurate than R-PA in a majority of the conditions.

摘要

一些心理测量学家认为,与其他统计方法相比,平行分析(PA)在确定因子数量时往往能产生更准确的结果。然而,PA常常会给出错误的因子数量,尤其是在统计上不利的条件下(例如,小样本量和低因子载荷)。因此,研究人员建议使用多种方法来判断要提取的因子数量。这一建议背后隐含的意思是,当基于PA选择因子数量时,不确定性仍然存在。我们提出了一种贝叶斯平行分析(B-PA)方法,将不确定性纳入关于因子数量的决策中。B-PA产生了各种可能因子数量的概率分布。我们在真实数据和模拟数据的背景下实现了B-PA,并将其与一种频率主义方法——修正平行分析(R-PA)进行了比较。结果表明,B-PA提供了有关确定因子数量时不确定性的相关信息,特别是在小样本量、低因子载荷和因子区分度较低的条件下。即使概率最高的指示因子数量不正确,B-PA也能显示出保留正确因子数量的相当大的概率。有趣的是,当将与不同因子数量相关的概率分布的众数视为要保留的因子数量时,在大多数条件下,B-PA比R-PA稍微更准确一些。

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