Robustness of factor solutions in exploratory factor analysis

Author:

Goretzko DavidORCID,Bühner Markus

Abstract

AbstractReplicability has become a highly discussed topic in psychological research. The debates focus mainly on significance testing and confirmatory analyses, whereas exploratory analyses such as exploratory factor analysis are more or less ignored, although hardly any analysis has a comparable impact on entire research areas. Determining the correct number of factors for this analysis is probably the most crucial, yet ambiguous decision—especially since factor structures have often been not replicable. Hence, an approach based on bootstrapping the factor retention process is proposed to evaluate the robustness of factor retention criteria against sampling error and to predict whether a particular factor solution may be replicable. We used three samples of the “Big Five Structure Inventory” and four samples of the “10 Item Big Five Inventory” to illustrate the relationship between stable factor solutions across bootstrap samples and their replicability. In addition, we compared four factor retention criteria and an information criterion in terms of their stability on the one hand and their replicability on the other. Based on this study, we want to encourage researchers to make use of bootstrapping to assess the stability of the factor retention criteria they use and to compare these criteria with regard to this stability as a proxy for possible replicability.

Funder

Ludwig-Maximilians-Universität München

Publisher

Springer Science and Business Media LLC

Subject

Applied Mathematics,Clinical Psychology,Experimental and Cognitive Psychology,Analysis

Reference43 articles.

1. Aarts A, Anderson J, Anderson C, Attridge P, Attwood A, Axt J et al (2015) Estimating the reproducibility of psychological science. Science 349(6251):943–950

2. Arendasy M (2009) BFSI: Big-Five Struktur-Inventar (test & manual). Mödling, Schuhfried GmbH

3. Asendorpf JB, Conner M, De Fruyt F, De Houwer J, Denissen JJ, Fiedler K et al (2013) Recommendations for increasing replicability in psychology. Eur J Pers 27(2):108–119

4. Auerswald M, Moshagen M (2019) How to determine the number of factors to retain in exploratory factor analysis: a comparison of extraction methods under realistic conditions. Psychol Methods 24(4):468–491

5. Aust F, Barth M (2018) papaja: Create APA manuscripts with R Markdown. Retrieved from https://github.com/crsh/papaja

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