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A Generalized Factor Rotation Framework with Customized Regularization.

作者信息

Wu Yongfeng, Liao Xiangyi, Li Qizhai

机构信息

Academy of Mathematics and Systems Science, Chinese Academy of Sciences, Beijing, China.

Department of Educational Psychology, University of Wisconsin-Madison, Madison, WI, USA.

出版信息

Psychometrika. 2025 Jan 27:1-25. doi: 10.1017/psy.2025.1.

Abstract

Factor rotation is a crucial step in interpreting the results of exploratory factor analysis. Several rotation methods have been developed for simple structure solutions, but their extensions to bi-factor analysis are often not well established. In this article, we propose a mathematical framework that incorporates customized factor structure as a regularization to produce the optimal orthogonal or oblique rotation. We demonstrate the utility of the framework using examples of simple structure rotation and bi-factor rotation. Through detailed simulations, we show that the new method is accurate and robust in recovering the factor structures and latent correlations when bi-factor analysis is applied. The new method is applied to a test data and a Quality of Life survey data. Results show that our method can reveal bi-factor structures that are consistent with the theories.

摘要

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