Exact Exploratory Bi-factor Analysis: A Constraint-based Optimisation Approach
Jiawei Qiao, Yunxiao Chen, Zhiliang Ying

TL;DR
This paper introduces an exact, constraint-based optimisation method for exploratory bi-factor analysis, enabling precise identification of bi-factor structures from data, surpassing previous approximate methods.
Contribution
It proposes a novel mathematical and optimisation framework to learn exact bi-factor loadings, addressing limitations of existing rotation-based approaches.
Findings
Method accurately recovers bi-factor structures in simulations
Demonstrates effectiveness on real data example
Extensible to hierarchical factor analysis
Abstract
Bi-factor analysis is a form of confirmatory factor analysis widely used in psychological and educational measurement. The use of a bi-factor model requires the specification of an explicit bi-factor structure on the relationship between the observed variables and the group factors. In practice, the bi-factor structure is sometimes unknown, in which case an exploratory form of bi-factor analysis is needed to find the bi-factor structure. Unfortunately, there are few methods for exploratory bi-factor analysis, with the exception of a rotation-based method proposed in Jennrich and Bentler (2011, 2012). However, this method only finds approximate bi-factor structures, as it does not yield an exact bi-factor loading structure, even after applying hard thresholding. In this paper, we propose a constraint-based optimisation method that learns an exact bi-factor loading structure from data,…
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Taxonomy
TopicsMulti-Criteria Decision Making
