精确探索性双因素分析:基于约束的优化方法

Jiawei Qiao, Yunxiao Chen, Zhiliang Ying
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引用次数: 0

摘要

双因素分析是确证因素分析的一种形式,广泛应用于心理学和教育测量领域。双因素模型的使用要求在观察变量与群体因素之间的关系上明确规定双因素结构。在实践中,双因素结构有时是未知的,在这种情况下,就需要采用探索性的双因素分析方法来寻找双因素结构。遗憾的是,除了 Jennrich 和 Bentler(2011,2012)提出的一种基于旋转的方法外,探索性双因素分析方法很少。然而,这种方法只能找到近似的双因子结构,因为即使在应用硬阈值后,它也不能得到精确的双因子加载结构。在本文中,我们提出了一种基于约束的优化方法,它能从数据中学习精确的双因子负载结构,从而克服了基于旋转的方法所存在的问题。该方法的关键在于将双因子负载结构数学化为一组相等约束条件,从而将探索性双因子分析问题表述为连续域中的约束优化问题,并用增强拉格朗日法解决优化问题。我们还讨论了将所提方法扩展到探索性分层因子分析的问题。代码可在 "https://anonymous.4open.science/r/Bifactor-ALM-C1E6 "上获取。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exact Exploratory Bi-factor Analysis: A Constraint-based Optimisation Approach
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, overcoming the issue with the rotation-based method. The key to the proposed method is a mathematical characterisation of the bi-factor loading structure as a set of equality constraints, which allows us to formulate the exploratory bi-factor analysis problem as a constrained optimisation problem in a continuous domain and solve the optimisation problem with an augmented Lagrangian method. The power of the proposed method is shown via simulation studies and a real data example. Extending the proposed method to exploratory hierarchical factor analysis is also discussed. The codes are available on ``https://anonymous.4open.science/r/Bifactor-ALM-C1E6".
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