论文标题
双分离器模型的可识别性
Identifiability of Bifactor Models
论文作者
论文摘要
双方模型及其扩展是多维潜在变量模型,在该模型下,每个项目都在主要维度的顶部测量一个尺寸最大。尽管它们在教育和心理评估中广泛应用,但这种类型的多维潜在变量模型可能会遭受非识别性的影响,这可能会导致参数估计不一致和推断不一致。当前的工作提供了对线性和二分法模型的可识别性和具有相关子尺寸的线性扩展双歧杆模型的相对完整表征。此外,还开发了两层模型的类似结果。通过检查因子加载结构来检查模型可识别性时提供了说明性示例。据报道,当不满足可识别性条件时,检查估计一致性。
The bifactor model and its extensions are multidimensional latent variable models, under which each item measures up to one subdimension on top of the primary dimension(s). Despite their wide applications to educational and psychological assessments, this type of multidimensional latent variable models may suffer from non-identifiability, which can further lead to inconsistent parameter estimation and invalid inference. The current work provides a relatively complete characterization of identifiability for the linear and dichotomous bifactor models and the linear extended bifactor model with correlated subdimensions. In addition, similar results for the two-tier models are also developed. Illustrative examples are provided on checking model identifiability through inspecting the factor loading structure. Simulation studies are reported that examine estimation consistency when the identifiability conditions are/are not satisfied.