a Department of Legal and Social Sciences , University of Chieti-Pescara , Pescara , Italy.
b Department of Medicine , Imperial College London , London , United Kingdom of Great Britain and Northern Ireland.
Multivariate Behav Res. 2019 Jan-Feb;54(1):100-112. doi: 10.1080/00273171.2018.1496317. Epub 2018 Nov 7.
In modern validity theory, a major concern is the construct validity of a test, which is commonly assessed through confirmatory or exploratory factor analysis. In the framework of Bayesian exploratory Multidimensional Item Response Theory (MIRT) models, we discuss two methods aimed at investigating the underlying structure of a test, in order to verify if the latent model adheres to a chosen simple factorial structure. This purpose is achieved without imposing hard constraints on the discrimination parameter matrix to address the rotational indeterminacy. The first approach prescribes a 2-step procedure. The parameter estimates are obtained through an unconstrained MCMC sampler. The simple structure is, then, inspected with a post-processing step based on the Consensus Simple Target Rotation technique. In the second approach, both rotational invariance and simple structure retrieval are addressed within the MCMC sampling scheme, by introducing a sparsity-inducing prior on the discrimination parameters. Through simulation as well as real-world studies, we demonstrate that the proposed methods are able to correctly infer the underlying sparse structure and to retrieve interpretable solutions.
在现代效度理论中,一个主要关注点是测试的建构效度,通常通过验证性或探索性因素分析来评估。在贝叶斯探索性多维项目反应理论(MIRT)模型的框架内,我们讨论了两种旨在调查测试潜在结构的方法,以验证潜在模型是否符合所选的简单因子结构。该目的是通过不对辨别参数矩阵施加硬性约束来解决旋转不确定性来实现的。第一种方法规定了两步程序。参数估计是通过无约束的 MCMC 抽样器获得的。然后,通过基于共识简单目标旋转技术的后处理步骤检查简单结构。在第二种方法中,通过在辨别参数上引入稀疏诱导先验,在 MCMC 抽样方案中同时解决旋转不变性和简单结构检索问题。通过模拟和真实研究,我们证明了所提出的方法能够正确推断潜在的稀疏结构并检索可解释的解决方案。