Approximate Invariance Testing in Diagnostic Classification Models in the Presence of Attribute Hierarchies: A Bayesian Network Approach

Psych Pub Date : 2023-07-13 DOI:10.3390/psych5030045
Alfonso J. Martinez, Jonathan Templin
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引用次数: 1

Abstract

This paper demonstrates the process of invariance testing in diagnostic classification models in the presence of attribute hierarchies via an extension of the log-linear cognitive diagnosis model (LCDM). This extension allows researchers to test for measurement (item) invariance as well as attribute (structural) invariance simultaneously in a single analysis. The structural model of the LCDM was parameterized as a Bayesian network, which allows attribute hierarchies to be modeled and tested for attribute invariance via a series of latent regression models. We illustrate the steps for carrying out the invariance analyses through an in-depth case study with an empirical dataset and provide JAGS code for carrying out the analysis within the Bayesian framework. The analysis revealed that a subset of the items exhibit partial invariance, and evidence of full invariance was found at the structural level.
存在属性层次的诊断分类模型的近似不变性检验:一种贝叶斯网络方法
本文通过对数线性认知诊断模型(LCDM)的扩展,证明了在存在属性层次的情况下,诊断分类模型中的不变性测试过程。这种扩展使研究人员能够在单个分析中同时测试测量(项目)不变性和属性(结构)不变性。LCDM的结构模型被参数化为贝叶斯网络,该网络允许通过一系列潜在回归模型对属性层次结构进行建模和测试属性不变性。我们通过对经验数据集的深入案例研究说明了进行不变性分析的步骤,并提供了在贝叶斯框架内进行分析的JAGS代码。分析表明,项目的一个子集表现出部分不变性,并且在结构层面上发现了完全不变性的证据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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