Parameter Estimation of KST-IRT Model under Local Dependence

Psych Pub Date : 2023-08-22 DOI:10.3390/psych5030060
Sangbeak Ye, A. Kelava, S. Noventa
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引用次数: 1

Abstract

A mantra often repeated in the introductory material to psychometrics and Item Response Theory (IRT) is that a Rasch model is a probabilistic version of a Guttman scale. The idea comes from the observation that a sigmoidal item response function provides a probabilistic version of the characteristic function that models an item response in the Guttman scale. It appears, however, more difficult to reconcile the assumption of local independence, which traditionally accompanies the Rasch model, with the item dependence existing in a Guttman scale. In recent work, an alternative probabilistic version of a Guttman scale was proposed, combining Knowledge Space Theory (KST) with IRT modeling, here referred to as KST-IRT. The present work has, therefore, a two-fold aim. Firstly, the estimation of the parameters involved in KST-IRT models is discussed. More in detail, two estimation methods based on the Expectation Maximization (EM) procedure are suggested, i.e., Marginal Maximum Likelihood (MML) and Gibbs sampling, and are compared on the basis of simulation studies. Secondly, for a Guttman scale, the estimates of the KST-IRT models are compared with those of the traditional combination of the Rasch model plus local independence under the interchange of the data generation processes. Results show that the KST-IRT approach might be more effective in capturing local dependence as it appears to be more robust under misspecification of the data generation process, but it comes with the price of an increased number of parameters.
局部依赖下KST-IRT模型的参数估计
心理测量学和项目反应理论(IRT)的入门材料中经常重复的一句口头禅是,Rasch模型是Guttman量表的概率版本。这个想法来自于观察到的S形项目反应函数提供了特征函数的概率版本,该特征函数在古特曼量表中对项目反应进行建模。然而,似乎更难调和传统上伴随着Rasch模型的地方独立性假设与Guttman量表中存在的项目依赖性。在最近的工作中,将知识空间理论(KST)与IRT建模相结合,提出了Guttman量表的另一种概率版本,这里称为KST-IRT。因此,目前的工作有两个目的。首先,讨论了KST-IRT模型中参数的估计问题。更详细地,提出了两种基于期望最大化(EM)程序的估计方法,即边际最大似然(MML)和吉布斯采样,并在模拟研究的基础上进行了比较。其次,对于Guttman量表,将KST-IRT模型的估计值与Rasch模型加上数据生成过程交换下的局部独立性的传统组合的估计值进行了比较。结果表明,KST-IRT方法在捕获局部依赖性方面可能更有效,因为它在数据生成过程的错误指定下似乎更稳健,但它的代价是参数数量的增加。
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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