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Incorporating the Q-Matrix Into Multidimensional Item Response Theory Models

机译:将Q矩阵纳入多维物品响应理论模型

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摘要

Multidimensional item response theory (MIRT) models use data from individual item responses to estimate multiple latent traits of interest, making them useful in educational and psychological measurement, among other areas. When MIRT models are applied in practice, it is not uncommon to see that some items are designed to measure all latent traits while other items may only measure one or two traits. In order to facilitate a clear expression of which items measure which traits and formulate such relationships as a math function in MIRT models, we applied the concept of the Q-matrix commonly used in diagnostic classification models to MIRT models. In this study, we introduced how to incorporate a Q-matrix into an existing MIRT model, and demonstrated benefits of the proposed hybrid model through two simulation studies and an applied study. In addition, we showed the relative ease in modeling educational and psychological data through a Bayesian approach via the NUTS algorithm.
机译:多维物品响应理论(MIRT)模型使用各个项目响应的数据来估计兴趣的多种潜在特征,使其可用于教育和心理测量,以及其他领域。当MIRT模型在实践中应用时,有人旨在旨在旨在测量所有潜在特征,而其他物品可能只测量一个或两个特征,则并不罕见。为了便于明确表达哪些物品测量的特征和制定这种关系作为MIRT模型中的数学函数,我们将Q-Matrix的概念应用于Mirt模型。在这项研究中,我们介绍了如何将Q矩阵纳入现有的MIRT模型,并通过两个模拟研究和应用研究表明提出的混合模型的益处。此外,我们通过螺母算法展示了通过贝叶斯方法建模教育和心理数据的相对缓解。

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