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Mixed Compensation Multidimensional Item Response Theory

机译:混合补偿多维项目响应理论

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Computerized Assisted Testing (CAT) has supported the development of numerous adaptive testing approaches. Such approach as Item Response Theory (IRT) estimates a student's competency level by modeling a test as a function of the individual's knowledge ability, and the parameters of the question (i.e. item). Multidimensional Item Response Theory (MIRT) extends IRT so that each item depends on multiple competency areas (i.e., knowledge dimensions). MIRT models consider two opposing types of relationship between knowledge dimensions: compensatory and noncompensatory. In a compensatory model, having a higher competency with one knowledge dimension compensates for having a lower competence in another dimension. Conversely, in a noncompensatory model all the knowledge dimensions are independent and do not compensate for each other. However, using only one type of relationship at a time restricts the use of MIRT in practice. In this work, we generalize MIRT to a mixed-compensation multidimensional item response theory (MCMIRT) model that incorporates both types of relationships. We also relax the MIRT assumption that each item must include every knowledge dimension. Thus, the MCMIRT can better represent real-world curricula. We show that our approach outperforms random item selection with synthetic data.
机译:计算机辅助测试(CAT)支持了众多自适应测试方法的开发。项目反应理论(IRT)等方法通过根据个人知识能力和问题参数(即项目)对测验进行建模来估算学生的能力水平。多维项目响应理论(MIRT)扩展了IRT,因此每个项目都取决于多个胜任力领域(即知识维度)。 MIRT模型考虑了知识维度之间的两种相对类型的关系:补偿性和非补偿性。在补偿模型中,具有一个知识维度的较高能力会补偿另一个维度的较低能力。相反,在非补偿模型中,所有知识维度都是独立的,并且不会相互补偿。但是,一次仅使用一种类型的关系会限制MIRT在实践中的使用。在这项工作中,我们将MIRT推广到结合了两种类型关系的混合补偿多维项目响应理论(MCMIRT)模型。我们还放宽了MIRT的假设,即每个项目都必须包含每个知识维度。因此,MCMIRT可以更好地代表现实世界的课程。我们证明了我们的方法优于综合数据的随机项目选择。

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