Cognitive diagnosis models (CDMs) are a family of discrete latent attribute models that serve as statistical basis in educational and psychological cognitive diagnosis assessments. CDMs aim to achieve fine-grained inference on individuals' latent attributes, based on their observed responses to a set of designed diagnostic items. In the literature, CDMs usually assume that items require mastery of specific latent attributes and that each attribute is either fully mastered or not mastered by a given subject. We propose a new class of models, partial mastery CDMs (PM-CDMs), that generalizes CDMs by allowing for partial mastery levels for each attribute of interest. We demonstrate that PM-CDMs can be represented as restricted latent class models. Relying on the latent class representation, we propose a Bayesian approach for estimation. We present simulation studies to demonstrate parameter recovery, to investigate the impact of model misspecification with respect to partial mastery, and to develop diagnostic tools that could be used by practitioners to decide between CDMs and PM-CDMs. We use two examples of real test data -- the fraction subtraction and the English tests -- to demonstrate that employing PM-CDMs not only improves model fit, compared to CDMs, but also can make substantial difference in conclusions about attribute mastery. We conclude that PM-CDMs can lead to more effective remediation programs by providing detailed individual-level information about skills learned and skills that need to study.
翻译:认知性诊断模型(CDM)是一组离散的潜在属性模型,作为教育和心理认知性诊断评估的统计基础。CDM的目的是根据对个人潜在属性的观察反应,根据对一套设计诊断性物品的观察反应,实现个人潜在属性的细微推断。在文献中,CDM通常假定,项目需要掌握具体的潜在属性,每个属性要么完全掌握,要么没有掌握给某一主题。我们建议了一个新的模型类别,即部分掌握清洁发展机制(PM-CDM),通过允许对每种属性进行部分掌握水平,将CDM(PM)概括化。我们证明PM-CDM可以作为有限的潜在阶级模型。我们建议,根据潜在阶级的代表性,采用巴耶斯方法进行估算。我们提出模拟研究,以证明参数恢复,调查模型与部分掌握能力有关的具体特性的影响,并开发诊断工具,供开业者在CDMM和P-CDM(P-CDM)之间作出决定。我们用两个实例来概括真实测试数据 -- 分减和英语测试水平 -- 证明使用PM-CDM-CDM(P-CDM)能够使CDM- memisma(M)掌握更多的技能,我们用大量的模型来作出正确的判断性研究,我们只能可以改进技术。我们只能只研究,而不能仅仅研究,我们只能得出。