von Davier Matthias
Research & Development, Educational Testing Service, Princeton, New Jersey, USA.
Br J Math Stat Psychol. 2014 Feb;67(1):49-71. doi: 10.1111/bmsp.12003. Epub 2013 Jan 8.
The 'deterministic-input noisy-AND' (DINA) model is one of the more frequently applied diagnostic classification models for binary observed responses and binary latent variables. The purpose of this paper is to show that the model is equivalent to a special case of a more general compensatory family of diagnostic models. Two equivalencies are presented. Both project the original DINA skill space and design Q-matrix using mappings into a transformed skill space as well as a transformed Q-matrix space. Both variants of the equivalency produce a compensatory model that is mathematically equivalent to the (conjunctive) DINA model. This equivalency holds for all DINA models with any type of Q-matrix, not only for trivial (simple-structure) cases. The two versions of the equivalency presented in this paper are not implied by the recently suggested log-linear cognitive diagnosis model or the generalized DINA approach. The equivalencies presented here exist independent of these recently derived models since they solely require a linear - compensatory - general diagnostic model without any skill interaction terms. Whenever it can be shown that one model can be viewed as a special case of another more general one, conclusions derived from any particular model-based estimates are drawn into question. It is widely known that multidimensional models can often be specified in multiple ways while the model-based probabilities of observed variables stay the same. This paper goes beyond this type of equivalency by showing that a conjunctive diagnostic classification model can be expressed as a constrained special case of a general compensatory diagnostic modelling framework.
“确定性输入噪声与”(DINA)模型是针对二元观测响应和二元潜在变量应用较为频繁的诊断分类模型之一。本文旨在表明该模型等同于一个更通用的补偿性诊断模型族的特殊情况。文中给出了两种等价关系。二者均通过映射到变换后的技能空间以及变换后的Q矩阵空间来投影原始的DINA技能空间并设计Q矩阵。等价关系的两种变体都产生了一个在数学上等同于(合取式)DINA模型的补偿性模型。这种等价关系适用于所有具有任何类型Q矩阵的DINA模型,而不仅仅是简单(简单结构)情况。本文提出的两种等价关系版本并非最近提出的对数线性认知诊断模型或广义DINA方法所隐含的。这里给出的等价关系独立于这些最近推导的模型而存在,因为它们仅需要一个没有任何技能交互项的线性 - 补偿性 - 通用诊断模型。每当能够表明一个模型可以被视为另一个更通用模型的特殊情况时,基于任何特定模型估计得出的结论就会受到质疑。众所周知,多维模型通常可以用多种方式指定,而观测变量基于模型的概率保持不变。本文通过表明合取式诊断分类模型可以表示为通用补偿性诊断建模框架的约束特殊情况,超越了这种等价关系类型。