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Estimation of Q-matrix for DINA Model Using the Constrained Generalized DINA Framework.

机译:使用约束广义DINA框架估算DINA模型的Q矩阵。

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摘要

The research of cognitive diagnostic models (CDMs) is becoming an important field of psychometrics. Instead of assigning one score, CDMs provide attribute profiles to indicate the mastering status of concepts or skills for the examinees. This would make the test result more informative. The implementation of many CDMs relies on the existing item-to-attribute relationship, which means that we need to know the concepts or skills each item requires. The relationships between the items and attributes could be summarized into the Q-matrix. Misspecification of the Q-matrix will lead to incorrect attribute profile. The Q-matrix can be designed by expert judgement, but it is possible that such practice can be subjective. There are previous researches about the Q-matrix estimation. This study proposes an estimation method for one of the most parsimonious CDMs, the DINA model. The method estimates the Q-matrix for DINA model by setting constraints on the generalized DINA model. In the simulation study, the results showed that the estimated Q-matrix fit better the empirical fraction subtraction data than the expert-design Q-matrix. We also show that the proposed method may still be applicable when the constraints were relaxed.
机译:认知诊断模型(CDM)的研究正成为心理计量学的重要领域。 CDM不会分配一个分数,而是提供属性配置文件来指示应试者的概念或技能的掌握状态。这将使测试结果更有意义。许多CDM的实施依赖于现有的项目与属性之间的关系,这意味着我们需要了解每个项目所需的概念或技能。项目和属性之间的关系可以概括为Q矩阵。 Q矩阵的规格错误会导致属性配置文件不正确。可以通过专家判断来设计Q矩阵,但是这种做法可能是主观的。以前有关于Q矩阵估计的研究。这项研究为最简约的CDM之一DINA模型提出了一种估算方法。该方法通过在广义DINA模型上设置约束来估计DINA模型的Q矩阵。在仿真研究中,结果表明,与专家设计的Q矩阵相比,估计的Q矩阵更适合经验分数减法数据。我们还表明,当约束放宽时,所提出的方法可能仍然适用。

著录项

  • 作者

    Li, Huacheng.;

  • 作者单位

    Columbia University.;

  • 授予单位 Columbia University.;
  • 学科 Educational tests measurements.;Statistics.
  • 学位 Ph.D.
  • 年度 2016
  • 页码 80 p.
  • 总页数 80
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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