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Estimation of Generalized DINA Model with Order Restrictions

机译:带阶数约束的广义DINA模型的估计

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Cognitive diagnostic models provide valuable information on whether a student has mastered each of the attributes a test intends to evaluate. Despite its generality, the generalized DINA model allows for the possibility of lower correct rates for students who master more attributes than those who know less. This paper considers the use of order-constrained parameter space of the G-DINA model to avoid such a counter-intuitive phenomenon and proposes two algorithms, the upward and downward methods, for parameter estimation. Through simulation studies, we compare the accuracy in parameter estimation and in classification of attribute patterns obtained from the proposed two algorithms and the current approach when the restricted parameter space is true. Our results show that the upward method performs the best among the three, and therefore it is recommended for estimation, regardless of the distribution of respondents' attribute patterns, types of test items, and the sample size of the data.
机译:认知诊断模型可提供有关学生是否已掌握测试打算评估的每个属性的有价值的信息。尽管具有通用性,但广义的DINA模型允许掌握更多属性的学生比不了解较少知识的学生降低正确率。本文考虑了使用G-DINA模型的有序约束参数空间来避免这种反直觉现象,并提出了两种算法,即向上和向下算法,用于参数估计。通过仿真研究,我们比较了参数估计的准确性和从建议的两种算法获得的属性模式分类的准确性,以及在受限参数空间为真时的当前方法的准确性。我们的结果表明,向上的方法在三种方法中表现最好,因此,无论被调查者的属性模式分布,测试项目的类型和数据的样本大小如何,建议使用向上估计法。

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