Cognitive Diagnosis Focusing on Knowledge Concepts

Sheng Li, Quanlong Guan, Liangda Fang, Fang Xiao, Zhenyu He, Yizhou He, Weiqi Luo
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引用次数: 4

Abstract

Cognitive diagnosis is a crucial task in the field of educational measurement and psychology, which aims to diagnose the strengths and weaknesses of participants. Existing cognitive diagnosis methods only consider which of knowledge concepts are involved in the knowledge components of exercises, but ignore the fact that different knowledge concepts have different effects on practice scores in actual learning situations. Therefore, researchers need to reshape the learning scene by combining the multi-factor relationships between knowledge components. In this paper, in order to more comprehensively simulate the interaction between students and exercises, we developed a neural network-based CDMFKC model for cognitive diagnosis. Our method not only captures the nonlinear interaction between exercise characteristics, student performance, and their mastery of each knowledge concept, but also further considers the impact of knowledge concepts by designing the difficulty and discrimination of knowledge concepts, and uses multiple neural layers to model their interaction so as to obtain accurate and interpretable diagnostic results. In addition, we propose an improved CDMFKC model with guessing parameter and slipping parameter designed by knowledge concept proficiency and student proficiency vectors. We validate the performance of these two diagnostic models on six real datasets. The experimental results show that the two models have better effects in the aspects of accuracy, rationality and interpretability.
基于知识概念的认知诊断
认知诊断是教育测量学和心理学领域的一项重要任务,其目的是诊断参与者的优缺点。现有的认知诊断方法只考虑了哪些知识概念参与了练习的知识成分,而忽略了在实际学习情境中,不同的知识概念对练习成绩的影响是不同的。因此,研究者需要结合知识成分之间的多因素关系来重塑学习场景。为了更全面地模拟学生与练习之间的互动,本文开发了一种基于神经网络的CDMFKC认知诊断模型。我们的方法不仅捕捉了练习特征、学生成绩和学生对各个知识概念的掌握之间的非线性交互作用,而且通过设计知识概念的难度和区分度,进一步考虑了知识概念的影响,并利用多个神经层对它们之间的交互作用进行建模,从而获得准确、可解释的诊断结果。此外,我们提出了一种基于知识概念熟练度和学生熟练度向量设计的带有猜测参数和滑动参数的改进CDMFKC模型。我们在6个真实数据集上验证了这两种诊断模型的性能。实验结果表明,两种模型在准确性、合理性和可解释性方面都有较好的效果。
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