APGKT: Exploiting Associative Path on Skills Graph for Knowledge Tracing

H. Zhang, Chenyang Bu, Fei-Tsung Liu, Shuochen Liu, Yuhong Zhang, Xuegang Hu
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引用次数: 1

Abstract

Knowledge tracing (KT) is a fundamental task in educational data mining that mainly focuses on students' dynamic cognitive states of skills. The question-answering process of students can be regarded as a thinking process that considers the following two problems. One problem is which skills are needed to answer the question, and the other is how to use these skills in order. If a student wants to answer a question correctly, the student should not only master the set of skills involved in the question but also think and obtain the associative path on the skills graph. The nodes in the associative path refer to the skills needed and the path shows the order of using them. The associative path is referred to as the skill mode. Thus, obtaining the skill modes is the key to answering questions successfully. However, most existing KT models only focus on a set of skills, without considering the skill modes. We propose a KT model, called APGKT, that exploits skill modes. Specifically, we extract the subgraph topology of the skills involved in the question and combine the difficulty level of the skills to obtain the skill modes via encoding; then, through multi-layer recurrent neural networks, we obtain a student's higher-order cognitive states of skills, which is used to predict the student's future answering performance. Experiments on five benchmark datasets validate the effectiveness of the proposed model.
APGKT:利用技能图上的关联路径进行知识追踪
知识追踪(Knowledge tracing, KT)是教育数据挖掘的一项基本任务,主要关注学生对技能的动态认知状态。学生的问答过程可以看作是思考以下两个问题的思维过程。一个问题是需要哪些技能来回答这个问题,另一个问题是如何按顺序使用这些技能。如果学生想要正确回答一个问题,学生不仅要掌握问题所涉及的一套技能,还要思考并获得技能图上的关联路径。关联路径中的节点指的是所需的技能,该路径显示了使用技能的顺序。这种关联路径称为技能模式。因此,掌握技能模式是答题成功的关键。然而,大多数现有的KT模型只关注一组技能,而没有考虑技能模式。我们提出了一个利用技能模式的KT模型,称为APGKT。具体而言,我们提取问题所涉及技能的子图拓扑,并结合技能的难度等级,通过编码得到技能模式;然后,通过多层递归神经网络,获得学生的高阶技能认知状态,用于预测学生未来的答题表现。在5个基准数据集上的实验验证了该模型的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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