Convolutional Knowledge Tracing: Modeling Individualization in Student Learning Process

Shuanghong Shen, Qi Liu, Enhong Chen, Han Wu, Zhenya Huang, Weihao Zhao, Yu Su, Haiping Ma, Shijin Wang
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引用次数: 74

Abstract

With the development of online education systems, a growing number of research works are focusing on Knowledge Tracing (KT), which aims to assess students' changing knowledge state and help them learn knowledge concepts more efficiently. However, only given student learning interactions, most of existing KT methods neglect the individualization of students, i.e., the prior knowledge and learning rates differ from student to student. To this end, in this paper, we propose a novel Convolutional Knowledge Tracing (CKT) method to model individualization in KT. Specifically, for individualized prior knowledge, we measure it from students' historical learning interactions. For individualized learning rates, we design hierarchical convolutional layers to extract them based on continuous learning interactions of students. Extensive experiments demonstrate that CKT could obtain better knowledge tracing results through modeling individualization in learning process. Moreover, CKT can learn meaningful exercise embeddings automatically.
卷积知识追踪:学生学习过程中的个性化建模
随着在线教育系统的发展,越来越多的研究工作关注于知识追踪(KT),其目的是评估学生知识状态的变化,帮助他们更有效地学习知识概念。然而,现有的KT方法大多只考虑学生的学习互动,忽视了学生的个性化,即学生的先验知识和学习率是不同的。为此,在本文中,我们提出了一种新颖的卷积知识跟踪(CKT)方法来对KT中的个性化建模。具体而言,对于个性化的先验知识,我们通过学生的历史学习互动来衡量它。对于个性化的学习率,我们设计了分层卷积层,以基于学生的持续学习交互来提取它们。大量的实验表明,通过对学习过程中的个性化建模,CKT可以获得更好的知识跟踪效果。此外,CKT可以自动学习有意义的运动嵌入。
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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