DBGCN: A Knowledge Tracing Model Based on Dynamic Breadth Graph Convolutional Networks

被引:2
|
作者
Hu P. [1 ]
Li Z. [1 ]
Zhang P. [1 ]
Gao J. [2 ]
Zhang L. [1 ]
机构
[1] School of Information Engineering, Henan Institute of Science and Technology
[2] Faculty of Intelligent Engineering, Huanghe Jiaotong University
关键词
Dynamic Breadth; Graph Convolutional Networks; K-nearest Neighbor; Knowledge Tracing;
D O I
10.4018/IJWLTT.342848
中图分类号
学科分类号
摘要
Given the extensive use of online learning in educational settings, Knowledge Tracing (KT) is becoming increasingly essential. KT primarily aims to predict a student’s future knowledge acquisition based on their past learning activities, thus enhancing the efficiency of student learning. However, the effective acquisition of dynamic and evolving student representations from their historical records presents a formidable challenge. This paper introduces a Knowledge Tracing methodology predicated on Dynamic Broadth Graph Convolutional Networks (DBGCN). DBGCN leverages the mechanisms of breadth graph convolutional networks to proficiently acquire representations of questions and knowledge points from dynamically constructed topological graphs. It employs student state information as an attention query vector to augment student representations, thereby partially mitigating the challenge of capturing the dynamic shifts in user states. The effectiveness of our proposed DBGCN method has been demonstrated through extensive experimentation. © 2024 IGI Global. All rights reserved.
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