Knowledge structure enhanced graph representation learning model for attentive knowledge tracing

被引:29
|
作者
Gan, Wenbin [1 ]
Sun, Yuan [1 ]
Sun, Yi [2 ]
机构
[1] Sokendai, Natl Inst Informat, Tokyo, Japan
[2] Univ Chinese Acad Sci, Sch Comp Sci & Technol, Beijing, Peoples R China
基金
日本学术振兴会;
关键词
cognitive question difficulty; graph representation learning; intelligent tutoring systems; knowledge structure discovery; knowledge tracing; learner proficiency estimation;
D O I
10.1002/int.22763
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Knowledge tracing (KT) is a fundamental personalized-tutoring technique for learners in online learning systems. Recent KT methods employ flexible deep neural network-based models that excel at this task. However, the adequacy of KT is still challenged by the sparseness of the learners' exercise data. To alleviate the sparseness problem, most of the exiting KT studies are performed at the skill-level rather than the question-level, as questions are often numerous and associated with much fewer skills. However, at the skill level, KT neglects the distinctive information related to the questions themselves and their relations. In this case, the models can imprecisely infer the learners' knowledge states and might fail to capture the long-term dependencies in the exercising sequences. In the knowledge domain, skills are naturally linked as a graph (with the edges being the prerequisite relations between pedagogical concepts). We refer to such a graph as a knowledge structure (KS). Incorporating a KS into the KT procedure can potentially resolve both the sparseness and information loss, but this avenue has been underexplored because obtaining the complete KS of a domain is challenging and labor-intensive. In this paper, we propose a novel KS-enhanced graph representation learning model for KT with an attention mechanism (KSGKT). We first explore eight methods that automatically infer the domain KS from learner response data and integrate it into the KT procedure. Leveraging a graph representation learning model, we then obtain the question and skill embeddings from the KS-enhanced graph. To incorporate more distinctive information on the questions, we extract the cognitive question difficulty from the learning history of each learner. We then propose a convolutional representation method that fuses these disctinctive features, thus obtaining a comprehensive representation of each question. These representations are input to the proposed KT model, and the long-term dependencies are handled by the attention mechanism. The model finally predicts the learner's performance on new problems. Extensive experiments conducted from six perspectives on three real-world data sets demonstrated the superiority and interpretability of our model for learner-performance modeling. Based on the KT results, we also suggest three potential applications of our model.
引用
收藏
页码:2012 / 2045
页数:34
相关论文
共 50 条
  • [41] Inductive Graph-based Knowledge Tracing
    Han, Donghee
    Kim, Daehee
    Hank, Keejun
    Yit, Mun Yong
    2023 IEEE INTERNATIONAL CONFERENCE ON BIG DATA AND SMART COMPUTING, BIGCOMP, 2023, : 92 - 99
  • [42] UniSKGRep: A unified representation learning framework of social network and knowledge graph
    Shen, Yinghan
    Jiang, Xuhui
    Li, Zijian
    Wang, Yuanzhuo
    Xu, Chengjin
    Shen, Huawei
    Cheng, Xueqi
    NEURAL NETWORKS, 2023, 158 : 142 - 153
  • [43] Language Proficiency Enhanced Knowledge Tracing
    Jung, Heeseok
    Yoo, Jaesang
    Yoon, Yohaan
    Jang, Yeonju
    AUGMENTED INTELLIGENCE AND INTELLIGENT TUTORING SYSTEMS, ITS 2023, 2023, 13891 : 3 - 15
  • [44] Dual-Mode Contrastive Learning-Enhanced Knowledge Tracing
    Huang, Danni
    Yu, Jicheng
    Mao, Shun
    Li, Jiawei
    Jiang, Yuncheng
    PRICAI 2024: TRENDS IN ARTIFICIAL INTELLIGENCE, PT I, 2025, 15281 : 81 - 92
  • [45] Cognition-Mode Aware Variational Representation Learning Framework for Knowledge Tracing
    Zhang, Moyu
    Zhu, Xinning
    Zhang, Chunhong
    Pan, Feng
    Qian, Wenchen
    Zhao, Hui
    23RD IEEE INTERNATIONAL CONFERENCE ON DATA MINING, ICDM 2023, 2023, : 788 - 797
  • [46] GMEKT: A Novel Graph Attention-Based Memory-Enhanced Knowledge Tracing
    Chen, Mianfan
    Ma, Wenjun
    Mao, Shun
    Jiang, Yuncheng
    PRICAI 2022: TRENDS IN ARTIFICIAL INTELLIGENCE, PT I, 2022, 13629 : 408 - 421
  • [47] Graph-based effective knowledge tracing via subject knowledge mapping
    Yang, Ziyan
    Hu, Jia
    Zhong, Shaochun
    Yang, Lan
    Min, Geyong
    EDUCATION AND INFORMATION TECHNOLOGIES, 2024, : 9813 - 9840
  • [48] Multi-type factors representation learning for deep learning-based knowledge tracing
    He, Liangliang
    Tang, Jintao
    Li, Xiao
    Wang, Pancheng
    Chen, Feng
    Wang, Ting
    WORLD WIDE WEB-INTERNET AND WEB INFORMATION SYSTEMS, 2022, 25 (03): : 1343 - 1372
  • [49] Multi-type factors representation learning for deep learning-based knowledge tracing
    Liangliang He
    Jintao Tang
    Xiao Li
    Pancheng Wang
    Feng Chen
    Ting Wang
    World Wide Web, 2022, 25 : 1343 - 1372
  • [50] A cross-domain knowledge tracing model based on graph optimal transport
    Wu, Zhengyang
    Liu, Yuqi
    Cen, Jianwei
    Zheng, Zetao
    Xu, Guandong
    WORLD WIDE WEB-INTERNET AND WEB INFORMATION SYSTEMS, 2025, 28 (01):