Integrating fine-grained attention into multi-task learning for knowledge tracing

被引:0
作者
Liangliang He
Xiao Li
Pancheng Wang
Jintao Tang
Ting Wang
机构
[1] National University of Defense Technology,College of Computer
[2] National University of Defense Technology,Information center
来源
World Wide Web | 2023年 / 26卷
关键词
Knowledge tracing; Deep learning; Representation learning; Learner modeling;
D O I
暂无
中图分类号
学科分类号
摘要
Knowledge Tracing (KT) refers to the task of modeling learners’ various knowledge state given their past performance in e-learning platforms. Existing KT models usually only leverage the response (correct or incorrect) feedback generated by learners in the process of exercise-making, thus making them inaccurate and imprecise for capturing the knowledge growth after each exercise-making. Some researchers try to jointly learn hint-taking and response predictions with multi-task learning, but only achieve a limited improvement due to the imprecision of related task’s feedback and the rigid fusion of multi-task features. This paper proposes Multi-task Attentive Knowledge Tracing (MAKT) that jointly learns hint-taking and attempt-making predictions simultaneously with response prediction. Two specific models in MAKT are proposed, including a Bi-task Attentive Knowledge Tracing model (BAKT) and a Tri-task Attentive Knowledge Tracing model (TAKT). BAKT jointly learns a single related task with response prediction by considering two fine-grained attention mechanisms: imbalance-aware attention mechanism and skill-aware attention mechanism. The former is designed to address the inherent problem of imbalanced exercise samples in KT. The latter realizes skill individualization in both stages of multi-task features fusion and multi-model features fusion. TAKT jointly learns two related tasks simultaneously with response prediction based on the skill-aware attention mechanism, which has the potential to be extended by integrating more related tasks. Experiments on several real-world benchmark datasets show that MAKT outperforms state-of-the-art KT methods on predicting future learner responses, which also indicates a bright outlook for combining KT with multi-task learning.
引用
收藏
页码:3347 / 3372
页数:25
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