论文标题
DGEKT:一种用于知识跟踪的双图集合学习方法
DGEKT: A Dual Graph Ensemble Learning Method for Knowledge Tracing
论文作者
论文摘要
知识追踪旨在通过预测与概念相关的练习的未来表现来追踪学生不断发展的知识状态。最近,已经开发了一些基于图的模型来结合练习之间的关系以改善知识追踪,但是通常只探索了一种类型的关系信息。在本文中,我们提出了一种新颖的双图集合学习方法,用于知识追踪(DGEKT),该方法建立了学生学习相互作用的双图结构,以分别通过超刻画建模和定向图建模来捕获异质的运动概念概念概念关联和交互过渡。为了结合双图模型,我们介绍了在线知识蒸馏的技术,因为预计知识追踪模型可以预测学生对与不同概念相关的练习的反应,但仅在每个步骤的单个练习中的预测准确性就进行了优化。借助在线知识蒸馏,双图模型可以自适应地组合形成更强的教师模型,这反过来又提供了对所有练习的预测,作为额外的监督,以提供更好的建模能力。在实验中,我们将DGEKT与三个基准数据集上的八个知识追踪基线进行了比较,结果表明DGEKT实现了最新的性能。
Knowledge tracing aims to trace students' evolving knowledge states by predicting their future performance on concept-related exercises. Recently, some graph-based models have been developed to incorporate the relationships between exercises to improve knowledge tracing, but only a single type of relationship information is generally explored. In this paper, we present a novel Dual Graph Ensemble learning method for Knowledge Tracing (DGEKT), which establishes a dual graph structure of students' learning interactions to capture the heterogeneous exercise-concept associations and interaction transitions by hypergraph modeling and directed graph modeling, respectively. To ensemble the dual graph models, we introduce the technique of online knowledge distillation, due to the fact that although the knowledge tracing model is expected to predict students' responses to the exercises related to different concepts, it is optimized merely with respect to the prediction accuracy on a single exercise at each step. With online knowledge distillation, the dual graph models are adaptively combined to form a stronger teacher model, which in turn provides its predictions on all exercises as extra supervision for better modeling ability. In the experiments, we compare DGEKT against eight knowledge tracing baselines on three benchmark datasets, and the results demonstrate that DGEKT achieves state-of-the-art performance.