cs.AI updates on arXiv.org 07月28日 12:42
Efficient Knowledge Tracing Leveraging Higher-Order Information in Integrated Graphs
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本文提出了一种名为DGAKT的知识追踪模型,旨在解决现有方法在处理大型图和长学习序列时计算成本高的问题。DGAKT通过利用子图的高阶信息,仅处理与目标交互相关的子图,从而显著降低计算需求,实验表明其在资源效率方面优于现有模型。

arXiv:2507.18668v1 Announce Type: cross Abstract: The rise of online learning has led to the development of various knowledge tracing (KT) methods. However, existing methods have overlooked the problem of increasing computational cost when utilizing large graphs and long learning sequences. To address this issue, we introduce Dual Graph Attention-based Knowledge Tracing (DGAKT), a graph neural network model designed to leverage high-order information from subgraphs representing student-exercise-KC relationships. DGAKT incorporates a subgraph-based approach to enhance computational efficiency. By processing only relevant subgraphs for each target interaction, DGAKT significantly reduces memory and computational requirements compared to full global graph models. Extensive experimental results demonstrate that DGAKT not only outperforms existing KT models but also sets a new standard in resource efficiency, addressing a critical need that has been largely overlooked by prior KT approaches.

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知识追踪 图神经网络 计算效率
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