HGKT: Introducing Hierarchical Exercise Graph for Knowledge Tracing
Abstract
Knowledge tracing (KT) which aims at predicting learner's knowledge mastery plays an important role in the computer-aided educational system. In recent years, many deep learning models have been applied to tackle the KT task, which have shown promising results. However, limitations still exist. Most existing methods simplify the exercising records as knowledge sequences, which fail to explore rich information that existed in exercises. Besides, the existing diagnosis results of knowledge tracing are not convincing enough since they neglect prior relations between exercises. To solve the above problems, we propose a hierarchical graph knowledge tracing model called HGKT to explore the latent hierarchical relations between exercises. Specifically, we introduce the concept of problem schema to construct a hierarchical exercise graph that could model the exercise learning dependencies. Moreover, we employ two attention mechanisms to highlight the important historical states of learners. In the testing stage, we present a K&S diagnosis matrix that could trace the transition of mastery of knowledge and problem schema, which can be more easily applied to different applications. Extensive experiments show the effectiveness and interpretability of our proposed models.
Cite
@article{arxiv.2006.16915,
title = {HGKT: Introducing Hierarchical Exercise Graph for Knowledge Tracing},
author = {Hanshuang Tong and Zhen Wang and Yun Zhou and Shiwei Tong and Wenyuan Han and Qi Liu},
journal= {arXiv preprint arXiv:2006.16915},
year = {2022}
}
Comments
10 pages, 11 figures, accepted by SIGIR 2022