Enhancing Deep Knowledge Tracing with Auxiliary Tasks
Zitao Liu, Qiongqiong Liu, Jiahao Chen, Shuyan Huang, Boyu Gao, Weiqi, Luo, Jian Weng

TL;DR
This paper introduces AT-DKT, a deep knowledge tracing model enhanced with auxiliary tasks for question tagging and student prior knowledge, leading to improved prediction accuracy on real educational datasets.
Contribution
The paper proposes a novel deep knowledge tracing model with auxiliary tasks that explicitly incorporate question relations and student history, improving performance over existing models.
Findings
AT-DKT outperforms all sequential models with over 0.9% AUC improvement.
Auxiliary tasks significantly enhance question representation and student knowledge modeling.
The approach achieves near state-of-the-art results compared to non-sequential models.
Abstract
Knowledge tracing (KT) is the problem of predicting students' future performance based on their historical interactions with intelligent tutoring systems. Recent studies have applied multiple types of deep neural networks to solve the KT problem. However, there are two important factors in real-world educational data that are not well represented. First, most existing works augment input representations with the co-occurrence matrix of questions and knowledge components\footnote{\label{ft:kc}A KC is a generalization of everyday terms like concept, principle, fact, or skill.} (KCs) but fail to explicitly integrate such intrinsic relations into the final response prediction task. Second, the individualized historical performance of students has not been well captured. In this paper, we proposed \emph{AT-DKT} to improve the prediction performance of the original deep knowledge tracing…
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Taxonomy
TopicsIntelligent Tutoring Systems and Adaptive Learning · Online Learning and Analytics · Topic Modeling
Methodsfail
