Learning states enhanced knowledge tracing: Simulating the diversity in real-world learning process
Shanshan Wang, Xueying Zhang, Keyang Wang, Xun Yang, Xingyi Zhang

TL;DR
This paper introduces LSKT, a novel knowledge tracing approach that simulates diverse learning interactions and explicitly models the learner's evolving learning state, leading to improved prediction accuracy.
Contribution
The paper proposes a new method that incorporates interaction diversity simulation and learning state extraction to enhance knowledge tracing accuracy.
Findings
LSKT outperforms existing methods on four real-world datasets.
Three embedding methods are compared to simulate interaction diversity.
Learning state modeling improves knowledge tracing performance.
Abstract
The Knowledge Tracing (KT) task focuses on predicting a learner's future performance based on the historical interactions. The knowledge state plays a key role in learning process. However, considering that the knowledge state is influenced by various learning factors in the interaction process, such as the exercises similarities, responses reliability and the learner's learning state. Previous models still face two major limitations. First, due to the exercises differences caused by various complex reasons and the unreliability of responses caused by guessing behavior, it is hard to locate the historical interaction which is most relevant to the current answered exercise. Second, the learning state is also a key factor to influence the knowledge state, which is always ignored by previous methods. To address these issues, we propose a new method named Learning State Enhanced Knowledge…
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Taxonomy
TopicsIntelligent Tutoring Systems and Adaptive Learning
