Transition-Aware Multi-Activity Knowledge Tracing
Siqian Zhao, Chunpai Wang, Shaghayegh Sahebi

TL;DR
This paper introduces TAMKOT, a deep recurrent model that explicitly captures knowledge transfer between different learning activities, including non-assessed ones, improving the modeling of student knowledge in online learning systems.
Contribution
We propose TAMKOT, a novel multi-activity knowledge tracing model that explicitly models knowledge transfer across assessed and non-assessed learning activities.
Findings
TAMKOT outperforms existing models in predicting student performance.
The model effectively captures knowledge transfer between different activity types.
TAMKOT demonstrates robustness across three real-world datasets.
Abstract
Accurate modeling of student knowledge is essential for large-scale online learning systems that are increasingly used for student training. Knowledge tracing aims to model student knowledge state given the student's sequence of learning activities. Modern Knowledge tracing (KT) is usually formulated as a supervised sequence learning problem to predict students' future practice performance according to their past observed practice scores by summarizing student knowledge state as a set of evolving hidden variables. Because of this formulation, many current KT solutions are not fit for modeling student learning from non-assessed learning activities with no explicit feedback or score observation (e.g., watching video lectures that are not graded). Additionally, these models cannot explicitly represent the dynamics of knowledge transfer among different learning activities, particularly…
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Taxonomy
TopicsOnline Learning and Analytics · Intelligent Tutoring Systems and Adaptive Learning · Innovative Teaching and Learning Methods
