Metadata only
Date
2014Type
- Conference Paper
ETH Bibliography
yes
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Abstract
Modeling and predicting student knowledge is a fundamental task of an intelligent tutoring system. A popular approach for student modeling is Bayesian Knowledge Tracing (BKT). BKT models, however, lack the ability to describe the hierarchy and relationships between the different skills of a learning domain. In this work, we therefore aim at increasing the representational power of the student model by employing dynamic Bayesian networks that are able to represent such skill topologies. To ensure model interpretability, we constrain the parameter space. We evaluate the performance of our models on five large-scale data sets of different learning domains such as mathematics, spelling learning and physics, and demonstrate that our approach outperforms BKT in prediction accuracy on unseen data across all learning domains. Show more
Publication status
publishedExternal links
Book title
Intelligent Tutoring SystemsJournal / series
Lecture Notes in Computer ScienceVolume
Pages / Article No.
Publisher
SpringerEvent
Subject
Bayesian networks; Parameter learning; Constrained optimization; Prediction; Knowledge TracingOrganisational unit
03420 - Gross, Markus / Gross, Markus
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ETH Bibliography
yes
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