Sparse Binary Representation Learning for Knowledge Tracing
Yahya Badran, Christine Preisach

TL;DR
This paper introduces SBRKT, a knowledge tracing model that learns auxiliary binary knowledge concepts to improve student performance prediction, overcoming limitations of human-defined labels and enhancing various KT models.
Contribution
The paper proposes a novel sparse binary representation method for generating auxiliary knowledge concepts, compatible with both classical and modern KT models, improving prediction accuracy.
Findings
SBRKT outperforms baseline models on multiple datasets.
Incorporating auxiliary KCs improves BKT performance.
The discrete binary representation is fully trainable and effective.
Abstract
Knowledge tracing (KT) models aim to predict students' future performance based on their historical interactions. Most existing KT models rely exclusively on human-defined knowledge concepts (KCs) associated with exercises. As a result, the effectiveness of these models is highly dependent on the quality and completeness of the predefined KCs. Human errors in labeling and the cost of covering all potential underlying KCs can limit model performance. In this paper, we propose a KT model, Sparse Binary Representation KT (SBRKT), that generates new KC labels, referred to as auxiliary KCs, which can augment the predefined KCs to address the limitations of relying solely on human-defined KCs. These are learned through a binary vector representation, where each bit indicates the presence (one) or absence (zero) of an auxiliary KC. The resulting discrete representation allows these auxiliary…
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Taxonomy
TopicsDomain Adaptation and Few-Shot Learning
