Cuff-KT: Tackling Learners' Real-time Learning Pattern Adjustment via Tuning-Free Knowledge State Guided Model Updating
Knowledge Tracing (KT) is a core component of Intelligent Tutoring Systems, modeling learners' knowledge state to predict future performance and provide personalized learning support. Traditional KT models assume that learners' learning abilities remain relatively stable over short periods...
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Main Authors | , , , |
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Format | Journal Article |
Language | English |
Published |
26.05.2025
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Subjects | |
Online Access | Get full text |
DOI | 10.48550/arxiv.2505.19543 |
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Summary: | Knowledge Tracing (KT) is a core component of Intelligent Tutoring Systems,
modeling learners' knowledge state to predict future performance and provide
personalized learning support. Traditional KT models assume that learners'
learning abilities remain relatively stable over short periods or change in
predictable ways based on prior performance. However, in reality, learners'
abilities change irregularly due to factors like cognitive fatigue, motivation,
and external stress -- a task introduced, which we refer to as Real-time
Learning Pattern Adjustment (RLPA). Existing KT models, when faced with RLPA,
lack sufficient adaptability, because they fail to timely account for the
dynamic nature of different learners' evolving learning patterns. Current
strategies for enhancing adaptability rely on retraining, which leads to
significant overfitting and high time overhead issues. To address this, we
propose Cuff-KT, comprising a controller and a generator. The controller
assigns value scores to learners, while the generator generates personalized
parameters for selected learners. Cuff-KT controllably adapts to data changes
fast and flexibly without fine-tuning. Experiments on five datasets from
different subjects demonstrate that Cuff-KT significantly improves the
performance of five KT models with different structures under intra- and
inter-learner shifts, with an average relative increase in AUC of 10% and 4%,
respectively, at a negligible time cost, effectively tackling RLPA task. Our
code and datasets are fully available at https://github.com/zyy-2001/Cuff-KT. |
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DOI: | 10.48550/arxiv.2505.19543 |