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Main Authors: Jia, Yuhao, Li, Duantengchuan, Chen, Jinsong, Mao, Zhongjie, Tong, Mingwen, Li, Yue, Wang, Xiaoguang
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2605.08697
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author Jia, Yuhao
Li, Duantengchuan
Chen, Jinsong
Mao, Zhongjie
Tong, Mingwen
Li, Yue
Wang, Xiaoguang
author_facet Jia, Yuhao
Li, Duantengchuan
Chen, Jinsong
Mao, Zhongjie
Tong, Mingwen
Li, Yue
Wang, Xiaoguang
contents The emerging collaborative information-based knowledge tracing (KT) has been a promising way to enhance modeling of learners' knowledge states. The core idea is to extract the collaborative information from interaction sequences of other learners to assist the prediction on the target one. Despite effectiveness, existing methods are built on the raw interaction sequences with tailored modules, which inevitably limits their capacity in deeply capturing learning behavioral patterns and generalization. To this end, we propose a general meta-behavioral pattern-aware framework (MBP-KT) for KT. Specifically, MBP-KT introduces a novel meta-behavioral sequence construction to transform the raw interaction sequences into the combinations of different meta-behavioral patterns. In this way, the learning behavioral patterns of learners can be effectively preserved. Then, MBP-KT develops a parameter-free module to extract the global collaborative representations from the constructed meta-behavioral sequences. Moreover, MBP-KT provides general injection strategies to introduce the extracted global collaborative information into various downstream KT models, ensuring the universality of the collaborative information. Extensive results on real-world datasets demonstrate that MBP-KT can consistently boosts the performance of a wide range of KT models.
format Preprint
id arxiv_https___arxiv_org_abs_2605_08697
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle MBP-KT: Learning Global Collaborative Information from Meta-Behavioral Pattern for Enhanced Knowledge Tracing
Jia, Yuhao
Li, Duantengchuan
Chen, Jinsong
Mao, Zhongjie
Tong, Mingwen
Li, Yue
Wang, Xiaoguang
Artificial Intelligence
The emerging collaborative information-based knowledge tracing (KT) has been a promising way to enhance modeling of learners' knowledge states. The core idea is to extract the collaborative information from interaction sequences of other learners to assist the prediction on the target one. Despite effectiveness, existing methods are built on the raw interaction sequences with tailored modules, which inevitably limits their capacity in deeply capturing learning behavioral patterns and generalization. To this end, we propose a general meta-behavioral pattern-aware framework (MBP-KT) for KT. Specifically, MBP-KT introduces a novel meta-behavioral sequence construction to transform the raw interaction sequences into the combinations of different meta-behavioral patterns. In this way, the learning behavioral patterns of learners can be effectively preserved. Then, MBP-KT develops a parameter-free module to extract the global collaborative representations from the constructed meta-behavioral sequences. Moreover, MBP-KT provides general injection strategies to introduce the extracted global collaborative information into various downstream KT models, ensuring the universality of the collaborative information. Extensive results on real-world datasets demonstrate that MBP-KT can consistently boosts the performance of a wide range of KT models.
title MBP-KT: Learning Global Collaborative Information from Meta-Behavioral Pattern for Enhanced Knowledge Tracing
topic Artificial Intelligence
url https://arxiv.org/abs/2605.08697