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A Hierarchical Probabilistic Framework for Incremental Knowledge Tracing in Classroom Settings

11 June 2025
Xinyi Gao
Qiucheng Wu
Yang Zhang
Xuechen Liu
Kaizhi Qian
Ying Xu
Shiyu Chang
    AI4Ed
ArXiv (abs)PDFHTML
Main:10 Pages
4 Figures
Bibliography:3 Pages
7 Tables
Appendix:11 Pages
Abstract

Knowledge tracing (KT) aims to estimate a student's evolving knowledge state and predict their performance on new exercises based on performance history. Many realistic classroom settings for KT are typically low-resource in data and require online updates as students' exercise history grows, which creates significant challenges for existing KT approaches. To restore strong performance under low-resource conditions, we revisit the hierarchical knowledge concept (KC) information, which is typically available in many classroom settings and can provide strong prior when data are sparse. We therefore propose Knowledge-Tree-based Knowledge Tracing (KT2^22), a probabilistic KT framework that models student understanding over a tree-structured hierarchy of knowledge concepts using a Hidden Markov Tree Model. KT2^22 estimates student mastery via an EM algorithm and supports personalized prediction through an incremental update mechanism as new responses arrive. Our experiments show that KT2^22 consistently outperforms strong baselines in realistic online, low-resource settings.

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@article{gao2025_2506.09393,
  title={ A Hierarchical Probabilistic Framework for Incremental Knowledge Tracing in Classroom Settings },
  author={ Xinyi Gao and Qiucheng Wu and Yang Zhang and Xuechen Liu and Kaizhi Qian and Ying Xu and Shiyu Chang },
  journal={arXiv preprint arXiv:2506.09393},
  year={ 2025 }
}
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