English

Adaptive Knowledge Transfer for Cross-Disciplinary Cold-Start Knowledge Tracing

Information Retrieval 2025-11-26 v1

Abstract

Cross-Disciplinary Cold-start Knowledge Tracing (CDCKT) faces a critical challenge: insufficient student interaction data in the target discipline prevents effective knowledge state modeling and performance prediction. Existing cross-disciplinary methods rely on overlapping entities between disciplines for knowledge transfer through simple mapping functions, but suffer from two key limitations: (1) overlapping entities are scarce in real-world scenarios, and (2) simple mappings inadequately capture cross-disciplinary knowledge complexity. To overcome these challenges, we propose Mixed of Experts and Adversarial Generative Network-based Cross-disciplinary Cold-start Knowledge Tracing Framework. Our approach consists of three key components: First, we pre-train a source discipline model and cluster student knowledge states into K categories. Second, these cluster attributes guide a mixture-of-experts network through a gating mechanism, serving as a cross-domain mapping bridge. Third, an adversarial discriminator enforces feature separation by pulling same-attribute student features closer while pushing different-attribute features apart, effectively mitigating small-sample limitations. We validate our method's effectiveness across 20 extreme cross-disciplinary cold-start scenarios.

Keywords

Cite

@article{arxiv.2511.20009,
  title  = {Adaptive Knowledge Transfer for Cross-Disciplinary Cold-Start Knowledge Tracing},
  author = {Yulong Deng and Zheng Guan and Min He and Xue Wang and Jie Liu and Zheng Li},
  journal= {arXiv preprint arXiv:2511.20009},
  year   = {2025}
}

Comments

10 pages, 5 figures

R2 v1 2026-07-01T07:53:43.293Z