A Dual-Fusion Cognitive Diagnosis Framework for Open Student Learning Environments
Yuanhao Liu, Shuo Liu, Yimeng Liu, Jingwen Yang, Hong Qian

TL;DR
This paper introduces a dual-fusion framework that combines textual semantic features and response logs to improve cognitive diagnosis in open student learning environments, enabling better inference without retraining.
Contribution
It proposes a novel dual-fusion model that aligns semantic and response features, enhancing CDMs' adaptability to open environments and incorporating large language models for data refinement.
Findings
DFCD outperforms existing models in real-world datasets.
The dual-fusion approach effectively integrates multiple modalities.
DFCD demonstrates strong adaptability in open learning settings.
Abstract
Cognitive diagnosis model (CDM) is a fundamental and upstream component in intelligent education. It aims to infer students' mastery levels based on historical response logs. However, existing CDMs usually follow the ID-based embedding paradigm, which could often diminish the effectiveness of CDMs in open student learning environments. This is mainly because they can hardly directly infer new students' mastery levels or utilize new exercises or knowledge without retraining. Textual semantic information, due to its unified feature space and easy accessibility, can help alleviate this issue. Unfortunately, directly incorporating semantic information may not benefit CDMs, since it does not capture response-relevant features and thus discards the individual characteristics of each student. To this end, this paper proposes a dual-fusion cognitive diagnosis framework (DFCD) to address the…
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Taxonomy
TopicsIntelligent Tutoring Systems and Adaptive Learning · Online Learning and Analytics
