Date
Publisher
arXiv
Cognitive diagnostics in the Web-based Intelligent Education System (WIES)
aims to assess students' mastery of knowledge concepts from heterogeneous,
noisy interactions. Recent work has tried to utilize Large Language Models
(LLMs) for cognitive diagnosis, yet LLMs struggle with structured data and are
prone to noise-induced misjudgments. Specially, WIES's open environment
continuously attracts new students and produces vast amounts of response logs,
exacerbating the data imbalance and noise issues inherent in traditional
educational systems. To address these challenges, we propose DLLM, a
Diffusion-based LLM framework for noise-robust cognitive diagnosis. DLLM first
constructs independent subgraphs based on response correctness, then applies
relation augmentation alignment module to mitigate data imbalance. The two
subgraph representations are then fused and aligned with LLM-derived,
semantically augmented representations. Importantly, before each alignment
step, DLLM employs a two-stage denoising diffusion module to eliminate
intrinsic noise while assisting structural representation alignment.
Specifically, unconditional denoising diffusion first removes erroneous
information, followed by conditional denoising diffusion based on graph-guided
to eliminate misleading information. Finally, the noise-robust representation
that integrates semantic knowledge and structural information is fed into
existing cognitive diagnosis models for prediction. Experimental results on
three publicly available web-based educational platform datasets demonstrate
that our DLLM achieves optimal predictive performance across varying noise
levels, which demonstrates that DLLM achieves noise robustness while
effectively leveraging semantic knowledge from LLM.
What is the application?
Who is the user?
Why use AI?
Study design
