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RAG-KT: Cross-platform Explainable Knowledge Tracing with Multi-view Fusion Retrieval Generation

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Knowledge Tracing (KT) infers a student's knowledge state from past interactions to predict future performance. Conventional Deep Learning (DL)-based KT models are typically tied to platform-specific identifiers and latent representations, making them hard to transfer and interpret. Large Language Model (LLM)-based methods can be either ungrounded under prompting or overly domain-dependent under fine-tuning. In addition, most existing KT methods are developed and evaluated under a same-distribution assumption. In real deployments, educational data often arise from heterogeneous platforms with substantial distribution shift, which often degrades generalization. To this end, we propose RAG-KT, a retrieval-augmented paradigm that frames cross-platform KT as reliable context constrained inference with LLMs. It builds a unified multi-source structured context with cross-source alignment via Question Group abstractions and retrieves complementary rich and reliable context for each prediction, enabling grounded prediction and interpretable diagnosis. Experiments on three public KT benchmarks demonstrate consistent gains in accuracy and robustness, including strong performance under cross-platform conditions.

Zhiyi Duan, Hongyu Yuan, Rui Liu• 2026

Related benchmarks

TaskDatasetResultRank
Knowledge TracingAssistments 2009
AUC0.8574
40
Knowledge TracingASSIST12
AUC73.89
24
Knowledge TracingDBE-KT22
Accuracy78.89
24
Knowledge TracingKnowledge Tracing Datasets
AUC85.74
7
Knowledge TracingEedi (cold-start)
Accuracy (ACC)68
7
Knowledge Tracing Report Quality EvaluationEedi
Explainability4.9
4
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