EduEmbed fine-tunes language models in two stages to add semantic information to learner-item embeddings and improve performance on cognitive diagnosis and adaptive testing tasks.
InProceedings of the 31st ACM SIGKDD Con- ference on Knowledge Discovery and Data Mining
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Embedding Enhancement via Fine-Tuned Language Models for Learner-Item Cognitive Modeling
EduEmbed fine-tunes language models in two stages to add semantic information to learner-item embeddings and improve performance on cognitive diagnosis and adaptive testing tasks.