Personalizing Student-Agent Interactions Using Log-Contextualized Retrieval Augmented Generation (RAG)
Cohn, Clayton, Rayala, Surya, Snyder, Caitlin, Fonteles, Joyce, Jain, Shruti, Mohammed, Naveeduddin, Timalsina, Umesh, Burriss, Sarah K., S, Ashwin T, Srivastava, Namrata, Deweese, Menton, Eeds, Angela, Biswas, Gautam
–arXiv.org Artificial Intelligence
Collaborative dialogue offers rich insights into students' learning and critical thinking, which is essential for personalizing pedagogical agent interactions in STEM+C settings. While large language models (LLMs) facilitate dynamic pedagogical interactions, hallucinations undermine confidence, trust, and instructional value. Retrieval-augmented generation (RAG) grounds LLM outputs in curated knowledge but requires a clear semantic link between user input and a knowledge base, which is often weak in student dialogue. We propose log-contextualized RAG (LC-RAG), which enhances RAG retrieval by using environment logs to contextualize collaborative discourse. Our findings show that LC-RAG improves retrieval over a discourse-only baseline and allows our collaborative peer agent, Copa, to deliver relevant, personalized guidance that supports students' critical thinking and epistemic decision-making in a collaborative computational modeling environment, C2STEM.
arXiv.org Artificial Intelligence
Jun-18-2025
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