arXiv (CS.CL)
2026-06-19 12:00
DOI:
arXiv:2606.20138
Learning to Prompt: Improving Student Engagement with Adaptive LLM-based High-School Tutoring
作者:
摘要 / Abstract
LLMs can personalize education, although current static-prompt tutoring systems struggle to adapt to diverse academic disciplines. We develop and test a system with subject-aware prompting, based on 14 pedagogical features (e.g., tutor scaffolding, student understanding) extracted from raw transcripts. We first train a prompt routing model in a simulation environment, and then deploy it for online adaptation with actual high-school students. The simulation benchmark shows the router outperforming two static baselines ($0.694$ vs. $0.647$ and $0.64$, $p