Leveraging LLMs to Assess Tutor Moves in Real-Life Dialogues: A Feasibility Study

Article Status
Published
Authors/contributors
Title
Leveraging LLMs to Assess Tutor Moves in Real-Life Dialogues: A Feasibility Study
Abstract
Tutoring improves student achievement, but identifying and studying what tutoring actions are most associated with student learning at scale based on audio transcriptions is an open research problem. This present study investigates the feasibility and scalability of using generative AI to identify and evaluate specific tutor moves in real-life math tutoring. We analyze 50 randomly selected transcripts of college-student remote tutors assisting middle school students in mathematics. Using GPT-4, GPT-4o, GPT-4-turbo, Gemini-1.5-pro, and LearnLM, we assess tutors’ application of two tutor skills: delivering effective praise and responding to student math errors. All models reliably detected relevant situations, for example, tutors providing praise to students (94-98% accuracy) and a student making a math error (82-88% accuracy) and effectively evaluated the tutors’ adherence to tutoring best practices, aligning closely with human judgments (83-89% and 73-77%, respectively). We propose a cost-effective prompting strategy and discuss practical implications for using large language models to support scalable assessment in authentic settings. This work further contributes LLM prompts to support reproducibility and research in AI-supported learning.
Repository
arXiv
Archive ID
arXiv:2506.17410
Date
2025-06-20
Accessed
22/09/2025, 19:22
Short Title
Leveraging LLMs to Assess Tutor Moves in Real-Life Dialogues
Language
en
Library Catalogue
Extra
arXiv:2506.17410 [cs] Citation Key: thomas2025
Citation
Thomas, D. R., Borchers, C., Lin, J., Kakarla, S., Bhushan, S., Gatz, E., Gupta, S., Abboud, R., & Koedinger, K. R. (2025). Leveraging LLMs to Assess Tutor Moves in Real-Life Dialogues: A Feasibility Study (arXiv:2506.17410). arXiv. https://doi.org/10.48550/arXiv.2506.17410
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