Date
Publisher
arXiv
The promise of generative AI to revolutionize education is constrained by the
pedagogical limits of large language models (LLMs). A major issue is the lack
of access to high-quality training data that reflect the learning of actual
students. Prompt engineering has emerged as a stopgap, but the ability of
prompts to encode complex pedagogical strategies in rule-based natural language
is inherently limited. To address this gap we introduce TeachLM - an LLM
optimized for teaching through parameter-efficient fine-tuning of
state-of-the-art models. TeachLM is trained on a dataset comprised of 100,000
hours of one-on-one, longitudinal student-tutor interactions maintained by
Polygence, which underwent a rigorous anonymization process to protect privacy.
We use parameter-efficient fine-tuning to develop an authentic student model
that enables the generation of high-fidelity synthetic student-tutor dialogues.
Building on this capability, we propose a novel multi-turn evaluation protocol
that leverages synthetic dialogue generation to provide fast, scalable, and
reproducible assessments of the dialogical capabilities of LLMs. Our
evaluations demonstrate that fine-tuning on authentic learning data
significantly improves conversational and pedagogical performance - doubling
student talk time, improving questioning style, increasing dialogue turns by
50%, and greater personalization of instruction.
What is the application?
Who is the user?
Who age?
Why use AI?
Study design
