Date
Publisher
arXiv
The conversational capabilities of large language models hold significant
promise for enabling scalable and interactive tutoring. While prior research
has primarily examined their capacity for Socratic questioning, it often
overlooks a critical dimension: adaptively guiding learners based on their
cognitive states. This study shifts focus from mere question generation to the
broader instructional guidance capability. We ask: Can LLMs emulate expert
tutors who dynamically adjust strategies in response to learners'
understanding? To investigate this, we propose GuideEval, a benchmark grounded
in authentic educational dialogues that evaluates pedagogical guidance through
a three-phase behavioral framework: (1) Perception, inferring learner states;
(2) Orchestration, adapting instructional strategies; and (3) Elicitation,
stimulating proper reflections. Empirical findings reveal that existing LLMs
frequently fail to provide effective adaptive scaffolding when learners exhibit
confusion or require redirection. Furthermore, we introduce a behavior-guided
finetuning strategy that leverages behavior-prompted instructional dialogues,
significantly enhancing guidance performance. By shifting the focus from
isolated content evaluation to learner-centered interaction, our work advocates
a more dialogic paradigm for evaluating Socratic LLMs.
What is the application?
Who is the user?
Who age?
Why use AI?
Study design
