Date
Publisher
arXiv
Large language models (LLMs) typically generate direct answers, yet they are
increasingly used as learning tools. Studying instructors' usage is critical,
given their role in teaching and guiding AI adoption in education. We designed
and evaluated TeaPT, an LLM for pedagogical purposes that supports instructors'
professional development through two conversational approaches: a Socratic
approach that uses guided questioning to foster reflection, and a Narrative
approach that offers elaborated suggestions to extend externalized cognition.
In a mixed-method study with 41 higher-education instructors, the Socratic
version elicited greater engagement, while the Narrative version was preferred
for actionable guidance. Subgroup analyses further revealed that
less-experienced, AI-optimistic instructors favored the Socratic version,
whereas more-experienced, AI-cautious instructors preferred the Narrative
version. We contribute design implications for LLMs for pedagogical purposes,
showing how adaptive conversational approaches can support instructors with
varied profiles while highlighting how AI attitudes and experience shape
interaction and learning.
What is the application?
Who is the user?
Who age?
Why use AI?
Study design
