Poster

Using Large Language Models to Observe Motivationally Supportive Teaching Practices

June 03, 2024 | 2:45 - 3:45 PM Concordia University - Henry F. Hall Building Montreal, Mezzanine

This study explores the efficacy of using large language models (LLM’s) to identify motivationally supportive instruction in STEM classrooms. Drawing on self-determination theory, we focused on three support strategies: providing rationales, linking content to real life, and demonstrating enthusiasm. Initial coding and analysis of agreement between models and human raters revealed challenges and possible enhancements for LLMs to record supportive instruction. Pursuing these improvements could greatly enhance the efficiency of classroom observation in educational research.

Presenter(s)

Sanheeta Shankar

Sanheeta Shankar

McGill University, Montreal
Laasya Kanuru

Laasya Kanuru

Commutatus
Michael Victor

Michael Victor

Commutatus
Kristy A. Robinson

Kristy A. Robinson

McGill University, Montreal

Additional Information

Organizer
SALTISE