Date
Publisher
arXiv
In the contemporary educational landscape, particularly in large classroom
settings, discussion forums have become a crucial tool for promoting
interaction and addressing student queries. These forums foster a collaborative
learning environment where students engage with both the teaching team and
their peers. However, the sheer volume of content generated in these forums
poses two significant interconnected challenges: How can we effectively
identify common misunderstandings that arise in student discussions? And once
identified, how can instructors use these insights to address them effectively?
This paper explores the approach to integrating large language models (LLMs)
and Retrieval-Augmented Generation (RAG) to tackle these challenges. We then
demonstrate the approach Misunderstanding to Mastery (M2M) with authentic data
from three computer science courses, involving 1355 students with 2878 unique
posts, followed by an evaluation with five instructors teaching these courses.
Results show that instructors found the approach promising and valuable for
teaching, effectively identifying misunderstandings and generating actionable
insights. Instructors highlighted the need for more fine-grained groupings,
clearer metrics, validation of the created resources, and ethical
considerations around data anonymity.
What is the application?
Who is the user?
Who age?
Why use AI?
Study design
