Leveraging Large Language Models to Identify Conversation Threads in Collaborative Learning
Prerna Ravi, Dong Won Lee, Beatriz Flamia, Jasmine David, Brandon Hanks, Cynthia Breazeal, Emma Anderson, Grace Lin

TL;DR
This paper explores how explicit conversation threading improves large language models' ability to analyze synchronous group dialogues, enhancing understanding of collaborative learning interactions.
Contribution
It provides a systematic guide for identifying conversation threads and benchmarks LLM prompting strategies for better discourse analysis in real-time group talks.
Findings
Thread information improves LLM coding accuracy
Well-structured dialogue enhances downstream analysis
Hybrid human-AI approaches offer practical benefits
Abstract
Understanding how ideas develop and flow in small-group conversations is critical for analyzing collaborative learning. A key structural feature of these interactions is threading, the way discourse talk naturally organizes into interwoven topical strands that evolve over time. While threading has been widely studied in asynchronous text settings, detecting threads in synchronous spoken dialogue remains challenging due to overlapping turns and implicit cues. At the same time, large language models (LLMs) show promise for automating discourse analysis but often struggle with long-context tasks that depend on tracing these conversational links. In this paper, we investigate whether explicit thread linkages can improve LLM-based coding of relational moves in group talk. We contribute a systematic guidebook for identifying threads in synchronous multi-party transcripts and benchmark…
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