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Main Authors: Tajik, Elham, Borchers, Conrad, Shahrokhian, Bahar, Simon, Sebastian, Keramati, Ali, Pal, Sonika, Sankaranarayanan, Sreecharan
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2601.12618
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author Tajik, Elham
Borchers, Conrad
Shahrokhian, Bahar
Simon, Sebastian
Keramati, Ali
Pal, Sonika
Sankaranarayanan, Sreecharan
author_facet Tajik, Elham
Borchers, Conrad
Shahrokhian, Bahar
Simon, Sebastian
Keramati, Ali
Pal, Sonika
Sankaranarayanan, Sreecharan
contents Learning analytics researchers often analyze qualitative student data such as coded annotations or interview transcripts to understand learning processes. With the rise of generative AI, fully automated and human-AI workflows have emerged as promising methods for analysis. However, methodological standards to guide such workflows remain limited. In this study, we propose that reasoning traces generated by large language model (LLM) agents, especially within multi-agent systems, constitute a novel and rich form of process data to enhance interpretive practices in qualitative coding. We apply cosine similarity to LLM reasoning traces to systematically detect, quantify, and interpret disagreements among agents, reframing disagreement as a meaningful analytic signal. Analyzing nearly 10,000 instances of agent pairs coding human tutoring dialog segments, we show that LLM agents' semantic reasoning similarity robustly differentiates consensus from disagreement and correlates with human coding reliability. Qualitative analysis guided by this metric reveals nuanced instructional sub-functions within codes and opportunities for conceptual codebook refinement. By integrating quantitative similarity metrics with qualitative review, our method has the potential to improve and accelerate establishing inter-rater reliability during coding by surfacing interpretive ambiguity, especially when LLMs collaborate with humans. We discuss how reasoning-trace disagreements represent a valuable new class of analytic signals advancing methodological rigor and interpretive depth in educational research.
format Preprint
id arxiv_https___arxiv_org_abs_2601_12618
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Disagreement as Data: Reasoning Trace Analytics in Multi-Agent Systems
Tajik, Elham
Borchers, Conrad
Shahrokhian, Bahar
Simon, Sebastian
Keramati, Ali
Pal, Sonika
Sankaranarayanan, Sreecharan
Computation and Language
Learning analytics researchers often analyze qualitative student data such as coded annotations or interview transcripts to understand learning processes. With the rise of generative AI, fully automated and human-AI workflows have emerged as promising methods for analysis. However, methodological standards to guide such workflows remain limited. In this study, we propose that reasoning traces generated by large language model (LLM) agents, especially within multi-agent systems, constitute a novel and rich form of process data to enhance interpretive practices in qualitative coding. We apply cosine similarity to LLM reasoning traces to systematically detect, quantify, and interpret disagreements among agents, reframing disagreement as a meaningful analytic signal. Analyzing nearly 10,000 instances of agent pairs coding human tutoring dialog segments, we show that LLM agents' semantic reasoning similarity robustly differentiates consensus from disagreement and correlates with human coding reliability. Qualitative analysis guided by this metric reveals nuanced instructional sub-functions within codes and opportunities for conceptual codebook refinement. By integrating quantitative similarity metrics with qualitative review, our method has the potential to improve and accelerate establishing inter-rater reliability during coding by surfacing interpretive ambiguity, especially when LLMs collaborate with humans. We discuss how reasoning-trace disagreements represent a valuable new class of analytic signals advancing methodological rigor and interpretive depth in educational research.
title Disagreement as Data: Reasoning Trace Analytics in Multi-Agent Systems
topic Computation and Language
url https://arxiv.org/abs/2601.12618