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An LLM-Based System for Argument Mining

About

Arguments are a fundamental aspect of human reasoning, in which claims are supported, challenged, and weighed against one another. We present an end-to-end large language model (LLM)-based system for reconstructing arguments from natural language text into abstract argument graphs. The system follows a multi-stage pipeline that progressively identifies argumentative components, selects relevant elements, and uncovers their logical relations. These elements are represented as directed acyclic graphs consisting of two component types (premises and conclusions) and three relation types (support, attack, and undercut). We conduct two complementary experiments to evaluate the system. First, we perform a manual evaluation on arguments drawn from an argumentation theory textbook to assess the system's ability to recover argumentative structure. Second, we conduct a quantitative evaluation on benchmark datasets, allowing comparison with prior work by mapping our outputs to established annotation schemes. Results show that the system can adequately recover argumentative structures and, when adapted to different annotation schemes, achieve reasonable performance across benchmark datasets. These findings highlight the potential of LLM-based pipelines for scalable argument mining.

Paulo Pirozelli, Victor Hugo Nascimento Rocha, Fabio G. Cozman, Douglas Aldred• 2026

Related benchmarks

TaskDatasetResultRank
Component classificationAbstRCT
Component F161.93
8
Argument Relation ExtractionAbstRCT
Link51.51
3
Argument Component ClassificationAAEC
F1 Score62.64
3
Argument Relation ExtractionAAEC
Link Score22.88
3
Argument Span IdentificationAbstRCT
F1 Score59.65
2
Argument Span IdentificationAAEC
F1 Score33.03
2
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