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Auteur principal: van Le, Christopher
Format: Preprint
Publié: 2025
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Accès en ligne:https://arxiv.org/abs/2502.08371
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author van Le, Christopher
author_facet van Le, Christopher
contents Particularly in the structure of global discourse, coherence plays a pivotal role in human text comprehension and is a hallmark of high-quality text. This is especially true for persuasive texts, where coherent argument structures support claims effectively. This paper discusses and proposes methods for detecting, extracting and representing these global discourse structures in a proccess called Argument(ation) Mining. We begin by defining key terms and processes of discourse structure analysis, then continue to summarize existing research on the matter, and identify shortcomings in current argument component extraction and classification methods. Furthermore, we will outline an architecture for argument mining that focuses on making models more generalisable while overcoming challenges in the current field of research by utilizing novel NLP techniques. This paper reviews current knowledge, summarizes recent works, and outlines our NLP pipeline, aiming to contribute to the theoretical understanding of global discourse structures.
format Preprint
id arxiv_https___arxiv_org_abs_2502_08371
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Unveiling Global Discourse Structures: Theoretical Analysis and NLP Applications in Argument Mining
van Le, Christopher
Computation and Language
Particularly in the structure of global discourse, coherence plays a pivotal role in human text comprehension and is a hallmark of high-quality text. This is especially true for persuasive texts, where coherent argument structures support claims effectively. This paper discusses and proposes methods for detecting, extracting and representing these global discourse structures in a proccess called Argument(ation) Mining. We begin by defining key terms and processes of discourse structure analysis, then continue to summarize existing research on the matter, and identify shortcomings in current argument component extraction and classification methods. Furthermore, we will outline an architecture for argument mining that focuses on making models more generalisable while overcoming challenges in the current field of research by utilizing novel NLP techniques. This paper reviews current knowledge, summarizes recent works, and outlines our NLP pipeline, aiming to contribute to the theoretical understanding of global discourse structures.
title Unveiling Global Discourse Structures: Theoretical Analysis and NLP Applications in Argument Mining
topic Computation and Language
url https://arxiv.org/abs/2502.08371