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Main Authors: Chenene, Mohamed, Rouhier, Jeanne, Daniélou, Jean, Sarkar, Mihir, Cabrio, Elena
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2512.17347
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author Chenene, Mohamed
Rouhier, Jeanne
Daniélou, Jean
Sarkar, Mihir
Cabrio, Elena
author_facet Chenene, Mohamed
Rouhier, Jeanne
Daniélou, Jean
Sarkar, Mihir
Cabrio, Elena
contents Public debates surrounding infrastructure and energy projects involve complex networks of stakeholders, arguments, and evolving narratives. Understanding these dynamics is crucial for anticipating controversies and informing engagement strategies, yet existing tools in media intelligence largely rely on descriptive analytics with limited transparency. This paper presents Stakeholder Suite, a framework deployed in operational contexts for mapping actors, topics, and arguments within public debates. The system combines actor detection, topic modeling, argument extraction and stance classification in a unified pipeline. Tested on multiple energy infrastructure projects as a case study, the approach delivers fine-grained, source-grounded insights while remaining adaptable to diverse domains. The framework achieves strong retrieval precision and stance accuracy, producing arguments judged relevant in 75% of pilot use cases. Beyond quantitative metrics, the tool has proven effective for operational use: helping project teams visualize networks of influence, identify emerging controversies, and support evidence-based decision-making.
format Preprint
id arxiv_https___arxiv_org_abs_2512_17347
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Stakeholder Suite: A Unified AI Framework for Mapping Actors, Topics and Arguments in Public Debates
Chenene, Mohamed
Rouhier, Jeanne
Daniélou, Jean
Sarkar, Mihir
Cabrio, Elena
Computation and Language
Public debates surrounding infrastructure and energy projects involve complex networks of stakeholders, arguments, and evolving narratives. Understanding these dynamics is crucial for anticipating controversies and informing engagement strategies, yet existing tools in media intelligence largely rely on descriptive analytics with limited transparency. This paper presents Stakeholder Suite, a framework deployed in operational contexts for mapping actors, topics, and arguments within public debates. The system combines actor detection, topic modeling, argument extraction and stance classification in a unified pipeline. Tested on multiple energy infrastructure projects as a case study, the approach delivers fine-grained, source-grounded insights while remaining adaptable to diverse domains. The framework achieves strong retrieval precision and stance accuracy, producing arguments judged relevant in 75% of pilot use cases. Beyond quantitative metrics, the tool has proven effective for operational use: helping project teams visualize networks of influence, identify emerging controversies, and support evidence-based decision-making.
title Stakeholder Suite: A Unified AI Framework for Mapping Actors, Topics and Arguments in Public Debates
topic Computation and Language
url https://arxiv.org/abs/2512.17347