NLP for Local Governance Meeting Records: A Focus Article on Tasks, Datasets, Metrics and Benchmark
Ricardo Campos, Jos\'e Pedro Evans, Jos\'e Miguel Isidro, Miguel Marques, Lu\'is Filipe Cunha, Al\'ipio Jorge, S\'ergio Nunes, Nuno Guimar\~aes

TL;DR
This paper reviews NLP tasks, datasets, and metrics for structuring and interpreting local governance meeting records to improve transparency, accessibility, and civic engagement through automated document analysis.
Contribution
It provides a comprehensive overview of NLP methods, challenges, and resources tailored for processing complex local government meeting documents.
Findings
Identification of key NLP tasks: segmentation, entity extraction, summarization.
Discussion of methodological approaches and evaluation metrics.
Highlighting domain-specific challenges like data scarcity and privacy.
Abstract
Local governance meeting records are official documents, in the form of minutes or transcripts, documenting how proposals, discussions, and procedural actions unfold during institutional meetings. While generally structured, these documents are often dense, bureaucratic, and highly heterogeneous across municipalities, exhibiting significant variation in language, terminology, structure, and overall organization. This heterogeneity makes them difficult for non-experts to interpret and challenging for intelligent automated systems to process, limiting public transparency and civic engagement. To address these challenges, computational methods can be employed to structure and interpret such complex documents. In particular, Natural Language Processing (NLP) offers well-established methods that can enhance the accessibility and interpretability of governmental records. In this focus…
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Taxonomy
TopicsComputational and Text Analysis Methods · E-Government and Public Services · Topic Modeling
