Extracting narrative signals from public discourse: a network-based approach
Armin Pournaki, Tom Willaert

TL;DR
This paper introduces a graph-based method using Abstract Meaning Representation to extract and analyze political narratives from digital media texts, aiding understanding of societal issues like polarization.
Contribution
It presents a novel formalism and machine-guided approach for extracting narrative signals from textual corpora, specifically tailored for political discourse analysis.
Findings
Successfully applied to European Union addresses from 2010 to 2023
Revealed underlying political narratives through network analysis
Enabled systematic reconstruction of narratives from public discourse
Abstract
Narratives are key interpretative devices by which humans make sense of political reality. As the significance of narratives for understanding current societal issues such as polarization and misinformation becomes increasingly evident, there is a growing demand for methods that support their empirical analysis. To this end, we propose a graph-based formalism and machine-guided method for extracting, representing, and analyzing selected narrative signals from digital textual corpora, based on Abstract Meaning Representation (AMR). The formalism and method introduced here specifically cater to the study of political narratives that figure in texts from digital media such as archived political speeches, social media posts, transcripts of parliamentary debates, and political manifestos on party websites. We approach the study of such political narratives as a problem of information…
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Taxonomy
TopicsSocial Media and Politics · Advanced Text Analysis Techniques · Complex Network Analysis Techniques
MethodsSparse Evolutionary Training
