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Publication

Tracking Causal Relations in the News: Data, Tools, and Models for the Analysis of Argumentative Statements in Online Media

Journal Contribution - Journal Article

Online debates and debate spheres challenge our assumptions about democracy,
politics, journalism, trust, and truth in ways that make them a necessary object of study. In the present article, we argue that the study of online arguments can benefit from an interdisciplinary approach that combines computational methods for text analysis with conceptual models of opinion dynamics. The article thereby seeks to make a conceptual and methodological contribution to the field by highlighting the role of domain-crossing causal statements in debates of societal interest, and by providing a method for automatically mining such statements from textual corpora on the web. The article illustrates the relevance of this approach for the study of online debates by means of a case study in which we analyse cross-cutting statements on climate change and energy technologies from the comment section of the online newspaper The Guardian. In support of this case study, we use data and methods that are made openly available through the Penelope ecosystem of tools and techniques for computational social science.
Journal: Literary & Linguistic Computing
ISSN: 2055-7671
Issue: 4
Volume: 37
Pages: 1358–1375
Publication year:2022
Accessibility:Open