A Discourse Analysis Framework for Legislative and Social Media Debates
Arman Irani, Ju Yeon Park, Kevin Esterling, Michalis Faloutsos

TL;DR
This paper introduces DALiSM, a comprehensive framework for analyzing discourse dynamics in legislative and social media debates, capturing argumentation, deliberation intensity, and discourse evolution at scale.
Contribution
The paper presents a novel, data-driven argument-centric framework that extends computational argumentation methods to analyze diverse debate platforms over time.
Findings
Insights into deliberative behavior in online and offline debates
Effective identification of arguments from long texts
Modeling discourse evolution over extended periods
Abstract
How can we capture the dynamics of deliberation in a debate? In an increasingly divided and misinformed world, understanding the relationship between who is arguing and what they are arguing about is becoming critical for fostering a meaningful exchange of ideas. Given the vast array of available platforms for people to express their viewpoints and deliberate on issues, how can we develop methods to accurately analyze these processes? Luckily, there is an abundance of debate data available, ranging from: (a) formal proceedings, such as committee hearings in legislatures, to (b) online discussion forums, such as Reddit. Here we introduce DALiSM, a data-driven argument-centric framework, to analyze discourse dynamics in diverse and multi-party spaces at scale. We develop methods to harness and extend the state-of-the-art in computational argumentation for: (a) identifying arguments from…
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Taxonomy
TopicsRhetoric and Communication Studies · Political Science Research and Education
