Dokumentdetails
ID

oai:arXiv.org:2405.15930

Thema
Computer Science - Social and Info...
Autor
Irani, Arman Faloutsos, Michalis Esterling, Kevin
Kategorie

Computer Science

Jahr

2024

Auflistungsdatum

10.07.2024

Schlüsselwörter
forum structure threads forums framework discourse content arguments
Metrisch

Zusammenfassung

How can we model arguments and their dynamics in online forum discussions?

The meteoric rise of online forums presents researchers across different disciplines with an unprecedented opportunity: we have access to texts containing discourse between groups of users generated in a voluntary and organic fashion.

Most prior work so far has focused on classifying individual monological comments as either argumentative or not argumentative.

However, few efforts quantify and describe the dialogical processes between users found in online forum discourse: the structure and content of interpersonal argumentation.

Modeling dialogical discourse requires the ability to identify the presence of arguments, group them into clusters, and summarize the content and nature of clusters of arguments within a discussion thread in the forum.

In this work, we develop ArguSense, a comprehensive and systematic framework for understanding arguments and debate in online forums.

Our framework consists of methods for, among other things: (a) detecting argument topics in an unsupervised manner; (b) describing the structure of arguments within threads with powerful visualizations; and (c) quantifying the content and diversity of threads using argument similarity and clustering algorithms.

We showcase our approach by analyzing the discussions of four communities on the Reddit platform over a span of 21 months.

Specifically, we analyze the structure and content of threads related to GMOs in forums related to agriculture or farming to demonstrate the value of our framework.

;Comment: Accepted for publication at the 18th International AAAI Conference on Web and Social Media (ICWSM 2024).

Please cite accordingly

Irani, Arman,Faloutsos, Michalis,Esterling, Kevin, 2024, ArguSense: Argument-Centric Analysis of Online Discourse

Dokumentieren

Öffnen

Teilen

Quelle

Artikel empfohlen von ES/IODE AI

Lung cancer risk and exposure to air pollution: a multicenter North China case–control study involving 14604 subjects
lung cancer case–control air pollution never-smokers nomogram model controls lung-related 14604 subjects north polluted consistent smokers quit exposure lung cancer risk air people factor smoking pollution study history