Modelling Formation of Online Temporal Communities
Isa Inuwa-Dutse

TL;DR
This paper investigates how online communities form over time on Twitter, focusing on real-time clustering based on tweet properties to understand community cohesion and dynamics.
Contribution
It introduces a novel method for real-time clustering of Twitter users into temporal communities using intrinsic tweet features, capturing dynamic community formation.
Findings
Effective clustering of users into cohesive temporal communities.
Revealed the importance of tweet properties in community formation.
Applicable for event monitoring and targeted marketing.
Abstract
Contemporary social media networks can be viewed as a break to the early two-step flow model in which influential individuals act as intermediaries between the media and the public for information diffusion. Today's social media platforms enable users to both generate and consume online contents. Users continuously engage and disengage in discussions with varying degrees of interaction leading to formation of distinct online communities. Such communities are often formed at high-level either based on metadata, such as hashtags on Twitter, or popular content triggered by few influential users. These online communities often do not reflect true connectivity and lack the cohesiveness of traditional communities. In this study, we investigate real-time formation of temporal communities on Twitter. We aim at defining both high and low levels connections and to reveal the magnitude of…
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Taxonomy
TopicsComplex Network Analysis Techniques · Opinion Dynamics and Social Influence · Peer-to-Peer Network Technologies
