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2018 | OriginalPaper | Chapter

Topology of Thematic Communities in Online Social Networks: A Comparative Study

Authors : Valentina Guleva, Danila Vaganov, Daniil Voloshin, Klavdia Bochenina

Published in: Computational Science – ICCS 2018

Publisher: Springer International Publishing

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Abstract

The network structure of communities in social media significantly affects diffusion processes which implement positive or negative information influence on social media users. Some of the thematic communities in online social networks may provide illegal services or information in them may cause undesired psychological effects; moreover, the topology of such communities and behavior of their members are influenced by a thematic. Nevertheless, recent research does not contain enough detail about the particularities of thematic communities formation, or about the topological properties of underlying friendship networks. To address this gap, in this study we analyze structure of communities of different types, namely, carders, commercial sex workers, substance sellers and users, people with radical political views, and compare them to the ‘normal’ communities (without a single narrow focus). We discovered that in contrast to ordinary communities which have positive assortativity (as expected for social networks), specific thematical communities are significantly disassortative. Types of anomalous communities also differ not only in content but in structure. The most specific are the communities of radicalized individuals: it was shown that they have the highest connectivity and the larger part of nodes within a friendship graph.

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Footnotes
1
Authors of  [9] provide a classification method for rumor detection. In our case, this corresponds to relations between subscribers interests and message content.
 
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Metadata
Title
Topology of Thematic Communities in Online Social Networks: A Comparative Study
Authors
Valentina Guleva
Danila Vaganov
Daniil Voloshin
Klavdia Bochenina
Copyright Year
2018
DOI
https://doi.org/10.1007/978-3-319-93698-7_20

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