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Diffusion Centrality in Social Networks

Published: 26 August 2012 Publication History

Abstract

Though centrality of vertices in social networks has been extensively studied, all past efforts assume that centrality of a vertex solely depends on the structural properties of graphs. However, with the emergence of online "semantic" social networks where vertices have properties (e.g. gender, age, and other demographic data) and edges are labeled with relationships (e.g. friend, follows) and weights (measuring the strength of a relationship), it is essential that we take semantics into account when measuring centrality. Moreover, the centrality of a vertex should be tied to a diffusive property in the network - a Twitter vertex may have high centrality w.r.t. jazz, but low centrality w.r.t. Republican politics. In this paper, we propose a new notion of diffusion centrality (DC) in which semantic aspects of the graph, as well as a diffusion model of how a diffusive property p is spreading, are used to characterize the centrality of vertices. We present a hyper graph based algorithm to compute DC and report on a prototype implementation and experiments showing how we can compute DCs (using real YouTube data) on social networks in a reasonable amount of time. We compare DC with classical centrality measures like degree, closeness, betweenness, eigenvector and stress centrality and show that in all cases, DC produces higher quality results. DC is also often faster to compute than both betweenness, closeness and stress centrality, but slower than degree and eigenvector centrality.

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Cited By

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  • (2023)Perturbation Analysis of Centrality MeasuresProceedings of the International Conference on Advances in Social Networks Analysis and Mining10.1145/3625007.3627590(407-414)Online publication date: 6-Nov-2023
  • (2017)Efficient Maximum Flow Maintenance on Dynamic NetworksProceedings of the 26th International Conference on World Wide Web Companion10.1145/3041021.3051152(1383-1385)Online publication date: 3-Apr-2017
  • (2017)Incremental maximum flow computation on evolving networksProceedings of the Symposium on Applied Computing10.1145/3019612.3019816(1061-1067)Online publication date: 3-Apr-2017
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Information

Published In

cover image Guide Proceedings
ASONAM '12: Proceedings of the 2012 International Conference on Advances in Social Networks Analysis and Mining (ASONAM 2012)
August 2012
1390 pages
ISBN:9780769547992

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IEEE Computer Society

United States

Publication History

Published: 26 August 2012

Author Tags

  1. Computational modeling
  2. Human immunodeficiency virus
  3. Labeling
  4. Semantics
  5. Social network services
  6. Stress
  7. Tin

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Overall Acceptance Rate 116 of 549 submissions, 21%

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View all
  • (2023)Perturbation Analysis of Centrality MeasuresProceedings of the International Conference on Advances in Social Networks Analysis and Mining10.1145/3625007.3627590(407-414)Online publication date: 6-Nov-2023
  • (2017)Efficient Maximum Flow Maintenance on Dynamic NetworksProceedings of the 26th International Conference on World Wide Web Companion10.1145/3041021.3051152(1383-1385)Online publication date: 3-Apr-2017
  • (2017)Incremental maximum flow computation on evolving networksProceedings of the Symposium on Applied Computing10.1145/3019612.3019816(1061-1067)Online publication date: 3-Apr-2017
  • (2017)Presenting novel application-based centrality measures for finding important users based on their activities and social behaviorComputers in Human Behavior10.1016/j.chb.2017.03.01473:C(64-79)Online publication date: 1-Aug-2017
  • (2016)Diffusion centralityArtificial Intelligence10.1016/j.artint.2016.06.008239:C(70-96)Online publication date: 1-Oct-2016

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