Applied Sciences (Aug 2018)

Node-Based Resilience Measure Clustering with Applications to Noisy and Overlapping Communities in Complex Networks

  • John Matta,
  • Tayo Obafemi-Ajayi,
  • Jeffrey Borwey,
  • Koushik Sinha,
  • Donald Wunsch,
  • Gunes Ercal

DOI
https://doi.org/10.3390/app8081307
Journal volume & issue
Vol. 8, no. 8
p. 1307

Abstract

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This paper examines a schema for graph-theoretic clustering using node-based resilience measures. Node-based resilience measures optimize an objective based on a critical set of nodes whose removal causes some severity of disconnection in the network. Beyond presenting a general framework for the usage of node based resilience measures for variations of clustering problems, we experimentally validate the usefulness of such methods in accomplishing the following: (i) clustering a graph in one step without knowing the number of clusters a priori; (ii) removing noise from noisy data; and (iii) detecting overlapping communities. We demonstrate that this clustering schema can be applied successfully using a wide range of data, including both real and synthetic networks, both natively in graph form and also expressed as point sets.

Keywords