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Percolation theory and fragmentation measures in social networks
Physica A: Statistical Mechanics and its Applications (2007)
  • Yiping Chen, Boston University
  • Gerald Paul, Boston University
  • Reuven Cohen, Boston University
  • Shlomo Havlin, Bar-Ilan University, Israel
  • Stephen P. Borgatti, Boston College
  • Fredrik Liljeros
  • H. Eugene Stanley, Boston University
Abstract
We study the statistical properties of a recently proposed social networks measure of fragmentation F after removal of a fraction q of nodes or links from the network. The measure F is defined as the ratio of the number of pairs of nodes that are not connected in the fragmented network to the total number of pairs in the original fully connected network. We compare this measure with the one traditionally used in percolation theory, P∞, the fraction of nodes in the largest cluster relative to the total number of nodes. Using both analytical and numerical methods, we study Erdős–Rényi (ER) and scale-free (SF) networks under various node removal strategies. We find that for a network obtained after removal of a fraction q of nodes above criticality, P∞≈(1-F)1/2. For fixed P∞ and close to criticality, we show that 1-F better reflects the actual fragmentation. For a given P∞, 1-F has a broad distribution and thus one can improve significantly the fragmentation of the network. We also study and compare the fragmentation measure F and the percolation measure P∞ for a real national social network of workplaces linked by the households of the employees and find similar results.
Keywords
  • Social network,
  • Fragmentation,
  • Percolation theory
Publication Date
May, 2007
Citation Information
Yiping Chen, Gerald Paul, Reuven Cohen, Shlomo Havlin, et al.. "Percolation theory and fragmentation measures in social networks" Physica A: Statistical Mechanics and its Applications Vol. 378 Iss. 1 (2007)
Available at: http://works.bepress.com/steveborgatti/53/