Biased (degree-dependent) percolation was recently shown to provide strategies for turning robust networks fragile and vice versa. Here, we present more detailed results for biased edge percolation on scale-free networks. We assume a network in which the probability for an edge between nodes i and j to be retained is proportional to (k(i)k(j)(-alpha) with k(i) and k(j) the degrees of the nodes. We discuss two methods of network reconstruction, sequential and simultaneous, and investigate their properties by analytical and numerical means. The system is examined away from the percolation transition, where the size of the giant cluster is obtained, and close to the transition, where nonuniversal critical exponents are extracted using the generating-functions method. The theory is found to agree quite well with simulations. By presenting an extension of the Fortuin-Kasteleyn construction, we find that biased percolation is well-described by the q-->1 limit of the q -state Potts model with inhomogeneous couplings.
Biased percolation on scale-free networks.
H. Hooyberghs,Bert Van Schaeybroeck,A. Moreira,J. S. Andrade,H. Herrmann,J. Indekeu
Published 2009 in Physical review. E, Statistical, nonlinear, and soft matter physics
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- Publication year
2009
- Venue
Physical review. E, Statistical, nonlinear, and soft matter physics
- Publication date
2009-08-26
- Fields of study
Medicine, Physics, Mathematics
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- External record
- Source metadata
Semantic Scholar, PubMed
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