We present a theoretical framework for understanding nonbinary, nonindependent percolation on networks with general degree distributions. The model incorporates a partially functional (PF) state of nodes so that both intensity and extensity of error are characterized. Two connected nodes in a PF state cannot sustain the load and therefore break their link. We give exact solutions for the percolation threshold, the fraction of giant cluster, and the mean size of small clusters. The robustness-fragility transition point for scale-free networks with a degree distribution pk∝k−α is identified to be α=3. The analysis reveals that scale-free networks are vulnerable to targeted attack at hubs: a more complete picture of their Achilles' heel turns ...
Networks with mutual dependence have been shown to be much more vulnerable to random failures and ta...
Efficient robustness and fault tolerance of complex network is significantly influenced by its conne...
Recently, the dependence group has been proposed to study the robustness of networks with interdepen...
Recent studies introduced biased (degree-dependent) edge percolation as a model for failures in real...
generating function Supplementarymaterial for this article is available online The robustness of com...
Biased (degree-dependent) percolation was recently shown to provide strategies for turning robust ne...
In many complex systems representable as networks, nodes can be separated into different classes. Of...
We develop a theoretical approach to percolation in random clustered networks. We find that, althoug...
The study of network robustness focuses on the way the overall functionality of a network is affecte...
Percolation models shed a light on network integrity and functionality and have numerous application...
This dissertation covers the two major parts of my PhD research on statistical physics and complex n...
Percolation theory concerns the emergence of connected clusters that percolate through a networked s...
Recently, the problem of classes of vulnerable vertices (represented by colors) in complex networks ...
Methods for determining the percolation threshold usually study the behavior of network ensembles an...
International audienceAfter a failure or attack the structure of a complex network changes due to no...
Networks with mutual dependence have been shown to be much more vulnerable to random failures and ta...
Efficient robustness and fault tolerance of complex network is significantly influenced by its conne...
Recently, the dependence group has been proposed to study the robustness of networks with interdepen...
Recent studies introduced biased (degree-dependent) edge percolation as a model for failures in real...
generating function Supplementarymaterial for this article is available online The robustness of com...
Biased (degree-dependent) percolation was recently shown to provide strategies for turning robust ne...
In many complex systems representable as networks, nodes can be separated into different classes. Of...
We develop a theoretical approach to percolation in random clustered networks. We find that, althoug...
The study of network robustness focuses on the way the overall functionality of a network is affecte...
Percolation models shed a light on network integrity and functionality and have numerous application...
This dissertation covers the two major parts of my PhD research on statistical physics and complex n...
Percolation theory concerns the emergence of connected clusters that percolate through a networked s...
Recently, the problem of classes of vulnerable vertices (represented by colors) in complex networks ...
Methods for determining the percolation threshold usually study the behavior of network ensembles an...
International audienceAfter a failure or attack the structure of a complex network changes due to no...
Networks with mutual dependence have been shown to be much more vulnerable to random failures and ta...
Efficient robustness and fault tolerance of complex network is significantly influenced by its conne...
Recently, the dependence group has been proposed to study the robustness of networks with interdepen...