Abstract

Scale-free networks with small power law exponent are known to be robust, meaning that their qualitative topological structure cannot be altered by random removal of even a large proportion of nodes. By contrast, it has been argued in the science literature that such networks are highly vulnerable to a targeted attack, and removing a small number of key nodes in the network will dramatically change the topological structure. Here we analyse a class of preferential attachment networks in the robust regime and prove four main results supporting this claim: After removal of an arbitrarily small proportion $\varepsilon > 0$ of the oldest nodes (1) the asymptotic degree distribution has exponential instead of power law tails; (2) the largest degree in the network drops from being of the order of a power of the network size $n$ to being just logarithmic in $n;$ (3) the typical distances in the network increase from order log log $n$ to order log $n$ and (4) the network becomes vulnerable to random removal of nodes. Importantly, all our results explicitly quantify the dependence on the proportion $\varepsilon$ of removed vertices. For example, we show that the critical proportion of nodes that have to be retained for survival of the giant component undergoes a steep increase as $\varepsilon$ moves away from zero, and a comparison of this result with similar ones for other networks reveals the existence of two different universality classes of robust network models. The key technique in our proofs is a local approximation of the network by a branching random walk with two killing boundaries, and an understanding of the particle genealogies in this process, which enters into estimates for the spectral radius of an associated operator.

Highlights

  • 1.1 MotivationThe problem of resilience of networks to either random or targeted attack is crucial to many instances of real world networks, ranging from social networks via technological networks to communication networks

  • Vulnerability of robust preferential attachment networks the connectivity of a network relies on a small number of hubs and whether their loss will cause a large-scale breakdown

  • One should expect this qualitative behaviour across the range of real world networks and it should be present in the key mathematical models of large complex networks

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Summary

Motivation

The problem of resilience of networks to either random or targeted attack is crucial to many instances of real world networks, ranging from social networks (like collaboration networks) via technological networks (like electrical power grids) to communication networks (like the world-wide web). The latter paper includes a study of data related to the human brain, as well as street, collaboration and power grid networks One should expect this qualitative behaviour across the range of real world networks and it should be present in the key mathematical models of large complex networks. Our mathematical analysis of the network uses several new ideas and combines probabilistic and combinatorial arguments with analytic techniques informed by new probabilistic insights It is crucially based on the local approximation of preferential attachment networks by a branching random walk with a killing boundary recently found in [15].

Mathematical framework
Statement of the main results
Non-linear attachment rules
Vulnerability of other network models
Configuration model
Inhomogeneous random graphs
The local neighbourhood in the network
Main ideas of the proofs
Overview
Connectivity and branching processes
The approximating branching process
A multitype branching process
The topology of the damaged graph
Distances
Approximation by a branching process
Coupling the network to a tree
Coupling the tree to the IBP
Dominating the network by a branching process
Variations and other models
Full Text
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