Vulnerability of robust preferential attachment networks
Dublin Core | PKP Metadata Items | Metadata for this Document | |
1. | Title | Title of document | Vulnerability of robust preferential attachment networks |
2. | Creator | Author's name, affiliation, country | Maren Eckhoff; University of Bath; United Kingdom |
2. | Creator | Author's name, affiliation, country | Peter Mörters; University of Bath; United Kingdom |
3. | Subject | Discipline(s) | |
3. | Subject | Keyword(s) | Power law, small world, scale-free network, preferential attachment, Barab\'asi-Albert model, percolation, maximal degree, diameter, network distance, robustness, vulnerability, multitype branching process, killed branching random walk |
3. | Subject | Subject classification | 05C80; 60J85; 60K35; 90B15 |
4. | Description | 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. |
5. | Publisher | Organizing agency, location | |
6. | Contributor | Sponsor(s) | |
7. | Date | (YYYY-MM-DD) | 2014-07-05 |
8. | Type | Status & genre | Peer-reviewed Article |
8. | Type | Type | |
9. | Format | File format | |
10. | Identifier | Uniform Resource Identifier | http://ejp.ejpecp.org/article/view/2974 |
10. | Identifier | Digital Object Identifier | 10.1214/EJP.v19-2974 |
11. | Source | Journal/conference title; vol., no. (year) | Electronic Journal of Probability; Vol 19 |
12. | Language | English=en | en |
14. | Coverage | Geo-spatial location, chronological period, research sample (gender, age, etc.) | |
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