Abstract

The study of network disintegration has attracted much attention due to its wide applications, including suppressing the epidemic spreading, destabilizing terrorist network, preventing financial contagion, controlling the rumor diffusion and perturbing cancer networks. The crux of this matter is to find the critical nodes whose removal will lead to network collapse. This paper studies the disintegration of networks with incomplete link information. An effective method is proposed to find the critical nodes by the assistance of link prediction techniques. Extensive experiments in both synthetic and real networks suggest that, by using link prediction method to recover partial missing links in advance, the method can largely improve the network disintegration performance. Besides, to our surprise, we find that when the size of missing information is relatively small, our method even outperforms than the results based on complete information. We refer to this phenomenon as the “comic effect” of link prediction, which means that the network is reshaped through the addition of some links that identified by link prediction algorithms, and the reshaped network is like an exaggerated but characteristic comic of the original one, where the important parts are emphasized.

Highlights

  • The study of network disintegration has attracted much attention due to its wide applications, including suppressing the epidemic spreading, destabilizing terrorist network, preventing financial contagion, controlling the rumor diffusion and perturbing cancer networks

  • We introduced the link prediction as a strategy for attackers to improve the performance of network

  • We showed that the missing of link information harms the effect of network disintegration, link prediction can help to improve the performance remarkably

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Summary

Introduction

The study of network disintegration has attracted much attention due to its wide applications, including suppressing the epidemic spreading, destabilizing terrorist network, preventing financial contagion, controlling the rumor diffusion and perturbing cancer networks. The crux of this matter is to find the critical nodes whose removal will lead to network collapse. Holme et al.[22] compared the effect of four different targeted disintegration strategies: high degree and betweeness centrality, and their corresponding adaptive versions where the degree (betwenness) of the remaining node is recomputed after each node removal They found that the removals by the two adaptive methods outperform the two original static methods. Many researches[27,28,29,30] focused on the disintegration strategy based on local information, i.e. the knowledge of the neighborhood

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