Abstract

One of the main problems in graph analysis is the correct identification of relevant nodes for spreading processes. Spreaders are crucial for accelerating/hindering information diffusion, increasing product exposure, controlling diseases, rumors, and more. Correct identification of spreaders in graph analysis is a relevant task to optimally use the network structure and ensure a more efficient flow of information. Additionally, network topology has proven to play a relevant role in the spreading processes. In this sense, more of the existing methods based on local, global, or hybrid centrality measures only select relevant nodes based on their ranking values, but they do not intentionally focus on their distribution on the graph. In this paper, we propose a simple yet effective method that takes advantage of the underlying graph topology to guarantee that the selected nodes are not only relevant but also well-scattered. Our proposal also suggests how to define the number of spreaders to select. The approach is composed of two phases: first, graph partitioning; and second, identification and distribution of relevant nodes. We have tested our approach by applying the SIR spreading model over nine real complex networks. The experimental results showed more influential and scattered values for the set of relevant nodes identified by our approach than several reference algorithms, including degree, closeness, Betweenness, VoteRank, HybridRank, and IKS. The results further showed an improvement in the propagation influence value when combining our distribution strategy with classical metrics, such as degree, outperforming computationally more complex strategies. Moreover, our proposal shows a good computational complexity and can be applied to large-scale networks.

Highlights

  • Published: 15 September 2021Networks are being increasingly used for representing, analyzing, and explaining complex systems

  • Identifying a set of relevant nodes to maximize the spread of influence in complex networks is an important task in areas, such as social network analysis and viral marketing

  • Many methods have been proposed in the literature to select relevant nodes from a complex network, most of them use the idea of ranking the vertices to a defined metric

Read more

Summary

Introduction

Published: 15 September 2021Networks are being increasingly used for representing, analyzing, and explaining complex systems. Identification of influential nodes ( called propagators, relevant nodes, or vital nodes) that can help accelerate or interrupt a propagation process is one of the main research interests in complex network analysis. A correct spreader identification is a core need in applications, such as marketing, rumor spreading, identifying target points in power grids or main streets, preventing connectivity failures in large networks, such as Cellphone, Telephone, and the Internet, and, even more importantly, helping to prevent the spread of diseases or pandemics [3]. The problem of choosing a set of relevant nodes to achieve the maximum spreading flow is defined as the Influence Maximization Problem [4]; its main open issue is identifying the smallest number of influential nodes, from which the diffusion leads to broad network

Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call