Abstract
Abstract
Distributed algorithms for network science applications are of great importance due to today’s large real-world networks. In such algorithms, a node is allowed only to have local interactions with its immediate neighbors; because the whole network topological structure is often unknown to each node. Recently, distributed detection of central nodes, concerning different notions of importance, within a network has received much attention. Closeness centrality is a prominent measure to evaluate the importance (influence) of nodes, based on their accessibility, in a given network. In this paper, first, we introduce a local (ego-centric) metric that correlates well with the global closeness centrality; however, it has very low computational complexity. Second, we propose a compressive sensing (CS)-based framework to accurately recover high closeness centrality nodes in the network utilizing the proposed local metric. Both ego-centric metric computation and its aggregation via CS are efficient and distributed, using only local interactions between neighboring nodes. Finally, we evaluate the performance of the proposed method through extensive experiments on various synthetic and real-world networks. The results show that the proposed local metric correlates with the global closeness centrality, better than the current local metrics. Moreover, the results demonstrate that the proposed CS-based method outperforms state-of-the-art methods with notable improvement.
Publisher
Springer Science and Business Media LLC
Subject
Computational Mathematics,Computer Networks and Communications,Multidisciplinary
Reference33 articles.
1. Barabasi, AL, Albert R (1999) Emregence of scaling in random networks. Science 286(5439):509–512.
2. Benesty, J, Chen J, Huang Y, Cohen I (2009) Noise reduction in speech processing, 1–4.. Springer Science & Business Media.
3. Erdos, P, Renyi A (1960) On the evolution of random graphs In: Publication of the Mathematical Institute of the Hungarian Academy of Science, 17–61.
4. Ghalebi, E, Mahyar H, Grosu R, Rabiee HR (2017) Compressive sampling for sparse recovery in networks In: Proc of the 23rd ACM SIGKDD Conference on Knowledge Discovery and Data Mining (KDD), 13th International Workshop on Mining and Learning with Graphs, Halifax, Nova Scotia, Canada, 1–8.
5. Grosu, R, Ghalebi E, Movaghar A, Mahyar H (2018) Compressed sensing in cyber physical social systems In: Principles of Modeling, 287–305.
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