Topology-aware virtual network embedding based on closeness centrality

被引:0
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作者
Zihou Wang
Yanni Han
Tao Lin
Yuemei Xu
Song Ci
Hui Tang
机构
[1] Chinese Academy of Sciences,High Performance Network Laboratory, Institute of Acoustics
[2] University of Nebraska-Lincoln,Department of Computer and Electronics Engineering
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关键词
network virtualization; virtual network embedding; complex networks; closeness centrality;
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摘要
Network virtualization aims to provide a way to overcome ossification of the Internet. However, making efficient use of substrate resources requires effective techniques for embedding virtual networks: mapping virtual nodes and virtual edges onto substrate networks. Previous research has presented several heuristic algorithms, which fail to consider that the attributes of the substrate topology and virtual networks affect the embedding process. In this paper, for the first time, we introduce complex network centrality analysis into the virtual network embedding, and propose virtual network embedding algorithms based on closeness centrality. Due to considering of the attributes of nodes and edges in the topology, our studies are more reasonable than existing work. In addition, with the guidance of topology quantitative evaluation, the proposed network embedding approach largely improves the network utilization efficiency and decreases the embedding complexity. We also investigate our algorithms on real network topologies (e.g., AT&T, DFN) and random network topologies. Experimental results demonstrate the usability and capability of the proposed approach.
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页码:446 / 457
页数:11
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