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A New K-Shell Decomposition Method for Identifying Influential Spreaders of Epidemics on Community Networks 被引量:2

A New K-Shell Decomposition Method for Identifying Influential Spreaders of Epidemics on Community Networks
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摘要 An efficient method for the identification of influential spreaders that could be used to control epidemics within populations would be of considerable importance. Generally, populations are characterized by its community structures and by the heterogeneous distributions of out-leaving links among nodes bridging over communities. A new method for community networks capable of identifying influential spreaders that accelerate the spread of disease is here proposed. In this method, influential spreaders serve as target nodes. This is based on the idea that, in k-shell decomposition method,out-leaving links and inner links are processed separately. The method was used on empirical networks constructed from online social networks, and results indicated that this method is more accurate. Its effectiveness stems from the patterns of connectivity among neighbors, and it successfully identified the important nodes. In addition, the performance of the method remained robust even when there were errors in the structure of the network. An efficient method for the identification of influential spreaders that could be used to control epidemics within populations would be of considerable importance. Generally, populations are characterized by its community structures and by the heterogeneous distributions of out-leaving links among nodes bridging over communities. A new method for community networks capable of identifying influential spreaders that accelerate the spread of disease is here proposed. In this method, influential spreaders serve as target nodes. This is based on the idea that, in k-shell decomposition method,out-leaving links and inner links are processed separately. The method was used on empirical networks constructed from online social networks, and results indicated that this method is more accurate. Its effectiveness stems from the patterns of connectivity among neighbors, and it successfully identified the important nodes. In addition, the performance of the method remained robust even when there were errors in the structure of the network.
作者 Kai GONG Li KANG
出处 《Journal of Systems Science and Information》 CSCD 2018年第4期366-375,共10页 系统科学与信息学报(英文)
基金 Supported by Fundamental Research Funds for the Central Universities(JBK170133) Natural Science Foundation of Sichuan Province of China(17ZB0434) Ministry of Education of Humanities and Social Science Foundation of China(11XJCZH002)
关键词 complex networks community structure k-shell decomposition influential spreaders complex networks community structure k-shell decomposition influential spreaders
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