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计算机系统应用英文版:2017,26(7):263-268
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加权无标度网络病毒传播和局部免疫策略研究
(武夷学院 实验室管理中心, 武夷山 354300)
Research on the Local Immunization Strategy of Virus Spreading in Weighted Scale-Free Networks
(Laboratory Management Center, Wuyi University, Wuyishan 354300, China)
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Received:October 13, 2016    Revised:November 28, 2016
中文摘要: 为了进一步描述现实生活中复杂网络的病毒传播问题,改进加权无标度网络模型的传统构造方法,考虑流量带宽和个体抵抗力两个重要因子,利用平均场理论模拟仿真病毒传播过程,对实验数据进行分析,验证该模型的有效性.现实生活中往往只能了解复杂网络的局部拓扑信息,传统病毒免疫策略大多基于全局拓扑信息,在仅了解局部信息的前提下,提出加权无标度网络中基于局部最优的病毒免疫策略,通过动态模拟病毒传播的免疫仿真实验,与随机免疫策略和目标免疫策略对病毒传播影响进行比较,验证局部最优免疫策略的有效性.
Abstract:In order to further describe the virus propagation of real-life complex networks, this paper improves the traditional construction methods of weighted scale-free networks model which considers two key factors:flow bandwidth and individual resistance. Using mean-field theory to simulate the process of the virus transmission, this article analyses the experimental data and verifies the validity of the new model. Most real-life complex networks are known to us with only the local topology information and the traditional virus immunization strategies are based on global network topology information. In condition of knowing local topology information, this paper proposes the immunization strategy of virus spreading based on the local optimum in weighted scale-free networks. Compared with the random immunization strategy and target immunization strategy about the efficiency of virus spreading in weighted scale-free networks, the local optimum immunization strategy is verified to be valid through the dynamic simulation of virus propagation.
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基金项目:福建省教育厅基金(JK2012056)
引用文本:
刘瑞军.加权无标度网络病毒传播和局部免疫策略研究.计算机系统应用,2017,26(7):263-268
LIU Rui-Jun.Research on the Local Immunization Strategy of Virus Spreading in Weighted Scale-Free Networks.COMPUTER SYSTEMS APPLICATIONS,2017,26(7):263-268