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首页> 外文期刊>ifac papersonline >Structural Analysis of Spreading Processes from Ego-Nets * * This work was supported in part by the NSF under grants CNS- 1302222 and IIS-1447470.
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Structural Analysis of Spreading Processes from Ego-Nets * * This work was supported in part by the NSF under grants CNS- 1302222 and IIS-1447470.

机译:Structural Analysis of Spread Processes from Ego-Nets * * 这项工作得到了 NSF CNS-1302222 和 IIS-1447470 的部分支持。

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Abstract: We study how the behavior of viral spreading processes is influenced by local structural properties of the network over which they propagate. For a wide variety of spreading processes, the largest eigenvalue of the adjacency matrix of the network plays a key role on their global dynamical behavior. For many real-world large-scale networks, it is unfeasible to exactly retrieve the complete network structure to compute its largest eigenvalue. Instead, one usually have access to myopic, egocentric views of the network structure, also called egonets . In this paper, we propose a mathematical framework, based on algebraic graph theory and convex optimization, to study how local structural properties of the network constrain the interval of possible values in which the largest eigenvalue must lie. Based on this framework, we present a computationally efficient approach to find this interval from a collection of egonets. Our numerical simulations show that, for several social and communication networks, local structural properties of the network strongly constrain the location of the largest eigenvalue and the resulting spreading dynamics. From a practical point of view, our results can be used to dictate immunization strategies to tame the spreading of a virus, or to design network topologies that facilitate the spreading of information virally.
机译:摘要: 我们研究了病毒传播过程的行为如何受到其传播网络的局部结构特性的影响。对于各种各样的扩展过程,网络邻接矩阵的最大特征值对其全局动态行为起着关键作用。对于许多现实世界的大规模网络来说,精确检索完整的网络结构来计算其最大特征值是不可行的。取而代之的是,人们通常可以访问网络结构的短视,以自我为中心的视图,也称为自我网络。在本文中,我们提出了一个基于代数图论和凸优化的数学框架,以研究网络的局部结构性质如何约束最大特征值必须所在的可能值区间。基于这个框架,我们提出了一种计算效率高的方法,可以从 egonet 的集合中找到这个区间。数值模拟表明,对于多个社会和通信网络,网络的局部结构特性强烈地约束了最大特征值的位置和由此产生的扩散动力学。从实际的角度来看,我们的研究结果可用于制定免疫策略以驯服病毒的传播,或设计有助于病毒式传播信息的网络拓扑。

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