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Finding Near-Optimal Groups of Epidemic Spreaders in a Complex Network

机译:在复杂网络中寻找流行病传播者的近最佳群

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摘要

In this paper, we present algorithms to find near-optimal sets of epidemic spreaders in complex networks. We extend the notion of local-centrality, a centrality measure previously shown to correspond with a node's ability to spread an epidemic, to sets of nodes by introducing combinatorial local centrality. Though we prove that finding a set of nodes that maximizes this new measure is NP-hard, good approximations are available. We show that a strictly greedy approach obtains the best approximation ratio unless P = NP and then formulate a modified version of this approach that leverages qualities of the network to achieve a faster runtime while maintaining this theoretical guarantee. We perform an experimental evaluation on samples from several different network structures which demonstrate that our algorithm maximizes combinatorial local centrality and consistently chooses the most effective set of nodes to spread infection under the SIR model, relative to selecting the top nodes using many common centrality measures. We also demonstrate that the optimized algorithm we develop scales effectively.
机译:在本文中,我们提出了在复杂网络中寻找流行扩散器的最佳集合的算法。通过引入组合的局部中心性,我们将局部中心性的概念扩展到节点集,局部性中心性是先前显示的与节点传播流行病的能力相对应的中心性度量。尽管我们证明找到使该新度量最大化的节点集是NP难的,但可以使用良好的近似值。我们表明,除非P = NP,否则严格贪婪的方法将获得最佳逼近率,然后制定此方法的修改版本,以利用网络的质量来实现更快的运行时间,同时保持这一理论上的保证。我们对来自几种不同网络结构的样本进行了实验评估,结果表明,相对于使用许多常见中心度度量方法选择顶部节点,我们的算法可最大化组合局部中心度,并始终根据SIR模型选择最有效的节点集来传播感染。我们还证明了我们开发的优化算法可以有效地扩展规模。

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