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Influence Maximization by Link Activation in Social Networks

机译:通过在社交网络中的链接激活来影响最大化

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The propagation of innovations in social networks has been widely studied recently. Previous research mostly focuses on either maximizing the influence by identifying a set of initial adopters, or minimizing the influence by link blocking under a certain diffusion model. In our case, we address an influence maximization problem considering the link activation under the Independent Cascade model. For this problem, we propose an approximate solution based on the computation of a cost-degree coefficient for selecting links to be activated. Simulations performed on a real network show that our algorithm performs well.
机译:最近在社交网络中的创新传播已被广泛研究。以前的研究主要集中在通过识别一组初始采用者来最大化影响,或者通过在一定扩散模型下最小化链路阻断的影响。在我们的情况下,考虑到独立级联模型下的链路激活,我们解决了影响最大化问题。对于这个问题,我们提出了一种基于计算要激活的链路的成本度系数的计算的近似解决方案。在真实网络上执行的模拟表明我们的算法表现良好。

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