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Maximizing influence spread in modular social networks by optimal resource allocation

机译:通过优化资源分配来最大化模块化社交网络中的影响力传播

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摘要

Influence maximization in a social network is to target a given number of nodes in the network such that the expected number of activated nodes from these nodes is maximized. A social network usually exhibits some degree of modularity. Previous research efforts that made use of this topological property are restricted to random networks with two communities. In this paper, we firstly transform the influence maximization problem in a modular social network to an optimal resource allocation problem. We assume that the communities of the social network are disconnected. We then propose a recursive relation for finding such an optimal allocation. We prove that finding an optimal allocation in a modular social network is NP-hard and propose a new dynamic programming algorithm to solve the problem. We name our new algorithm OASNET (Optimal Allocation in a Social NETwork). We compare OASNET with the high degree heuristics, the single degree discount heuristics, and the degree discount heuristics on three real world datasets. Experimental results show that OASNET outperforms comparison heuristics significantly on the independent cascade model when the diffusion probability is greater than a certain threshold.
机译:社交网络中的影响力最大化是针对网络中给定数量的节点,以使来自这些节点的预期激活节点数达到最大化。社交网络通常表现出一定程度的模块化。先前利用这种拓扑特性的研究工作仅限于具有两个社区的随机网络。在本文中,我们首先将模块化社交网络中的影响最大化问题转化为最优资源分配问题。我们假设社交网络的社区是断开的。然后,我们提出了一种递归关系,以找到这种最佳分配。我们证明在模块化社交网络中寻找最优分配是NP难的,并提出了一种新的动态规划算法来解决该问题。我们将新算法命名为OASNET(社交网络中的最佳分配)。我们将OASNET与三个现实世界数据集上的高阶启发法,单度折扣启发法和度折扣启发法进行了比较。实验结果表明,当扩散概率大于一定阈值时,OASNET在独立级联模型上明显优于比较启发式算法。

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  • 来源
    《Expert Systems with Application》 |2011年第10期|p.13128-13135|共8页
  • 作者单位

    Department of Computer Science, University of Vermont, Vermont 05405, United States;

    Department of Computer Science, University of Vermont, Vermont 05405, United States,School of Computer Science and Information Engineering, Hefei University of Technology, Hefei 230009, China,Department of Computer Science, University of Vermont, Vermont 05405, United States;

    Department of Computer Science, University of Vermont, Vermont 05405, United States;

    College of Information Science and Technology, Drexel University, Pennsylvania 19104, United States;

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  • 原文格式 PDF
  • 正文语种 eng
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  • 关键词

    influence maximization modular social network optimal allocation;

    机译:影响力最大化模块化社交网络最优分配;

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