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A reversed node ranking approach for influence maximization in social networks

机译:影响社交网络中最大化的逆向节点排名方法

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摘要

Influence maximization, i.e. to maximize the influence spread in a social network by finding a group of influential nodes as small as possible, has been studied widely in recent years. Many methods have been developed based on either explicit Monte Carlo simulation or scoring systems, among which the former perform well yet are very time-consuming while the latter ones are efficient but sensitive to different spreading models. In this paper, we propose a novel influence maximization algorithm in social networks, named Reversed Node Ranking (RNR). It exploits the reversed rank information of a node and the effects of its neighbours upon this node to estimate its influence power, and then iteratively selects the top node as a seed node once the ranking reaches stable. Besides, we also present two optimization strategies to tackle the rich-club phenomenon. Experiments on both Independent Cascade (IC) model and Weighted Cascade (WC) model show that our proposed RNR method exhibits excellent performance and outperforms other state-of-the-arts. As a by-product, our work also reveals that the IC model is more sensitive to the rich-club phenomenon than the WC model.
机译:影响最大化,即通过找到尽可能小的有影响力的节点来最大限度地提高社交网络中的影响,近年来一直在研究。已经基于明确的蒙特卡罗模拟或得分系统开发了许多方法,其中前者表现良好尚未耗时,而后者对不同的扩散模型有效但敏感。在本文中,我们提出了一种新颖的社交网络影响最大化算法,命名为反向节点排名(RNR)。它利用节点的反转等级信息和其邻居对该节点的影响来估计其影响力,然后一旦排名达到稳定,迭代地选择顶部节点作为种子节点。此外,我们还提出了两种优化策略来解决富人的俱乐部现象。独立级联(IC)模型和加权级联(WC)模型的实验表明,我们所提出的RNR方法表现出出色的性能和优于其他最先进的。作为一个副产品,我们的工作还揭示了IC模型对富人俱乐部现象比WC模型更敏感。

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