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Groups make nodes powerful: Identifying influential nodes in social networks based on social conformity theory and community features

机译:群体使节点变得强大:基于社会整合理论和社区特征,识别社交网络中有影响力的节点

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Identifying a group of influential nodes in social networks help us understand the hierarchical structure of the network and make a better control the spread of information. Moreover, it can offer guidance in avoiding the breakdown of the power system and the Internet, identifying drug targets and essential proteins. Undoubtedly, most of the influence measures suffer the low resolution. The same score corresponds to multiple nodes. What's worse is that the effect of overlapping between nodes is not fully considered. It causes resource waste in node selection. The purpose of this paper is to identify a set of distributed nodes with the strong propagation ability. Inspired by the interplay between the individuals and groups from sociological and complex networks, we propose a node ranking method based on the social conformity theory and community feature based on VoteRank. This proposed method calculates the node influence capability from two points of view, one is the individual, the other is the group. From the point of the individual, it quantifies the attractive power of the nodes with the feature of their neighbors based on the theory of conformity. It can distinguish the nodes with the same degree and similar structure. From the other point, it measures the initiating power with the scale of the community and the relative location of the node. Furthermore, a node selection strategy based on information coverage and community tightness is proposed to solve the problem of overlapping. Finally, node attractive power, initiating power and the node selection strategy are combined to improve VoteRank. The experimental results on real-world networks show the effectiveness of our methods. The results also explains that the enormous energy from the groups makes the node powerful. (C) 2019 Elsevier Ltd. All rights reserved.
机译:识别社交网络中的一组有影响力的节点有助于我们了解网络的层次结构,并更好地控制信息的传播。此外,它可以为避免电力系统和互联网崩溃,确定药物靶标和必需蛋白质提供指导。毫无疑问,大多数影响措施都具有较低的分辨率。相同的分数对应于多个节点。更糟糕的是,没有充分考虑节点之间重叠的影响。这会导致节点选择中的资源浪费。本文的目的是确定一组具有强大传播能力的分布式节点。受社会和复杂网络中个人和群体之间相互作用的启发,我们提出了一种基于社会整合理论和基于VoteRank的社区特征的节点排名方法。该方法从两个角度来计算节点的影响能力,一个是个体,另一个是群体。从个体的角度出发,它基于一致性理论量化了具有邻居特征的节点的吸引力。它可以区分相同程度和相似结构的节点。另一方面,它根据社区的规模和节点的相对位置来衡量启动能力。此外,提出了一种基于信息覆盖度和社区紧密度的节点选择策略,以解决重叠问题。最后,将节点吸引力,发起能力和节点选择策略结合起来以提高VoteRank。实际网络上的实验结果表明了我们方法的有效性。结果还说明,来自各组的巨大能量使节点变得强大。 (C)2019 Elsevier Ltd.保留所有权利。

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