Influence Maximization Using User Connectivity Guarantee in Social Networks

Xiyu Qiao, Yuliang Ma, Yelie Yuan, Xiangmin Zhou
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Abstract

With the rapid development of social networks, the influence maximization problem has attracted more and more attention from academia and industry. Its aim is to find a set of nodes as seeds to spread the influence as widely as possible. However, most of the existing researches neglected the connectivity of seeds, which has effect on the process of information diffusion. In this paper, we propose a novel problem, connectivity guaranteed influence maximization, which suggests a fixed number of new links to the seed set with the aim of maximizing the influence of seed nodes while guaranteeing the connectivity of the induced subgraphs consisting of active nodes. To tackle this problem, we propose a Connectivity Guaranteed Influence Maximization (CGIM) algorithm based on user connec-tivity and link recommendation. Specifically, Jaccard coefficient is first used to calculate the influence between users. Then a Connectivity Guarantee based Link Addition (CGLA) algorithm is proposed to keep the connectivity of the induced sub graphs formed by all active nodes after influence propagation. Following that, an improved approximate influence maximization algorithm is proposed to maximize the influence by recommending a number of new links to the seed set. Experimental results on real social network datasets show that the proposed CGIM algorithm can maximize the influence of seed nodes while guarantee user connectivity. and has good performance and scalability.
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基于用户连通性保证的社交网络影响最大化
随着社交网络的快速发展,影响力最大化问题越来越受到学术界和业界的关注。其目的是找到一组节点作为种子,以尽可能广泛地传播影响。然而,现有的研究大多忽略了种子的连通性,而种子的连通性影响着信息的传播过程。在本文中,我们提出了一个新的问题,即连通性保证影响最大化,该问题建议在保证由活动节点组成的诱导子图的连通性的同时,为种子集设置固定数量的新链接,以最大化种子节点的影响。为了解决这个问题,我们提出了一种基于用户连通性和链接推荐的连接保证影响最大化(CGIM)算法。具体来说,首先使用Jaccard系数来计算用户之间的影响。然后提出了一种基于连通性保证的链路添加算法(CGLA),以保证影响传播后所有活动节点形成的诱导子图的连通性。然后,提出了一种改进的近似影响最大化算法,通过向种子集推荐一些新链接来最大化影响。在真实社交网络数据集上的实验结果表明,CGIM算法在保证用户连通性的同时,能够最大限度地发挥种子节点的影响。并具有良好的性能和可扩展性。
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