A Heuristic Algorithm Focusing on the Rich-Club Phenomenon for the Influence Maximization Problem in Social Networks

Zahra Aghaee, Hamid Ahmadi Beni, S. Kianian, M. Vahidipour
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引用次数: 15

Abstract

The strength of information diffusion on social networks depends on many factors, including the selected influential nodes. The problem of finding such nodes in the network is modeled by influence maximization problem, which faces two essential challenges: (1) inadequate selection of the seed nodes due to the lack of focus on the rich-club phenomenon and (2) high running time due to the lack of focus on pruning the graph nodes and localization. To solve these challenges, a computational localization-based RLIM algorithm is presented here to prevent the rich-club phenomenon. In this algorithm, the graph nodes are pruned based on the eigenvector centrality to reduce the computational overhead, and then the computations are performed locally using localization criteria. After that, influential nodes are selected by avoiding the rich-club phenomenon. In the RLIM algorithm, the seed nodes provided a better influence spread than the other algorithms. Experimental results on the synthetic and real-world datasets shows that the RLIM algorithm can verify the high effectiveness and efficiency than the comparable algorithms for an influence maximization problem.
社会网络中影响力最大化问题的富俱乐部现象启发式算法
信息在社交网络上的扩散强度取决于许多因素,包括所选择的影响节点。在网络中寻找这样的节点的问题是通过影响最大化问题来建模的,该问题面临两个基本挑战:(1)由于缺乏对富俱乐部现象的关注而导致种子节点的选择不足;(2)由于缺乏对图节点修剪和定位的关注而导致运行时间长。为了解决这些问题,本文提出了一种基于计算定位的RLIM算法来防止富俱乐部现象。该算法首先根据特征向量的中心性对图节点进行剪枝,减少计算量,然后根据定位准则进行局部计算。在此之后,通过避免富人俱乐部现象来选择有影响力的节点。在RLIM算法中,种子节点提供了比其他算法更好的影响传播。在综合数据集和实际数据集上的实验结果表明,RLIM算法在求解影响最大化问题时比同类算法具有更高的有效性和效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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