A fast and effective algorithm for influence maximization in large-scale independent cascade networks

Paolo Scarabaggio, Raffaele Carli, M. Dotoli
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Abstract

A characteristic of social networks is the ability to quickly spread information between a large group of people. The widespread use of online social networks (e.g., Facebook) increases the interest of researchers on how influence propagates through these networks. One of the most important research issues in this field is the so-called influence maximization problem, which essentially consists in selecting the most influential users (i.e., those who are able to maximize the spread of influence through the social network). Due to its practical importance in various applications (e.g., viral marketing), such a problem has been studied in several variants. Nevertheless, the current open challenge in the resolution of the influence maximization problem still concerns achieving a good trade-off between accuracy and computational time. In this context, based on independent cascade modeling of social networks, we propose a novel low-complexity and highly accurate algorithm for selecting an initial group of nodes to maximize the spread of influence in large-scale networks. In particular, the key idea consists in iteratively removing the overlap of influence spread induced by different seed nodes. The application to several numerical experiments based on real datasets proves that the proposed algorithm effectively finds practical near-optimal solutions of the addressed influence maximization problem in a computationally efficient fashion. Finally, the comparison with the state of the art algorithms demonstrates that in large scale scenarios the proposed approach shows higher performance in terms of influence spread and running time.
大型独立级联网络中影响最大化的快速有效算法
社交网络的一个特点是能够在一大群人之间快速传播信息。在线社交网络(如Facebook)的广泛使用增加了研究人员对影响如何通过这些网络传播的兴趣。该领域最重要的研究问题之一是所谓的影响力最大化问题,其本质是选择最具影响力的用户(即能够通过社交网络最大化影响力传播的用户)。由于它在各种应用中的实际重要性(例如,病毒式营销),这个问题已经在几个变体中进行了研究。然而,目前解决影响最大化问题的公开挑战仍然涉及在精度和计算时间之间实现良好的权衡。在此背景下,基于社交网络的独立级联建模,我们提出了一种新的低复杂性和高度精确的算法,用于选择初始节点组,以最大化大规模网络中的影响力传播。其中,关键思想在于迭代去除不同种子节点引起的影响传播重叠。在实际数据集上的数值实验表明,该算法能有效地找到所处理的影响最大化问题的实际近最优解,计算效率高。最后,与先进算法的比较表明,在大规模场景中,所提出的方法在影响传播和运行时间方面表现出更高的性能。
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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