具有竞争级联的签名网络中的社会影响计算与最大化

Ajitesh Srivastava, C. Chelmis, V. Prasanna
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引用次数: 23

摘要

通常在市场营销、政治活动和社交媒体中,两种相互竞争的产品或观点会在社交网络上传播。研究这种竞争级联场景中的社会影响,可以通过瞄准网络中最具“影响力”的节点,建立有效的策略,使一个过程的传播最大化。然而,之前的大部分工作都集中在无签名网络上,在这种网络中,个体以一定的概率接受邻居的意见。在现实生活中,个体之间的关系可以是积极的(如朋友或朋友的关系)或消极的(如“敌人”之间的联系)。根据社会理论,人们倾向于对朋友有相似的看法,而对敌人有相反的看法。在这项工作中,我们研究了签名网络上的竞争级联问题,这是一个相对未被探索的问题。特别地,我们研究了独立级联模型下签名网络中两个相互竞争的级联的渐进传播问题,并给出了一个近似解析解来计算任意时刻节点的感染概率。我们利用我们对签名网络中竞争级联问题的分析解决方案来开发影响最大化问题的启发式方法。与之前的工作不同,我们允许用两个级联的种群初始化种子集,最终目标是最大化一个级联的传播。我们在几个大规模的真实世界和合成网络上验证了我们的方法。我们的实验表明,我们的影响最大化启发式显著优于最先进的方法,特别是当网络由不信任关系主导时。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Social influence computation and maximization in signed networks with competing cascades
Often in marketing, political campaigns and social media, two competing products or opinions propagate over a social network. Studying social influence in such competing cascades scenarios enables building effective strategies for maximizing the propagation of one process by targeting the most "influential" nodes in the network. The majority of prior work however, focuses on unsigned networks where individuals adopt the opinion of their neighbors with certain probability. In real life, relationships between individuals can be positive (e.g., friend-of relationship) or negative (e.g. connection between "foes"). According to social theory, people tend to have similar opinions to their friends but opposite of their foes. In this work, we study the problem of competing cascades on signed networks, which has been relatively unexplored. Particularly, we study the progressive propagation of two competing cascades in a signed network under the Independent Cascade Model, and provide an approximate analytical solution to compute the probability of infection of a node at any given time. We leverage our analytical solution to the problem of competing cascades in signed networks to develop a heuristic for the influence maximization problem. Unlike prior work, we allow the seed-set to be initialized with populations of both cascades with the end goal of maximizing the spread of one cascade. We validate our approach on several large-scale real-world and synthetic networks. Our experiments demonstrate that our influence maximization heuristic significantly outperforms state-of-the-art methods, particularly when the network is dominated by distrust relationships.
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