Scalable Influence Maximization in Social Networks under the Linear Threshold Model

Wei Chen, Yifei Yuan, Li Zhang
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引用次数: 878

Abstract

Influence maximization is the problem of finding a small set of most influential nodes in a social network so that their aggregated influence in the network is maximized. In this paper, we study influence maximization in the linear threshold model, one of the important models formalizing the behavior of influence propagation in social networks. We first show that computing exact influence in general networks in the linear threshold model is #P-hard, which closes an open problem left in the seminal work on influence maximization by Kempe, Kleinberg, and Tardos, 2003. As a contrast, we show that computing influence in directed a cyclic graphs (DAGs) can be done in time linear to the size of the graphs. Based on the fast computation in DAGs, we propose the first scalable influence maximization algorithm tailored for the linear threshold model. We conduct extensive simulations to show that our algorithm is scalable to networks with millions of nodes and edges, is orders of magnitude faster than the greedy approximation algorithm proposed by Kempe et al. and its optimized versions, and performs consistently among the best algorithms while other heuristic algorithms not design specifically for the linear threshold model have unstable performances on different real-world networks.
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线性阈值模型下社交网络可扩展影响最大化
影响力最大化是指在社交网络中找到一小部分最有影响力的节点,使其在网络中的总影响力最大化的问题。本文研究了影响最大化的线性阈值模型,这是形式化社交网络中影响传播行为的重要模型之一。我们首先表明,在线性阈值模型中计算一般网络中的确切影响是#P-hard,这关闭了Kempe, Kleinberg和Tardos, 2003年在影响最大化方面的开创性工作中留下的开放问题。作为对比,我们证明了有向循环图(dag)中的计算影响可以与图的大小呈时间线性关系。基于dag快速计算的特点,提出了首个针对线性阈值模型的可扩展影响最大化算法。我们进行了大量的模拟,以表明我们的算法可扩展到具有数百万个节点和边的网络,比Kempe等人提出的贪婪近似算法及其优化版本快几个数量级,并且在最佳算法中表现一致,而其他非专门为线性阈值模型设计的启发式算法在不同的现实世界网络中表现不稳定。
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