Online influence maximization in non-stationary Social Networks

Yixin Bao, Xiaoke Wang, Zhi Wang, Chuan Wu, F. Lau
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引用次数: 20

Abstract

Social networks have been popular platforms for information propagation. An important use case is viral marketing: given a promotion budget, an advertiser can choose some influential users as the seed set and provide them free or discounted sample products; in this way, the advertiser hopes to increase the popularity of the product in the users' friend circles by the world-of-mouth effect, and thus maximizes the number of users that information of the production can reach. There has been a body of literature studying the influence maximization problem. Nevertheless, the existing studies mostly investigate the problem on a one-off basis, assuming fixed known influence probabilities among users, or the knowledge of the exact social network topology. In practice, the social network topology and the influence probabilities are typically unknown to the advertiser, which can be varying over time, i.e., in cases of newly established, strengthened or weakened social ties. In this paper, we focus on a dynamic non-stationary social network and design a randomized algorithm, RSB, based on multi-armed bandit optimization, to maximize influence propagation over time. The algorithm produces a sequence of online decisions and calibrates its explore-exploit strategy utilizing outcomes of previous decisions. It is rigorously proven to achieve an upper-bounded regret in reward and applicable to large-scale social networks. Practical effectiveness of the algorithm is evaluated using real-world datasets, which demonstrates that our algorithm outperforms previous stationary methods under non-stationary conditions.
非平稳社交网络中的在线影响力最大化
社交网络已经成为流行的信息传播平台。一个重要的用例是病毒式营销:给定推广预算,广告商可以选择一些有影响力的用户作为种子集,并向他们提供免费或打折的样品产品;通过这种方式,广告主希望通过口碑效应来提高产品在用户朋友圈中的知名度,从而使产品信息所能达到的用户数量最大化。已有大量文献对影响最大化问题进行了研究。然而,现有的研究大多是在一次性的基础上调查这个问题,假设用户之间已知的固定影响概率,或者知道确切的社交网络拓扑结构。在实践中,社会网络拓扑结构和影响概率通常是广告商所不知道的,它们可能随着时间而变化,即在新建立、加强或削弱社会关系的情况下。本文以动态非平稳社交网络为研究对象,设计了一种基于多臂强盗优化的随机算法RSB,以最大化影响随时间的传播。该算法产生一系列在线决策,并利用先前决策的结果校准其探索-利用策略。严格证明了该方法可以实现奖励的上界后悔,适用于大规模的社会网络。使用实际数据集对算法的实际有效性进行了评估,这表明我们的算法在非平稳条件下优于以前的平稳方法。
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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