Content-centric flow mining for influence analysis in social streams

Karthik Subbian, C. Aggarwal, J. Srivastava
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引用次数: 38

Abstract

The problem of discovering information flow trends and influencers in social networks has become increasingly relevant both because of the increasing amount of content available from online networks in the form of social streams, and because of its relevance as a tool for content trends analysis. An important part of this analysis is to determine the key patterns of flow and corresponding influencers in the underlying network. Almost all the work on influence analysis has focused on fixed models of the network structure, and edge-based transmission between nodes. In this paper, we propose a fully content-centered model of flow analysis in social network streams, in which the analysis is based on actual content transmissions in the network, rather than a static model of transmission on the edges. First, we introduce the problem of information flow mining in social streams, and then propose a novel algorithm InFlowMine to discover the information flow patterns in the network. We then leverage this approach to determine the key influencers in the network. Our approach is flexible, since it can also determine topic-specific influencers. We experimentally show the effectiveness and efficiency of our model.
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以内容为中心的流挖掘,用于社交流中的影响分析
发现社交网络中的信息流趋势和影响者的问题已经变得越来越重要,因为在线网络中以社交流的形式提供的内容越来越多,而且因为它作为内容趋势分析工具的相关性。这种分析的一个重要部分是确定流量的关键模式和潜在网络中相应的影响者。几乎所有的影响分析工作都集中在网络结构的固定模型和节点之间基于边缘的传输上。在本文中,我们提出了一个完全以内容为中心的社交网络流分析模型,其中分析基于网络中实际的内容传播,而不是基于边缘的静态传播模型。首先,我们介绍了社交流中的信息流挖掘问题,然后提出了一种新的算法InFlowMine来发现网络中的信息流模式。然后,我们利用这种方法来确定网络中的关键影响者。我们的方法是灵活的,因为它还可以确定特定主题的影响者。实验证明了该模型的有效性和高效性。
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