微博网络中的信息传播

Chenyi Zhang, Jianling Sun, Ke Wang
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引用次数: 19

摘要

微博网络中的信息传播旨在识别一组种子用户,将目标信息传播给尽可能多的感兴趣的用户。该问题与传统的影响力最大化有两个主要的区别:具有内容丰富的目标消息进行传播,将网络中的每一个环节都视为某一主题的传播,并强调该传播在传播目标消息时的主题相关性。然而,在现实情况下,与链接相关的主题并没有显式表达,而是隐藏在之前通过该链接交换的微博中。本文提出了一种微博网络信息传播的主题感知解决方案。我们首先利用观察到的微博消息对网络的潜在主题结构进行建模。然后,我们提出了两种基于链接和目标消息之间的主题相关性来估计传播概率的方法。在估计传播概率后,采用影响最大化的标准贪婪算法寻找种子用户。这种方法是主题感知的,即目标消息根据其与网络中潜在主题结构的主题相关性找到其传播方式。在真实Twitter数据集上进行的实验表明,所提出的方法能够选择正确的种子用户。
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Information propagation in microblog networks
Information propagation in a microblog network aims to identify a set of seed users for propagating a target message to as many interested users as possible. This problem differs from the traditional influence maximization in two major ways: it has a content-rich target message for propagation and it treats each link in the network as communication on certain topics and emphasizes the topic relevance of such communication in propagating the target message. In realistic situations, however, the topics associated with a link are not explicitly expressed but are hidden in the microblogs previously exchanged through the link. In this paper, we present a topic-aware solution to information propagation in a microblog network. We first model the latent topic structure of the network using observed microblog messages published in the network. We then present two methods for estimating the propagation probability based on the topic relevance between a link and the target message. Once the propagation probability is estimated, we adopt the standard greedy algorithm for influence maximization to find seed users. This approach is topic-aware in that the target message finds its way of propagation according to its topic relevance to the latent topic structure in the network. Experiments conducted on real Twitter datasets suggest that the proposed methods are able to select right seed users.
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