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Mining topical influencers based on the multi-relational network in micro-blogging sites

机译:在微博站点中基于多关系网络挖掘主题影响者

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摘要

In micro-blogging contexts such as Twitter, the number of content producers can easily reach tens of thousands, and many users can participate in discussion of any given topic. While many users can introduce diversity, as not all users are equally influential, it makes it challenging to identify the true influencers, who are generally rated as being interesting and authoritative on a given topic. In this study, the influence of users is measured by performing random walks of the multi-relational data in micro-blogging: ret-weet, reply, reintroduce, and read. Due to the uncertainty of the reintroduce and read operations, a new method is proposed to determine the transition probabilities of uncertain relational networks. Moreover, we propose a method for performing the combined random walks for the multi-relational influence network, considering both the transition probabilities for intra- and inter-networking. Experiments were conducted on a real Twitter dataset containing about 260 000 users and 2.7 million tweets, and the results show that our method is more effective than TwitterRank and other methods used to discover influencers.
机译:在诸如Twitter之类的微博客环境中,内容生产者的数量可以轻松达到数万,并且许多用户可以参与任何给定主题的讨论。尽管许多用户可以引入多样性,但由于并非所有用户都具有同等影响力,因此要确定真正的影响者变得颇具挑战性,他们通常在给定主题上被认为是有趣且权威的。在这项研究中,通过在微博中执行多关系数据的随机游走来衡量用户的影响:转发,回复,重新引入和阅读。由于重新引入和读取操作的不确定性,提出了一种确定不确定关系网络转移概率的新方法。此外,考虑到内部和内部网络的转移概率,我们提出了一种用于多关系影响网络的组合随机游走方法。在包含约260,000个用户和270万条推文的真实Twitter数据集上进行了实验,结果表明,我们的方法比TwitterRank和其他用于发现影响者的方法更有效。

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