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PSEISMIC: A personalized self-exciting point process model for predicting tweet popularity

机译:宣称:一种用于预测推文人气的个性化自我激动点过程模型

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Social networking websites allow users to create and share a variety of items. Big information cascades of post resharing can be generated because users of these sites reshare each other's posts with their friends and followers. In this work, we aim at predicting the final number of reshares for any given post. We build on the theory of self-exciting point processes to develop a statistical model, PSEISMIC, which leads to accurate predictions of popularity. Moreover, we perform cluster analysis to group all tweets so that the coefficient of memory kernel in PSEISMIC can be estimated for every cluster, rather than using the same memory kernel. Experiments conducted on a large-scale retweet dataset show that the proposed PSEISMIC model outperforms the state-of-the-art approach, SEISMIC in predicting the popularity of a given post.
机译:社交网络网站允许用户创建和共享各种项目。可以生成大型信息级联的帖子重新开始,因为这些网站的用户与他们的朋友和追随者一起重新掌握彼此的帖子。在这项工作中,我们的目标是预测任何给出的帖子的最终重构数量。我们建立在自我兴奋点流程的理论中,开发统计模型,尖叫,这导致准确的普及预测。此外,我们执行集群分析以对所有推文进行分组,以便可以为每个群集估计盲目中的内存系数,而不是使用相同的存储器内核。在大规模的转关数据集上进行的实验表明,所提出的尖峰模型优于最先进的方法,在预测给定帖子的普及中的地震。

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