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LMPP: A Large Margin Point Process Combining Reinforcement and Competition for Modeling Hashtag Popularity

机译:LMPP:一个大型保证点流程结合强化和竞争模拟夸张型流行

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Predicting the popularity dynamics of Twitter hashtags has a broad spectrum of applications. Existing works have primarily focused on modeling the popularity of individual tweets rather than the underlying hashtags. As a result, they fail to consider several realistic factors contributing to hashtag popularity. In this paper, we propose Large Margin Point Process (LMPP), a probabilistic framework that integrates hashtag-tweet influence and hashtaghashtag competitions, the two factors which play important roles in hashtag propagation. Furthermore, while considering the hashtag competitions, LMPP looks into the variations of popularity rankings of the competing hashtags across time. Extensive experiments on seven real datasets demonstrate that LMPP outperforms existing popularity prediction approaches by a significant margin. Additionally, LMPP can accurately predict the relative rankings of competing hashtags, offering additional advantage over the state-of-the-art baselines.
机译:预测Twitter Hashtags的普及动态具有广泛的应用。现有的作品主要专注于建模各个推文的普及,而不是底层的哈希特拉格。结果,他们未考虑有若干逼真的因素,有助于具有哈希特的人气。在本文中,我们提出了大量保证点进程(LMPP),一个概率框架,它集成了Hashtag-Tweet的影响和Hashtaghashtag竞赛,这两个因素在Hashtag传播中发挥着重要作用。此外,在考虑到Hashtag比赛的同时,LMPP浏览了跨时段竞争的哈希标签的人气排名的变化。在七个真实数据集上的广泛实验表明,LMPP优于现有的普及预测方法,通过显着的保证金。此外,LMPP可以准确地预测竞争标签的相对排名,以满足最先进的基线提供额外的优势。

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