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Discovering User Interest on Twitter with a Modified Author-Topic Model

机译:使用修改后的作者主题模型在Twitter上发现用户兴趣

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This paper focuses on the problem of discovering users' topics of interest on Twitter. While previous efforts in modeling users' topics of interest on Twitter have focused on building a "bag-of-words" profile for each user based on his tweets, they overlooked the fact that Twitter users usually publish noisy posts about their lives or create conversation with their friends, which do not relate to their topics of interest. In this paper, we propose a novel framework to address this problem by introducing a modified author-topic model named twitter-user model. For each single tweet, our model uses a latent variable to indicate whether it is related to its author's interest. Experiments on a large dataset we crawled using Twitter API demonstrate that our model outperforms traditional methods in discovering user interest on Twitter.
机译:本文着重于在Twitter上发现用户感兴趣的主题的问题。尽管先前在Twitter上对用户感兴趣的主题进行建模的工作都集中在根据每个用户的推文为每个用户构建“单词袋”配置文件,但他们忽略了Twitter用户通常发布有关其生活的嘈杂帖子或进行对话的事实。与他们的朋友,与他们感兴趣的主题无关。在本文中,我们提出了一个新颖的框架来解决这个问题,方法是引入一个名为twitter-user model的修改后的作者主题模型。对于每条推文,我们的模型都使用一个潜在变量来表明其是否与作者的兴趣有关。对我们使用Twitter API爬网的大型数据集进行的实验表明,在发现Twitter上的用户兴趣方面,我们的模型优于传统方法。

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