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User-Tweet Interaction Model and Social Users Interactions for Tweet Contextualization

机译:用于推文上下文化的用户推文交互模型和社交用户交互

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In the current era, microblogging sites have completely changed the manner in which people communicate and share information. They give users the ability to communicate, interact, create conversations with each other and share information in real time about events, natural disasters, news, etc. On Twitter, users post messages called tweets. Tweets are short messages that do not exceed 140 characters. Due to this limitation, an individual tweet it's rarely self-content. However, users cannot effectively understand or consume information. In order, to make tweets understandable to a reader, it is therefore necessary to know their context. In fact, on Twitter, context can be derived from users interactions, content streams and friendship. Given that there are rich user interactions on Twitter. In this paper, we propose an approach for tweet contextualization task which combines different types of signals from social users interactions to provide automatically information that explains the tweet. To evaluate our approach, we construct a reference summary by asking assessors to manually select the most informative tweets as a summary. Our experimental results based on this editorial data set offers interesting results and ensure that context summaries contain adequate correlating information with the given tweet.
机译:在当前时代,微博网站已经完全改变了人们交流和共享信息的方式。它们使用户能够相互交流,交互,创建对话并实时共享有关事件,自然灾害,新闻等的信息。在Twitter上,用户发布称为推文的消息。推文是不超过140个字符的短消息。由于此限制,个人发推文很少会自我满足。但是,用户无法有效地理解或消费信息。为了使推文对读者易于理解,因此有必要了解其上下文。实际上,在Twitter上,上下文可以源自用户的交互,内容流和友谊。鉴于Twitter上存在丰富的用户交互。在本文中,我们提出了一种推文上下文任务的方法,该方法结合了来自社交用户交互的不同类型的信号,以自动提供解释该推文的信息。为了评估我们的方法,我们通过要求评估者手动选择信息最丰富的推文作为摘要来构建参考摘要。基于此社论数据集的实验结果提供了有趣的结果,并确保上下文摘要包含与给定推文相关的足够的相关信息。

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