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首页> 外文期刊>IEEE Transactions on Systems, Man, and Cybernetics >SociRank: Identifying and Ranking Prevalent News Topics Using Social Media Factors
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SociRank: Identifying and Ranking Prevalent News Topics Using Social Media Factors

机译:SociRank:使用社交媒体因素识别和排名流行新闻主题

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摘要

Mass media sources, specifically the news media, have traditionally informed us of daily events. In modern times, social media services such as Twitter provide an enormous amount of user-generated data, which have great potential to contain informative news-related content. For these resources to be useful, we must find a way to filter noise and only capture the content that, based on its similarity to the news media, is considered valuable. However, even after noise is removed, information overload may still exist in the remaining data—hence, it is convenient to prioritize it for consumption. To achieve prioritization, information must be ranked in order of estimated importance considering three factors. First, the temporal prevalence of a particular topic in the news media is a factor of importance, and can be considered the media focus (MF) of a topic. Second, the temporal prevalence of the topic in social media indicates its user attention (UA). Last, the interaction between the social media users who mention this topic indicates the strength of the community discussing it, and can be regarded as the user interaction (UI) toward the topic. We propose an unsupervised framework—SociRank—which identifies news topics prevalent in both social media and the news media, and then ranks them by relevance using their degrees of MF, UA, and UI. Our experiments show that SociRank improves the quality and variety of automatically identified news topics.
机译:传统上,大众媒体(特别是新闻媒体)向我们通报了日常事件。在现代,诸如Twitter之类的社交媒体服务提供了大量用户生成的数据,这些数据具有包含与新闻有关的内容的巨大潜力。为了使这些资源有用,我们必须找到一种方法来过滤噪声并仅捕获基于与新闻媒体的相似性而被认为有价值的内容。但是,即使在消除噪声后,剩余数据中仍可能存在信息超载,因此,将其优先使用是很方便的。为了实现优先级排序,必须考虑三个因素,按照估计的重要性对信息进行排序。首先,新闻媒体中特定主题的时间流行是重要的因素,可以被视为主题的媒体焦点(MF)。其次,主题在社交媒体中的时间流行表明其用户关注度(UA)。最后,提及此主题的社交媒体用户之间的交互指示了讨论该主题的社区的实力,可以视为针对该主题的用户交互(UI)。我们提出了一个无监督框架SociRank,该框架可识别社交媒体和新闻媒体中普遍存在的新闻主题,然后使用它们的MF,UA和UI程度按相关性对它们进行排名。我们的实验表明,SociRank提高了自动识别新闻主题的质量和种类。

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