Fast, Scalable, and Context-Sensitive Detection of Trending Topics in Microblog Post Streams

N. Pervin, Fang Fang, Anindya Datta, K. Dutta, Debra E. VanderMeer
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引用次数: 34

Abstract

Social networks, such as Twitter, can quickly and broadly disseminate news and memes across both real-world events and cultural trends. Such networks are often the best sources of up-to-the-minute information, and are therefore of considerable commercial and consumer interest. The trending topics that appear first on these networks represent an answer to the age-old query “what are people talking about?” Given the incredible volume of posts (on the order of 45,000 or more per minute), and the vast number of stories about which users are posting at any given time, it is a formidable problem to extract trending stories in real time. In this article, we describe a method and implementation for extracting trending topics from a high-velocity real-time stream of microblog posts. We describe our approach and implementation, and a set of experimental results that show that our system can accurately find “hot” stories from high-rate Twitter-scale text streams.
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快速、可扩展、上下文敏感的微博帖子流趋势话题检测
像Twitter这样的社交网络可以快速而广泛地传播现实世界事件和文化趋势中的新闻和模因。这种网络通常是最新信息的最佳来源,因此具有相当大的商业和消费者利益。最先出现在这些网络上的热门话题代表了一个古老问题的答案:“人们在谈论什么?”考虑到令人难以置信的帖子量(每分钟大约45,000条或更多),以及用户在任何给定时间发布的大量故事,实时提取热门故事是一个艰巨的问题。在本文中,我们描述了一种从高速实时微博帖子流中提取趋势主题的方法和实现。我们描述了我们的方法和实现,以及一组实验结果,表明我们的系统可以准确地从高速率twitter规模的文本流中找到“热门”故事。
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