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Bursty event detection from microblog: a distributed and incremental approach

机译:来自微博的突发事件检测:一种分布式和增量式方法

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摘要

As a new form of social media, microblogs (e.g., Twitter and Weibo) are playing an important role in people's daily life. With the rise in popularity and size of microblogs, there is a need for distributed approaches that can detect bursty event with low latency from the short-text data stream. In this paper, we propose a distributed and incremental temporal topic model for microblogs called Bursty Event dEtection (BEE+). BEE+ is able to detect bursty events from short-text dataset and model the temporal information. And BEE+ processes the post-stream incrementally to track the topic drifting of events over time. Therefore, the latent semantic indices are preserved from one time period to the next. In order to achieve real-time processing, we design a distributed execution framework based on Spark engine. To verify its ability to detect bursty event, we conduct experiments on a Weibo dataset of 6,360,125 posts. The results show that BEE+ can outperform the baselines for detecting the meaningful bursty events and track the topic drifting. Copyright © 2015 John Wiley & Sons, Ltd.
机译:作为一种新型的社交媒体,微博(例如Twitter和微博)在人们的日常生活中发挥着重要作用。随着微博的流行和规模的增长,需要一种分布式方法,该方法可以从短文本数据流中以低延迟检测突发事件。在本文中,我们为微博客提出了一种称为Bursty Event dEtection(BEE +)的分布式增量主题主题模型。 BEE +能够从短文本数据集中检测突发事件并为时间信息建模。 BEE +会逐步处理后流,以跟踪事件随时间变化的主题。因此,从一个时间段到下一时间段都保留了潜在的语义索引。为了实现实时处理,我们设计了一个基于Spark引擎的分布式执行框架。为了验证其检测突发事件的能力,我们对6,360,125个帖子的微博数据集进行了实验。结果表明,BEE +的性能优于基线,可检测出有意义的突发事件并跟踪主题漂移。版权所有©2015 John Wiley&Sons,Ltd.

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    Beihang University State Key Laboratory of Software Development Environment School of Computer Science and Engineering Beijing China;

    Beihang University State Key Laboratory of Software Development Environment School of Computer Science and Engineering Beijing China;

    Beihang University State Key Laboratory of Software Development Environment School of Computer Science and Engineering Beijing China;

    Beihang University State Key Laboratory of Software Development Environment School of Computer Science and Engineering Beijing China;

    Beihang University State Key Laboratory of Software Development Environment School of Computer Science and Engineering Beijing China;

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  • 原文格式 PDF
  • 正文语种 eng
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  • 关键词

    social network; event detection; temporal topic model; topic drifting;

    机译:社交网络;事件检测;时间主题模型;主题漂移;

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