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GEAM: A General and Event-Related Aspects Model for Twitter Event Detection

机译:GEAM:推特事件检测的一般和事件相关的方面模型

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Event detection on Twitter has become a promising research direction due to Twitter's popularity, up-to-date feature, free writing style and so on. Unfortunately, it's a challenge to analyze Twitter dataset for event detection, since the informal expressions of short messages comprise many abbreviations, Internet buzzwords, spelling mistakes, meaningless contents etc. Previous techniques proposed for Twitter event detection mainly focus on clustering bursty words related to the events, while ignoring that these words may not be easily interpreted to clear event descriptions. In this paper, we propose a General and Event-related Aspects Model (GEAM), a new topic model for event detection from Twitter that associates General topics and Event-related Aspects with events. We then introduce a collapsed Gibbs sampling algorithm to estimate the word distributions of General topics and Event-related Aspects in GEAM. Our experiments based on over 7 million tweets demonstrate that GEAM outperforms the state-of-the-art topic model in terms of both Precision and DERate (measuring Duplicated Events Rate detected). Particularly, GEAM can get better event representation by providing a 4-tuple (Time, Locations, Entities, Keywords) structure of the detected events. We show that GEAM not only can be used to effectively detect events but also can be used to analyze event trends.
机译:在Twitter事件检测已成为一个有前途的研究方向,由于Twitter的普及,跟上时代的特征,自由的写作风格等。不幸的是,分析Twitter的数据集事件检测是一个挑战,因为短信的正规表达式包含了许多缩写,网络流行语,拼写错误的,毫无意义的内容等以前的技术提出了Twitter的事件检测主要集中在聚类相关的突发话事件,而忽略了这些话可能不容易被解释为明确的事件描述。在本文中,我们提出了一个通用和事件相关的方面模型(GEAM),用于事件检测新的主题模型从Twitter是同伙一般话题和事件与事件相关的方面。然后,我们介绍一个倒塌吉布斯采样算法来估算GEAM的总主题和事件相关的方面字分布。基于超过700万的鸣叫我们的实验表明,优于GEAM国家的最先进的主题模型,在精度和减额(测量重复的活动速率检测)的条款。特别是,GEAM可以通过提供一个四元组检测到的事件(时间,地点,实体,关键词)结构得到更好的事件表示。我们发现,GEAM不仅可以用来有效地检测事件,但也可以用来分析事件趋势。

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