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A survey of recent methods on deriving topics from Twitter: algorithm to evaluation

机译:从Twitter推导主题的最新方法调查:评估算法

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摘要

In recent years, studies related to topic derivation in Twitter have gained a lot of interest from businesses and academics. The interconnection between users and information has made social media, especially Twitter, an ultimate platform for propagation of information about events in real time. Many applications require topic derivation from this social media platform. These include, for example, disaster management, outbreak detection, situation awareness, surveillance, and market analysis. Deriving topics from Twitter is challenging due to the short content of the individual posts. The environment itself is also highly dynamic. This paper presents a review of recent methods proposed to derive topics from social media platform from algorithms to evaluations. With regard to algorithms, we classify them based on the features they exploit, such as content, social interactions, and temporal aspects. In terms of evaluations, we discuss the datasets and metrics generally used to evaluate the methods. Finally, we highlight the gaps in the research this far and the problems that remain to be addressed.
机译:近年来,Twitter主题推导有关的研究已经获得了许多业务和学者的兴趣。用户和信息之间的互连已经使社交媒体,特别是Twitter,是实时传播事件信息的终极平台。许多应用程序需要来自此社交媒体平台的主题派生。这些包括,例如,灾害管理,爆发检测,情况意识,监测和市场分析。由于个别帖子的内容短,推导来自Twitter的主题是挑战。环境本身也是高度动态的。本文介绍了最近提出的方法从社交媒体平台从算法到评估的算法。关于算法,我们根据他们利用的特征对它们进行分类,例如内容,社交交互和时间方面。在评估方面,我们讨论通常用于评估方法的数据集和度量标准。最后,我们突出了这一研究的差距以及仍有待解决的问题。

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