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Mining the Twitter Stream: Unravel Events, Interactions, and Communities in Real-Time

机译:挖掘Twitter流:实时了解事件,交互和社区

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Under the topic of event detection, this paper reviews and discuss different mining and visualization techniques that could provide good insights about how to detect real life events in the twitter stream: a lightweight event detection using wavelet signal analysis of hash tag occurrences in the twitter public stream, description of detected events using a Latent Dirichlet Allocation topic inference model based on Gibbs Sampling. A visualization of the live twitter feed with diffusion networks constructed using user relations like the 'Retweet', '@reply' and '@user' mentions, and large scale dynamic community detection allow an effective detection and tracking of the communities in the public stream. Paper is a compilation of author's previously published work in the areas of mining and visualizing the twitter stream.
机译:在事件检测的主题下,本文回顾并讨论了各种挖掘和可视化技术,这些技术可以为如何检测Twitter流中的现实事件提供很好的见解:使用Twitter公众对hash标签发生情况的小波信号分析进行轻量级事件检测。流,使用基于Gibbs采样的潜在Dirichlet分配主题推断模型描述检测到的事件。通过使用“ Retweet”,“ @ reply”和“ @user”提及的用户关系构建的传播网络,对实时Twitter提要进行可视化,并进行大规模动态社区检测,从而可以有效地检测和跟踪公共流中的社区。本文是作者先前在Twitter流的挖掘和可视化领域中发表的工作的汇编。

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