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Identifying multi-regime behaviors of memes in Twitter data

机译:识别Twitter数据中模因的多区域行为

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Recent work has studied Twitter's role in distributing information about specific events, in acting as a platform for political debate, and in facilitating social interaction. Despite this interesting body of work, to our knowledge, it is unclear how trending words are used in Twitter, and what is their lifecycle. In this work, we investigate statistical models of the dynamics of word/phrase use in Twitter over time. We identify four base behaviors, derived from the autocorrelation functions of the frequency of word/phrase use. We then observe drift among these base behaviors in our sampled word/phrases over multiple weeks. To the best of our knowledge, this is the first time a hybrid statistical model using Markov processes and ARIMA sub-models have been used to explain the occurrence of certain n-grams within the linguistic space of Twitter topics. The ultimate objective of this work is to develop a hierarchical model for the behavior of word/phrase occurrence within Twitter. The model supposes that words/phrase dynamics move from one regime to another as various exogenous forces act on the population of users. This paper takes the first steps in illustrating that these regimes exist and shows some of the dynamics of regime change.
机译:最近的工作研究了Twitter在分发有关特定事件的信息,充当政治辩论的平台以及促进社会互动方面的作用。尽管有很多有趣的工作,但据我们所知,目前尚不清楚Twitter中如何使用流行词,以及它们的生命周期是什么。在这项工作中,我们调查了Twitter中单词/短语使用的动态变化的统计模型。我们从单词/短语使用频率的自相关函数中识别出四个基本行为。然后,我们会在多个星期的采样词/短语中观察到这些基本行为之间的漂移。据我们所知,这是首次使用马尔可夫过程和ARIMA子模型的混合统计模型来解释Twitter主题的语言空间中某些n-gram的出现。这项工作的最终目的是为Twitter内的单词/短语出现行为开发一个层次模型。该模型假设随着各种外在力量作用于用户群体,单词/短语动态会从一种状态转移到另一种状态。本文采取了第一步来说明这些制度的存在,并展示了制度变化的一些动力。

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