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Behavior analysis methods for Twitter users based on transitions in posting activities

机译:基于发布活动过渡的Twitter用户行为分析方法

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Purpose - The purpose of this paper is to activate latent users posts by modeling user behaviors by a transition of clusters that represent particular posting activities. Twitter has rapidly spread and become an easy and convenient microblog that enables users to exchange instant text messages called tweets. There are so many latent users whose posting activities have decreased. Design/methodology/approach - Under this model, two kinds of time-series analysis methods are proposed to clarify the lifecycles of Twitter users. In the first one, all users belong to a cluster consisting of several features at individual time slots and move among the clusters in a time series. In the second one, the posting activities of Twitter users are analyzed by the amount of tweets that vary with time. Findings - This sophisticated evaluation using a large actual tweet-set demonstrated the proposed methods effectiveness. The authors found a big difference in the state transition diagrams between long- and short-term users. Analysis of short-term users introduces effective knowledge for encouraging continued Twitter use. Originality/value - An the efficient user behavior model, which describes transitions of posting activities, is proposed. Two kinds of time longitudinal analysis method are evaluated using a large amount of actual tweets.
机译:目的-本文的目的是通过对代表特定发布活动的集群进行过渡来对用户行为进行建模,从而激活潜在的用户发布。 Twitter已迅速普及,并成为一种轻松便捷的微博,使用户可以交换称为tweets的即时文本消息。有太多潜在用户的发布活动减少了。设计/方法/方法-在此模型下,提出了两种时间序列分析方法来阐明Twitter用户的生命周期。在第一个中,所有用户都属于一个群集,该群集由各个时隙上的多个功能组成,并按时间序列在群集之间移动。在第二篇文章中,通过随时间变化的推文数量来分析Twitter用户的发布活动。结果-使用大型实际推文集进行的这种复杂评估证明了所提出方法的有效性。作者发现,长期和短期用户之间的状态转换图存在很大差异。对短期用户的分析引入了有效的知识,以鼓励继续使用Twitter。原创性/价值-提出了一种有效的用户行为模型,该模型描述了发布活动的转变。使用大量实际推文评估了两种时间纵向分析方法。

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