Abstract Model-based non-Gaussian interest topic distribution for user retweeting in social networks
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Model-based non-Gaussian interest topic distribution for user retweeting in social networks

机译:用于社交网络中用户转发的基于模型的非高斯兴趣主题分布

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AbstractRetweeting behavior is critical to dissect information diffusion, innovation propagation and events bursting in networks. However, because of the various contents of tweets, recent work mainly focuses on the influential relationship while unable to derive different pathways of information diffusion. Therefore, our work tries to reveal the pattern by tracking retweeting behavior through user interest and categories of tweets. The key for modeling user interest is modeling topic distribution of tweets, which have non-Gaussian characteristics (e.g., power law distribution), thus we present theLatent Topicsof userInterest(LTI) model which make full use of the non-Gaussian distribution of topics among tweets to uncover user interest and then predict users’ possible actions. After dividing users intoconceitusers andaltruismusers by whether they have definite selection when retweeting, and categorizing tweets intorepeated hot tweetsandnovel hot tweetsby whether its topics always occur in the training set, we demonstrates a pattern –the conceit users promotes the diffusion of repeated hot tweets, whereas the altruism users expands the diffusion of novel hot tweets, and the pattern is evaluated by the correlation coefficient between types of users and tweets, which is greater than .61 for 10 and 100 million tweets of Weibo22weibo.com, the most popular short text online social networking service in China.and Twitter with respect to 70 and 58 thousand users over a period of one month.
机译: 摘要 转发行为对于剖析网络中的信息传播,创新传播和突发事件至关重要。然而,由于推文内容的多样性,最近的工作主要集中在影响力关系上,而无法得出不同的信息传播途径。因此,我们的工作试图通过追踪用户兴趣和推文类别的转发行为来揭示这种模式。建模用户兴趣的关键是对具有非高斯特征(例如幂律分布)的tweet主题分布进行建模,因此我们提出了用户潜在主题 > Interest (LTI)模型,该模型充分利用了推文之间主题的非高斯分布,以发现用户兴趣并预测用户的可能动作。根据用户在转发时是否具有确定的选择将用户分为 conceit 用户和 altruism 用户,并将推文归类为重复热门推文新热门推文通过其主题是否始终出现在训练集中,我们演示了一种模式– 自负用户促进了传播重复热推的数量,而利他主义的用户扩展了新热推的传播,并且通过用户和推类型之间的相关系数来评估模式,对于10和1亿,该系数大于.61微博的推文 2 2 weibo.com,是中国最受欢迎的短文本在线社交网络服务。 和Twitter,分别针对一个网站上的70和58万用户

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