Analyzing patterns of information cascades based on users' influence and posting behaviors

Geerajit Rattanaritnont, Masashi Toyoda, M. Kitsuregawa
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引用次数: 10

Abstract

Nowadays people can share useful information on social networking sites such as Facebook and Twitter. The information is spread over the networks when it is forwarded or copied repeatedly from friends to friends. This phenomenon is so called "information cascade", and has been studied long time since it sometimes has an impact on the real world. Various social activities tends to have different ways of cascade on the social networks. Our focus in this study is on characterizing the cascade patterns according to users' influence and posting behaviors in various topics. The cascade patterns could be useful for various organizations to consider the strategy of public relations activities. We explore four measures which are cascade ratio, tweet ratio, time of tweet, and exposure curve. Our results show that hashtags in different topics have different cascade patterns in term of these measures. However, some hashtags even in the same topic have different cascade patterns. We discover that such kind of hidden relationship between topics can be surprisingly revealed by using only our four measures rather than considering tweet contents. Finally, our results also show that cascade ratio and time of tweet are the most effective measures to distinguish cascade patterns in different topics.
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基于用户影响力和发帖行为分析信息级联模式
如今,人们可以在Facebook和Twitter等社交网站上分享有用的信息。当信息在朋友之间反复转发或复制时,信息就会在网络上传播。这种现象被称为“信息级联”,由于它有时会对现实世界产生影响,人们对它的研究已经很长时间了。不同的社交活动在社交网络上往往有不同的级联方式。本研究的重点是根据用户在不同主题中的影响力和发帖行为来描述级联模式。级联模式可用于各种组织考虑公共关系活动的战略。我们探讨了级联比、推文比、推文时间和曝光曲线四个指标。我们的研究结果表明,就这些指标而言,不同主题的标签具有不同的级联模式。然而,即使在同一个主题中,一些标签也有不同的级联模式。我们发现,话题之间的这种隐藏关系可以通过使用我们的四个指标而不是考虑tweet内容而令人惊讶地揭示出来。最后,我们的研究结果还表明,级联比率和tweet时间是区分不同主题级联模式的最有效指标。
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