在线时间社区的建模形成

Isa Inuwa-Dutse
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引用次数: 4

摘要

当代社交媒体网络可以被视为对早期两步流动模式的突破,在这种模式中,有影响力的个人充当媒体和公众之间的媒介,以传播信息。今天的社交媒体平台使用户能够生成和消费在线内容。用户通过不同程度的互动不断参与和退出讨论,从而形成独特的在线社区。这些社区通常是基于元数据(如Twitter上的标签)或少数有影响力的用户触发的流行内容在高层形成的。这些在线社区往往不能反映真正的连通性,也缺乏传统社区的凝聚力。在这项研究中,我们调查了Twitter上时间社区的实时形成。我们的目标是定义高和低层次的连接,并揭示聚类内聚在时间基础上的大小。受现实生活中活动中心座位安排场景的启发,该方法旨在将用户聚集到不同且有凝聚力的在线时间社区中。社区的成员依赖于内在的tweet属性来定义作为交互网络基础的相似性。该方法可用于本地事件监控和基于小团体的营销等应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modelling Formation of Online Temporal Communities
Contemporary social media networks can be viewed as a break to the early two-step flow model in which influential individuals act as intermediaries between the media and the public for information diffusion. Today's social media platforms enable users to both generate and consume online contents. Users continuously engage and disengage in discussions with varying degrees of interaction leading to formation of distinct online communities. Such communities are often formed at high-level either based on metadata, such as hashtags on Twitter, or popular content triggered by few influential users. These online communities often do not reflect true connectivity and lack the cohesiveness of traditional communities. In this study, we investigate real-time formation of temporal communities on Twitter. We aim at defining both high and low levels connections and to reveal the magnitude of clustering cohesion on temporal basis. Inspired by a real-life event center sitting arrangement scenario, the proposed method aims to cluster users into distinct and cohesive online temporal communities. Membership to a community relies on intrinsic tweet properties to define similarity as the basis for interaction networks. The proposed method can be useful for local event monitoring and clique-based marketing among other applications.
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