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Mapping communities in large virtual social networks: Using Twitter data to find the Indie Mac community

机译:在大型虚拟社交网络中映射社区:使用Twitter数据查找Indie Mac社区

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This paper describes a multi-method approach to delineate a “real world” community of practice from a large N dataset derived from the social networking site Twitter. The starting point is previous qualitative research of a virtual community of independent (“indie”) developers who create software for Apple''s Macintosh and iPhone platforms. Indie developers have been active on Twitter from an early stage on and they use Twitter to sustain interactions between peers, exchange technical information and for viral “echo chamber” marketing. The publicly available Twitter API is used to mine a network consisting of several million edges, which is sized down to a large network containing roughly 1 million edges through several pruning methods. The fast greedy algorithm is then used to detect subgraphs within this large network. Triangulation with qualitative data proves that the fast greedy algorithm is able to distill meaningful communities from a large, noisy and ill-delineated network. The accuracy of this approach gives rise to the discussion of the value for businesses and market research, since it offers opportunities to identify and monitor target audiences at a finely grained level. However, we should be wary of the serious consequences with regard to privacy and ethics. The proposed multi-method approach allows micro level inferences from a macro dataset of which the individual Twitter user might be completely unaware. The results could have consequences for the anonymity of key persons behind the scenes of social and political movements or any other communities whose members are active on Twitter or other social networks.
机译:本文描述了一种多方法方法,用于从社交网站Twitter推导出的大量N数据集中描绘“现实世界”实践社区。起点是对独立(“独立”)开发人员的虚拟社区进行的先前定性研究,这些开发人员为Apple的Macintosh和iPhone平台创建软件。独立开发者从早期开始就活跃在Twitter上,他们使用Twitter来维持同级之间的交互,交换技术信息以及进行病毒式的“回声室”营销。公开可用的Twitter API用于挖掘由数百万个边缘组成的网络,该网络通过几种修剪方法缩小到包含约100万个边缘的大型网络。然后,快速贪心算法用于检测此大型网络中的子图。定性数据的三角剖分证明,快速贪婪算法能够从大型,嘈杂且不良描绘的网络中提取有意义的社区。这种方法的准确性引起了对企业和市场研究价值的讨论,因为它提供了在细粒度层次上识别和监视目标受众的机会。但是,我们应该警惕隐私和道德方面的严重后果。所提出的多方法方法允许从单个Twitter用户可能完全不知道的宏数据集中进行微观推断。结果可能会对社交网络和政治运动背后的关键人物或任何其他成员活跃在Twitter或其他社交网络上的社区的匿名性产生影响。

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