Ego networks in Twitter: An experimental analysis

V. Arnaboldi, M. Conti, A. Passarella, F. Pezzoni
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引用次数: 49

Abstract

Online Social Networks are amongst the most important platforms for maintaining social relationships online, supporting content generation and exchange between users. They are therefore natural candidate to be the basis of future humancentric networks and data exchange systems, in addition to novel forms of Internet services exploiting the properties of human social relationships. Understanding the structural properties of OSN and how they are influenced by human behaviour is thus fundamental to design such human-centred systems. In this paper we analyse a real Twitter data set to investigate whether well known structures of human social networks identified in “offline” environments can also be identified in the social networks maintained by users on Twitter. According to the well known model proposed by Dunbar, offline social networks are formed of circles of relationships having different social characteristics (e.g., intimacy, contact frequency and size). These circles can be directly ascribed to cognitive constraints of human brain, that impose limits on the number of social relationships maintainable at different levels of emotional closeness. Our results indicate that a similar structure can also be found in the Twitter users' social networks. This suggests that the structure of social networks also in online environments are controlled by the same cognitive properties of human brain that operate offline.
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Twitter中的自我网络:一个实验分析
在线社交网络是维持在线社交关系的最重要平台之一,支持用户之间的内容生成和交换。因此,它们是未来以人为中心的网络和数据交换系统的自然候选基础,此外还有利用人类社会关系属性的新型互联网服务。因此,了解OSN的结构特性以及它们如何受到人类行为的影响是设计这种以人为中心的系统的基础。在本文中,我们分析了一个真实的Twitter数据集,以调查在“离线”环境中识别的已知人类社交网络结构是否也可以在Twitter用户维护的社交网络中识别。根据邓巴提出的著名模型,线下社交网络是由具有不同社会特征(如亲密度、联系频率和规模)的关系圈组成的。这些圈子可以直接归因于人类大脑的认知约束,这限制了在不同情感亲密程度上维持的社会关系的数量。我们的研究结果表明,在Twitter用户的社交网络中也可以发现类似的结构。这表明,在线环境中的社交网络结构也受到人类大脑在线下运作时相同的认知特性的控制。
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