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Familiar Strangers detection in online social networks

机译:熟悉在线社交网络中的陌生人检测

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Online social networks and microblogging platforms have collected a huge number of users this last decade. On such platforms, traces of activities are automatically recorded and stored on remote servers. Open data deriving from these traces of interactions represent a major opportunity for social network analysis and mining. This leads to important challenges when trying to understand and analyse these large-scale networks better. Recently, many sociological concepts such as friendship, community, trust and reputation have been transposed and integrated into online social networks. The recent success of mobile social networks and the increasing number of nomadic users of online social networks can contribute to extending the scope of these concepts. In this paper, we transpose the notion of the Familiar Stranger, which is a sociological concept introduced by Stanley Milgram. We propose a framework particularly adapted to online platforms that allows this concept to be defined. Various application fields may be considered: entertainment, services, homeland security, etc. To perform the detection task, we address the concept of familiarity based on spatio-temporal and attribute similarities. The paper ends with a case study of the well-known microblogging platform Twitter.
机译:在线社交网络和微博平台在过去十年中收集了大量的用户。在此类平台上,活动的痕迹自动录制并存储在远程服务器上。从这些交互痕迹的开放数据代表了社交网络分析和挖掘的主要机会。当试图了解和分析这些大规模网络时,这会导致重要挑战。最近,许多社会学概念,如友谊,社区,信任和声誉,已经转移并融入在线社交网络。最近移动社交网络的成功和在线社交网络的越来越多的游牧民族用户可以促进这些概念的范围。在本文中,我们讲述了熟悉的陌生人的概念,这是Stanley Milgram引入的社会学概念。我们提出了一个框架,特别适用于在线平台,允许定义该概念。可以考虑各种应用领域:娱乐,服务,国土安全等,以执行检测任务,我们根据时空和属性相似性解决熟悉度的概念。本文以众所周知的微博平台推特进行结束。

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