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Towards Demarcation and Modeling of Small Sub-Communities/Groups in P2P Social Networks

机译:在P2P社交网络中小子社区/组的分界和建模

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In centralized virtual social networking platforms, models for sub-structures like sub-communities or groups such as Facebook's groups exist. We investigate in how far these declared groups are dense sub-networks in a study using declared groups in a German Facebook clone (StudiVZ) as an example. While many such groups are large and sparse ``pseudo´´-structures which should be seen as labels or tags for profile extension, the result of the study is that a substantial share of these declared groups (especially the smaller ones) have a high network density with respect to various measures of density. We conclude that these can be considered socially ``valid´´ models of sub-structures (groups, small sub-communities etc.). In a second line of thought we argue that decentralized / Peer-to-Peer Social Networking appears to be a very promising answer to the problem of many co-existing virtual social network platforms and the resulting problems of having to keep multiple identities and not being able to access the network overlapping the platform boundaries in a coherent manner. Both argumentations together imply that a suitable approach for modeling and demarcating sub-structures (e.g. sub-communities) in decentralized P2P social networking is necessary. We conclude by discussing candidate approaches for the problem.
机译:在集中的虚拟社交网络平台中,存在子结构的模型,如子社区或诸如Facebook的组等组。我们调查了这些宣布的群体在研究中是在研究中使用德国Facebook克隆(Studivz)中的宣称组的密集子网。作为一个例子。虽然许多这样的群体是大而稀疏的````````伪结构,但应该被视为简介扩展的标签或标签,这项研究结果是这些宣称的群体(特别是较小的群体)的实质性份额很高网络密度相对于各种密度测量。我们得出结论,这些可以被认为是社会上的“有效的子结构模型(组,小子社区等)。在第二次思想中,我们认为分散/点对点的社交网络似乎是对许多共存虚拟社交网络平台的问题的非常有希望的答案以及必须保持多个身份而不是保持多个身份的问题能够以连贯的方式访问网络边界重叠的网络。两个论点都暗示了一种适用于在分散的P2P社交网络中建模和划分的子结构(例如子群组织)的合适方法是必要的。我们通过讨论候选人的问题方法来结束。

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