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Overlapping community identification approach in online social networks

机译:在线社交网络中的重叠社区识别方法

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摘要

Online social networks have become embedded in our everyday lives so much that we cannot ignore it. One specific area of increased interest in social networks is that of detecting overlapping communities: instead of considering online communities as autonomous islands acting independently, communities are more like sprawling cities bleeding into each other. The assumption that online communities behave more like complex networks creates new challenges, specifically in the area of size and complexity. Algorithms for detecting these overlapping communities need to be fast and accurate. This research proposes method for detecting non-overlapping communities by using a CNM algorithm, which in turn allows us to extrapolate the overlapping networks. In addition, an improved index for closeness centrality is given to classify overlapping nodes. The methods used in this research demonstrate a high classification accuracy in detecting overlapping communities, with a time complexity of O(n(2)). (C) 2014 Elsevier B.V. All rights reserved.
机译:在线社交网络已经深深植根于我们的日常生活中,以至于我们无法忽视它。对社交网络越来越感兴趣的一个特定领域是检测重叠的社区:与将在线社区视为独立的自治岛无关,社区更像是散布在彼此之间的城市。在线社区的行为更像复杂网络的假设提出了新的挑战,特别是在规模和复杂性方面。用于检测这些重叠社区的算法需要快速而准确。这项研究提出了一种使用CNM算法检测非重叠社区的方法,这反过来又使我们能够推断出重叠网络。另外,给出了一种改进的紧密度中心指数来对重叠节点进行分类。本研究中使用的方法证明了在检测重叠社区方面具有很高的分类精度,时间复杂度为O(n(2))。 (C)2014 Elsevier B.V.保留所有权利。

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