多重社会理论的网络相似性

M. Berlingerio, Danai Koutra, Tina Eliassi-Rad, C. Faloutsos
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引用次数: 82

摘要

给定一组k个网络,可能有不同的大小,节点或链接中没有重叠,我们如何快速评估它们之间的相似性?类似地,是否存在一套社会理论,当由少量描述性的数字特征表示时,有效地充当网络的“签名”?拥有这样的签名将使大量的图挖掘和社会网络分析任务成为可能,包括聚类、离群点检测、可视化等。为了解决上述问题,我们提出了一种新颖、有效、可扩展的方法,称为net明码。我们的方法有以下可取之处:(a)它得到了一套社会理论的支持。(b)它给出了大小不变的相似性分数。(c)它是可扩展的,在图签名提取的链接数量上是线性的。在对来自不同领域的大量合成和真实网络进行的广泛实验中,net明喻的表现优于基准竞争对手。我们还演示了我们的方法如何实现几个挖掘任务,如聚类、可视化、不连续检测、网络迁移学习和跨网络的重新识别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Network similarity via multiple social theories
Given a set of k networks, possibly with different sizes and no overlaps in nodes or links, how can we quickly assess similarity between them? Analogously, are there a set of social theories which, when represented by a small number of descriptive, numerical features, effectively serve as a “signature” for the network? Having such signatures will enable a wealth of graph mining and social network analysis tasks, including clustering, outlier detection, visualization, etc. We propose a novel, effective, and scalable method, called NetSimile, for solving the above problem. Our approach has the following desirable properties: (a) It is supported by a set of social theories. (b) It gives similarity scores that are size-invariant. (c) It is scalable, being linear on the number of links for graph signature extraction. In extensive experiments on numerous synthetic and real networks from disparate domains, NetSimile outperforms baseline competitors. We also demonstrate how our approach enables several mining tasks such as clustering, visualization, discontinuity detection, network transfer learning, and re-identification across networks.
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