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Subspace based network community detection using sparse linear coding

机译:基于子空间的网络社区检测使用稀疏线性编码

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Information mining from networks by identifying communities is an important problem across a number of research fields including social science, biology, physics, and medicine. Most existing community detection algorithms are graph theoretic and lack the ability to detect accurate community boundaries if the ratio of intra-community to inter-community links is low. Also, algorithms based on modularity maximization may fail to resolve communities smaller than a specific size if the community size varies significantly. We propose a fundamentally different community detection algorithm based on the fact that each network community spans a different subspace in the geodesic space. Therefore, each node can only be efficiently represented as a linear combination of nodes spanning the same subspace (Fig. 1). To make the process of community detection more robust, we use sparse linear coding with ??1 norm constraint. In order to find a community label for each node, sparse spectral clustering algorithm is used. The proposed community detection technique is compared with more than ten state of the art methods on two benchmark networks (with known clusters) using normalized mutual information criterion. Our proposed algorithm outperformed existing methods with a significant margin on both benchmark networks.
机译:通过识别社区挖掘网络的信息是许多研究领域的重要问题,包括社会科学,生物学,物理和医学。大多数现有的社区检测算法是图形理论,如果社区内部与社区间链路的比率低,则缺乏检测准确的社区边界的能力。此外,如果社区大小显着变化,基于模块化最大化的算法可能无法解决小于特定尺寸的社区。我们提出了一种基本上不同的社区检测算法,基于每个网络社区跨越地理空间中的不同子空间。因此,每个节点只能有效地表示为跨越相同子空间的节点的线性组合(图1)。要使社区检测过程更加强大,我们使用稀疏线性编码与1规范约束。为了找到每个节点的社区标签,使用稀疏频谱聚类算法。使用标准化的相互信息标准将所提出的社区检测技术与第两个基准网络(具有已知群集)的最新技术进行比较。我们所提出的算法优于现有的现有方法,在两个基准网络上具有显着的余量。

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