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Spectral Clustering of Graphs

机译:图谱聚类

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In this paper we explore how to use spectral methods for embedding and clustering unweighted graphs. We use the leading eigenvectors of the graph adjacency matrix to define eigenmodes of the adjacency matrix. For each eigenmode, we compute vectors of spectral properties. These include the eigenmode perimeter, eigenmode volume, Cheeger number, inter-mode adjacency matrices and intermode edge-distance. We embed these vectors in a pattern-space using two contrasting approaches. The first of these involves performing principal or independent components analysis on the covariance matrix for the spectral pattern vectors. The second approach involves performing multidimensional scaling on the L2 norm for pairs of pattern vectors. We illustrate the utility of the embedding methods on neighbourhood graphs representing the arrangement of corner features in 2D images of 3D polyhedral objects.
机译:在本文中,我们探索了如何使用频谱方法来嵌入和聚类未加权图。我们使用图邻接矩阵的前导特征向量来定义邻接矩阵的本征模式。对于每个本征模,我们计算光谱特性的向量。这些包括本征模周长,本征模量,Cheeger数,模间邻接矩阵和模间边距。我们使用两种对比方法将这些向量嵌入模式空间。其中第一个涉及对光谱模式向量在协方差矩阵上执行主成分或独立成分分析。第二种方法涉及对L2范数对模式向量对执行多维缩放。我们在表示3D多面体对象的2D图像中拐角特征​​的排列的邻域图上说明了嵌入方法的实用性。

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