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Geometric Characterisation of Graphs

机译:图的几何特征

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In this paper, we explore whether the geometric properties of the point distribution obtained by embedding the nodes of a graph on a manifold can be used for the purposes of graph clustering. The embedding is performed using the heat-kernel of the graph, computed by exponentiating the Laplacian eigen-system. By equating the spectral heat kernel and its Gaussian form we are able to approximate the Euclidean distance between nodes on the manifold. The difference between the geodesic and Euclidean distances can be used to compute the sectional curvatures associated with the edges of the graph. To characterise the manifold on which the graph resides, we use the normalised histogram of sectional curvatures. By performing PCA on long-vectors representing the histogram bin-contents, we construct a pattern space for sets of graphs. We apply the technique to images from the COIL database, and demonstrate that it leads to well defined graph clusters.
机译:在本文中,我们探讨了通过将图形的节点嵌入歧管上而获得的点分布的几何特性可以用于图形聚类的目的。使用曲线图的热核来执行嵌入,通过以通过以指数引入LAPLACIAN EIGEN系统来计算。通过等同于光谱热核及其高斯形式,我们能够近似歧视上的节点之间的欧几里德距离。测地和欧几里德距离之间的差异可用于计算与图形边缘相关联的截面曲率。要对图形所在的歧管进行表征,我们使用截面曲率的标准化直方图。通过在代表直方图箱内容的长向量上执行PCA,我们构建用于图组的图案空间。我们将技术应用于来自线圈数据库的图像,并证明它导致定义明确的图形集群。

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