Partitioning Well-Clustered Graphs: Spectral Clustering Works!

Richard Peng, He Sun, Luca Zanetti
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引用次数: 90

Abstract

In this paper we study variants of the widely used spectral clustering that partitions a graph into $k$ clusters by (1) embedding the vertices of a graph into a low-dimensional space using the bottom eigenvectors of the Laplacian matrix and (2) grouping the embedded points into $k$ clusters via $k$-means algorithms. We show that, for a wide class of graphs, spectral clustering gives a good approximation of the optimal clustering. While this approach was proposed in the early 1990s and has comprehensive applications, prior to our work similar results were known only for graphs generated from stochastic models. We also give a nearly linear time algorithm for partitioning well-clustered graphs based on computing a matrix exponential and approximate nearest neighbor data structures.
划分聚类良好的图:谱聚类工作!
在本文中,我们研究了广泛使用的谱聚类的变体,该聚类通过(1)使用拉普拉斯矩阵的底部特征向量将图的顶点嵌入到低维空间中,(2)通过$k$均值算法将嵌入的点分组到$k$聚类中。我们表明,对于一类广泛的图,谱聚类给出了一个很好的近似最优聚类。虽然这种方法是在20世纪90年代初提出的,并且具有广泛的应用,但在我们的工作之前,只有从随机模型生成的图形才知道类似的结果。我们还给出了一种基于矩阵指数计算和近似最近邻数据结构的近线性时间算法来划分聚类良好的图。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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