A Performance Guarantee for Spectral Clustering

IF 2.6 Q1 MATHEMATICS, APPLIED SIAM journal on mathematics of data science Pub Date : 2020-07-10 DOI:10.1137/20M1352193
M. Boedihardjo, Shaofeng Deng, T. Strohmer
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引用次数: 5

Abstract

The two-step spectral clustering method, which consists of the Laplacian eigenmap and a rounding step, is a widely used method for graph partitioning. It can be seen as a natural relaxation to the NP-hard minimum ratio cut problem. In this paper we study the central question: when is spectral clustering able to find the global solution to the minimum ratio cut problem? First we provide a condition that naturally depends on the intra- and inter-cluster connectivities of a given partition under which we may certify that this partition is the solution to the minimum ratio cut problem. Then we develop a deterministic two-to-infinity norm perturbation bound for the the invariant subspace of the graph Laplacian that corresponds to the $k$ smallest eigenvalues. Finally by combining these two results we give a condition under which spectral clustering is guaranteed to output the global solution to the minimum ratio cut problem, which serves as a performance guarantee for spectral clustering.
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谱聚类的性能保证
两步谱聚类方法是一种应用广泛的图划分方法,它由拉普拉斯特征映射和舍入步骤组成。这可以看作是NP-hard最小比值切割问题的自然松弛。本文研究的核心问题是:谱聚类何时能够找到最小比值分割问题的全局解?首先,我们提供了一个自然依赖于给定分区的簇内和簇间连通性的条件,在这个条件下,我们可以证明这个分区是最小比值切割问题的解。然后,我们为图拉普拉斯的不变子空间建立了一个确定性的2到无穷范数摄动界,它对应于k个最小特征值。最后结合这两个结果给出了谱聚类保证输出最小比值切割问题全局解的条件,为谱聚类的性能提供了保证。
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