Fast Spectral Clustering via the Nyström Method.

ALGORITHMIC LEARNING THEORY (ALT 2013)(2013)

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摘要
We propose and analyze a fast spectral clustering algorithm with computational complexity linear in the number of data points that is directly applicable to large-scale datasets. The algorithm combines two powerful techniques in machine learning: spectral clustering algorithms and Nystrom methods commonly used to obtain good quality low rank approximations of large matrices. The proposed algorithm applies the Nystrom approximation to the graph Laplacian to perform clustering. We provide theoretical analysis of the performance of the algorithm and show the error bound it achieves and we discuss the conditions under which the algorithm performance is comparable to spectral clustering with the original graph Laplacian. We also present empirical results.
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关键词
spectral clustering,Nystrom method,large-scale clustering,sampling,sparsity,performance guarantees,error bounds,unsupervised learning
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