Graph Sparsification by Approximate Matrix Multiplication

CoRR(2023)

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摘要
Graphs arising in statistical problems, signal processing, large networks, combinatorial optimization, and data analysis are often dense, which causes both computational and storage bottlenecks. One way of \textit{sparsifying} a \textit{weighted} graph, while sharing the same vertices as the original graph but reducing the number of edges, is through \textit{spectral sparsification}. We study this problem through the perspective of RandNLA. Specifically, we utilize randomized matrix multiplication to give a clean and simple analysis of how sampling according to edge weights gives a spectral approximation to graph Laplacians. Through the $CR$-MM algorithm, we attain a simple and computationally efficient sparsifier whose resulting Laplacian estimate is unbiased and of minimum variance. Furthermore, we define a new notion of \textit{additive spectral sparsifiers}, which has not been considered in the literature.
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关键词
approximate matrix,combinatorial optimization,computational storage bottlenecks,CR-MM algorithm,data analysis,graph sparsification,Laplacian estimate,matrix multiplication,RandNLA,signal processing,spectral approximation,spectral sparsification,statistical problems
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