SF-GRASS: Solver-Free Graph Spectral Sparsification

International Conference on Computer Aided Design
Published: Nov 2, 2020
Abstract
Recent spectral graph sparsification techniques have shown promising performance in accelerating many numerical and graph algorithms, such as iterative methods for solving large sparse matrices, spectral partitioning of undirected graphs, vectorless verification of power/thermal grids, representation learning of large graphs, etc. However, prior spectral graph sparsification methods rely on fast Laplacian matrix solvers that are usually...
Paper Details
Title
SF-GRASS: Solver-Free Graph Spectral Sparsification
Published Date
Nov 2, 2020
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