Multi-Scale Spectral Decomposition of Massive Graphs
Si, Si, Shin, Donghyuk, Dhillon, Inderjit S., Parlett, Beresford N.
–Neural Information Processing Systems
Computing the $k$ dominant eigenvalues and eigenvectors of massive graphs is a key operation in numerous machine learning applications; however, popular solvers suffer from slow convergence, especially when $k$ is reasonably large. In this paper, we propose and analyze a novel multi-scale spectral decomposition method (MSEIGS), which first clusters the graph into smaller clusters whose spectral decomposition can be computed efficiently and independently. We show theoretically as well as empirically that the union of all cluster's subspaces has significant overlap with the dominant subspace of the original graph, provided that the graph is clustered appropriately. Thus, eigenvectors of the clusters serve as good initializations to a block Lanczos algorithm that is used to compute spectral decomposition of the original graph. We further use hierarchical clustering to speed up the computation and adopt a fast early termination strategy to compute quality approximations.
Neural Information Processing Systems
Feb-14-2020, 10:56:58 GMT
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