2012 IEEE Conference on High Performance Extreme Computing 2012
DOI: 10.1109/hpec.2012.6408677
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Benchmarking parallel eigen decomposition for residuals analysis of very large graphs

Abstract: Abstract-Graph analysis is used in many domains, from the social sciences to physics and engineering. The computational driver for one important class of graph analysis algorithms is the computation of leading eigenvectors of matrix representations of a graph. This paper explores the computational implications of performing an eigen decomposition of a directed graph's symmetrized modularity matrix using commodity cluster hardware and freely available eigensolver software, for graphs with 1 million to 1 billion… Show more

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