Hypergraph-partitioning-based decomposition for parallel sparse-matrix vector multiplication
Date
1999Source Title
IEEE Transactions on Parallel and Distributed Systems
Print ISSN
1045-9219
Electronic ISSN
1558-2183
Publisher
IEEE
Volume
10
Issue
7
Pages
673 - 693
Language
English
Type
ArticleItem Usage Stats
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Abstract
In this work, we show that the standard graph-partitioning-based decomposition of sparse matrices does not reflect the actual communication volume requirement for parallel matrix-vector multiplication. We propose two computational hypergraph models which avoid this crucial deficiency of the graph model. The proposed models reduce the decomposition problem to the well-known hypergraph partitioning problem. The recently proposed successful multilevel framework is exploited to develop a multilevel hypergraph partitioning tool PaToH for the experimental verification of our proposed hypergraph models. Experimental results on a wide range of realistic sparse test matrices confirm the validity of the proposed hypergraph models. In the decomposition of the test matrices, the hypergraph models using PaToH and hMeTiS result in up to 63 percent less communication volume (30 to 38 percent less on the average) than the graph model using MeTiS, while PaToH is only 1.3-2.3 times slower than MeTiS on the average.
Keywords
Computational hypergraph modelsHypergraph partitioning
Hypergraph partitioning based decomposition
Parallel sparce matrix vector multiplication
Sparse matrices
Computational methods
Computer simulation
Graph theory
Matrix algebra
Vectors
Parallel processing systems