Please use this identifier to cite or link to this item: http://hdl.handle.net/10553/120674
Title: Sparse Matrices Reordering using Evolutionary Algorithms: A Seeded Approach
Authors: Greiner Sánchez, David Juan 
Montero García, Gustavo 
Winter Althaus, Gabriel 
UNESCO Clasification: 12 Matemáticas
Keywords: Evolutionary Algorithms
Sparse Matrices
Reordering
Issue Date: 2006
Conference: ERCOFTAC 2006 
Abstract: In this work, it is introduced a methodology for solving the problem of sparse matrices reordering using evolutionary algorithms, which can be handled as a combinatorial NP-class problem. Evolutionary algorithms are more flexible techniques that allow this reordering considering location and also values of the non zero entries of the matrix. Different fitness functions are proposed and studied comparatively. Moreover, the obtained results are compared with a classical procedure, the inverse Cuthill-McKee ordering. Finally, a seeded approach that combines both strategies, whose results outperform the previous ones, is introduced
URI: http://hdl.handle.net/10553/120674
Source: ERCOFTAC 2006: Design Optimisation, Methods and Applications
Appears in Collections:Actas de congresos
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