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Genetic algorithm and graph partitioning

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2 Author(s)
Thang Nguyen Bui ; Dept. of Comput. Sci., Pennsylvania State Univ., Middletown, PA, USA ; Byung Ro Moon

Hybrid genetic algorithms (GAs) for the graph partitioning problem are described. The algorithms include a fast local improvement heuristic. One of the novel features of these algorithms is the schema preprocessing phase that improves GAs' space searching capability, which in turn improves the performance of GAs. Experimental tests on graph problems with published solutions showed that the new genetic algorithms performed comparable to or better than the multistart Kernighan-Lin algorithm and the simulated annealing algorithm. Analyses of some special classes of graphs are also provided showing the usefulness of schema preprocessing and supporting the experimental results

Published in:
Computers, IEEE Transactions on  (Volume:45 ,  Issue: 7 )

Date of Publication: Jul 1996

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