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Performance of a genetic algorithm for the graph partitioning problem
Authors:Keiko Kohmoto Kengo Katayama  Hiroyuki Narihisa
Affiliation:Department of Distribution Engineering Hiroshima National College of Maritime Technology, Hiroshima, Japan;Department of Information and Computer Engineering Okayama University of Science, Okayama, Japan
Abstract:The performance of the genetic algorithm (GA) for the graph partitioning problem (GPP) is investigated by comparison with standard heuristics on well-known benchmark graphs. In general, there is a case where a practical performance of a conventional genetic approach, which performs only simple operations without a local search strategy, is not sufficient. However, it is known that a combination of GA and local search can produce better solutions. From this practice, we incorporate a simple local search algorithm into the GA. In particular, the search ability of the GA is compared with standard heuristics such as multistart local search and simulated annealing, which use the same neighborhood structure of the simple local search, for solving the GPP. Experimental results show that the GA performs better than its competitors.
Keywords:Author Keywords: Graph partitioning   Genetic algorithm   Local search strategy   Multistart local search   Simulated annealing   Experimental comparison
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