Genetic Algorithms on Trace Groups
نویسنده
چکیده
We describe an implementation of a genetic algorithm on the Vershik groups and apply it to the restricted double coset search problem. We obtain a method applicable to a wide range of problems and give results which indicate good behaviour of the genetic algorithm and so hint at the presence of a new deterministic solution.
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