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Other techniches as simulated annealing require less resources, both, in time and memory. In the specific case of simulated annealing, you work only with an element using mutation as unique operator. For SA, memory is not a problem, normally. Calculation time is conditioned, obviously, by the nature of the problem. GA are more flexible, but SA is a good ...


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Genetic Algorithms mimic the process of natural selection in order to "evolve" a solution to a difficult optimization problem. Generally, the algorithm works by first generating some random "individuals" (ie solutions to the problem you're trying to solve) and computing their "fitness" with a fitness function. More fit individuals are then selected to ...


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You can try GeneticSharp. It has all classic GA operations, like selection, crossover, mutation, reinsertion and termination. It's very extensible, you can define your own chromosomes, fitness function, population generation strategy and all cited operations above too. It can be used in many kind of apps, like C# libraries and Unity 3D games, there is ...


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There are many ways to perform selection and crossover in a Genetic Algorithm but generally, if you're using tournament selection you're best to select as many individuals as your population and have them produce the same number of offspring. There are a number of ways to produce the same number of offspring as parents but, as an example, if performing a ...



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