Abstract
The real life provides a large range of problems, which cannot be solved in any traditional way. An efficient approach of solving them is to use genetic algorithms. Genetic algorithms represent a search method that can be used for both solving problems and modeling evolutionary systems. Genetic algorithms are implemented as a simulation in which a population of representations of candidate solutions to a problem evolves toward better solutions. All the traditional approaches are based on evolution only, while the proposed approach will try to integrate learning in the evolutionary process.
Cuvinte cheie
genetic algorithms
evolution
optimization
neural networks
learning