Natural Coding: A More Efficient Representation for Evolutionary Learning

@inproceedings{Girldez2003NaturalCA,
  title={Natural Coding: A More Efficient Representation for Evolutionary Learning},
  author={Ra{\'u}l Gir{\'a}ldez and Jes{\'u}s S. Aguilar-Ruiz and Jos{\'e} Crist{\'o}bal Riquelme Santos},
  booktitle={GECCO},
  year={2003}
}
To select an adequate coding is one of the main problems in applications based on Evolutionary Algorithms. Many codings have been proposed to represent the search space for obtaining decision rules. A suitable representation of the individuals of the genetic population can reduce the search space, so that the learning process is accelerated by decreasing the number of necessary generations to complete the task. In this sense, natural coding achieves such reduction and improves the results… CONTINUE READING

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