Efficient Learning of Neural Networks with Evolutionary Algorithms

نویسندگان

  • Nils T. Siebel
  • Jochen Krause
  • Gerald Sommer
چکیده

In this article we present EANT2, a method that creates neural networks (NNs) by evolutionary reinforcement learning. The structure of NNs is developed using mutation operators, starting from a minimal structure. Their parameters are optimised using CMA-ES. EANT2 can create NNs that are very specialised; they achieve a very good performance while being relatively small. This can be seen in experiments where our method competes with a different one, called NEAT, to create networks that control a robot in a visual servoing scenario.

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تاریخ انتشار 2007