Neural architectures optimization and Genetic algorithms

@inproceedings{Ettaouil2009NeuralAO,
  title={Neural architectures optimization and Genetic algorithms},
  author={Mohamed Ettaouil and Youssef Ghanou},
  year={2009}
}
The artificial neural networks (ANN) have proven their efficiency in several applications: pattern recognition, voice and classification problems. The training stage is very important in the ANN’s performance. The selection of the architecture of a neural network suitable to solve a given problem is one of the most important aspects of neural network research. The choice of the hidden layers number and the values of weights has a large impact on the convergence of the training algorithm. In… CONTINUE READING
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