Evolutionary features and parameter optimization of spiking neural networks for unsupervised learning

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@InProceedings{Silva:2014:IJCNN,
  author =       "Marco Silva and Adriano Koshiyama and 
                 Marley Vellasco and Edson Cataldo",
  booktitle =    "International Joint Conference on Neural Networks
                 (IJCNN 2014)",
  title =        "Evolutionary features and parameter optimization of
                 spiking neural networks for unsupervised learning",
  year =         "2014",
  month =        jul,
  pages =        "2391--2398",
  keywords =     "genetic algorithms, genetic programming, SNN",
  DOI =          "doi:10.1109/IJCNN.2014.6889566",
  abstract =     "This paper introduces two new hybrid models for
                 clustering problems in which the input features and
                 parameters of a spiking neural network (SNN) are
                 optimised using evolutionary algorithms. We used two
                 novel evolutionary approaches, the quantum-inspired
                 evolutionary algorithm (QIEA) and the optimisation by
                 genetic programming (OGP) methods, to develop the
                 quantum binary-real evolving SNN (QbrSNN) and the SNN
                 optimised by genetic programming (SNN-OGP)
                 neuro-evolutionary models, respectively. The proposed
                 models are applied to 8 benchmark datasets, and a
                 significantly higher clustering accuracy compared to a
                 standard SNN without feature and parameter optimisation
                 is achieved with fewer iterations. When comparing
                 QbrSNN and SNN-OGP, the former performed slightly
                 better but at the expense of increased computational
                 effort.",
  notes =        "M. Silva, M.M.B.R. Vellasco, and A. Koshiyama are with
                 the Department of Electrical Engineering, Pontifical
                 Catholic University of Rio de Janeiro (PUC-Rio),
                 Brazil,

                 Also known as \cite{6889566}",
}

Genetic Programming entries for Marco Silva Adriano Soares Koshiyama Marley Maria Bernardes Rebuzzi Vellasco Edson Cataldo

Citations