Manuel Samuelides


Ontology type: schema:Person     


Person Info

NAME

Manuel

SURNAME

Samuelides

Publications in SciGraph latest 50 shown

  • 2011-02 Surrogate modeling approximation using a mixture of experts based on EM joint estimation in STRUCTURAL AND MULTIDISCIPLINARY OPTIMIZATION
  • 2007-03 Introduction in THE EUROPEAN PHYSICAL JOURNAL SPECIAL TOPICS
  • 2007-03 From neuron to neural networks dynamics in THE EUROPEAN PHYSICAL JOURNAL SPECIAL TOPICS
  • 2007-03 Random recurrent neural networks dynamics in THE EUROPEAN PHYSICAL JOURNAL SPECIAL TOPICS
  • 2005 Closed-Loop Control Learning in NEURAL NETWORKS
  • 2005 Neural Identification of Controlled Dynamical Systems and Recurrent Networks in NEURAL NETWORKS
  • 2002-05 Large deviations and mean-field theory for asymmetric random recurrent neural networks in PROBABILITY THEORY AND RELATED FIELDS
  • 2001-10 Mean-field Theory and Synchronization in Random Recurrent Neural Networks in NEURAL PROCESSING LETTERS
  • 1997 Implementing hebbian learning in a rank-based neural network in ARTIFICIAL NEURAL NETWORKS — ICANN'97
  • 1997 Spontaneous Dynamics and Associative Learning in an Assymetric Recurrent Random Neural Network in MATHEMATICS OF NEURAL NETWORKS
  • 1995-06 Mean-field equations, bifurcation map and chaos in discrete time, continuous state, random neural networks in ACTA BIOTHEORETICA
  • 1994-09 On bifurcations and chaos in random neural networks in ACTA BIOTHEORETICA
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