Bruno Cessac


Ontology type: schema:Person     


Person Info

NAME

Bruno

SURNAME

Cessac

Publications in SciGraph latest 50 shown

  • 2017-12 Pan-retinal characterisation of Light Responses from Ganglion Cells in the Developing Mouse Retina in SCIENTIFIC REPORTS
  • 2015-12 A super-resolution approach for receptive fields estimation of neuronal ensembles in BMC NEUROSCIENCE
  • 2013-07 Beyond dynamical mean-field theory of neural networks in BMC NEUROSCIENCE
  • 2013-07 EnaS: a new software for neural population analysis in large scale spiking networks in BMC NEUROSCIENCE
  • 2013-07 A maximum likelihood estimator of neural network synaptic weights in BMC NEUROSCIENCE
  • 2013-07 Dynamics and spike trains statistics in conductance-based Integrate-and-Fire neural networks with chemical and electric synapses in BMC NEUROSCIENCE
  • 2013 Spike Train Statistics from Empirical Facts to Theory: The Case of the Retina in MODELING IN COMPUTATIONAL BIOLOGY AND BIOMEDICINE
  • 2011-12 Statistics of spike trains in conductance-based neural networks: Rigorous results in THE JOURNAL OF MATHEMATICAL NEUROSCIENCE
  • 2011-06 A discrete time neural network model with spiking neurons: II: Dynamics with noise in JOURNAL OF MATHEMATICAL BIOLOGY
  • 2009-09 Parametric estimation of spike train statistics in BMC NEUROSCIENCE
  • 2009-09 How Gibbs distributions may naturally arise from synaptic adaptation mechanisms in BMC NEUROSCIENCE
  • 2009-09 Back-engineering of spiking neural networks parameters in BMC NEUROSCIENCE
  • 2009-08 How Gibbs Distributions May Naturally Arise from Synaptic Adaptation Mechanisms. A Model-Based Argumentation in JOURNAL OF STATISTICAL PHYSICS
  • 2008-03 A discrete time neural network model with spiking neurons in JOURNAL OF MATHEMATICAL BIOLOGY
  • 2007-07 Revisiting time discretisation of spiking network models in BMC NEUROSCIENCE
  • 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
  • 2004-06 Self-Organized Criticality and Thermodynamic Formalism in JOURNAL OF STATISTICAL PHYSICS
  • 2000-01 What Can One Learn About Self-Organized Criticality from Dynamical Systems Theory? in JOURNAL OF STATISTICAL PHYSICS
  • 1997-07 A dynamical system approach to SOC models of Zhang's type in JOURNAL OF STATISTICAL PHYSICS
  • 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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