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Dive into the research topics where Juan Carlos Vasquez is active.

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Featured researches published by Juan Carlos Vasquez.


BMC Neuroscience | 2009

How Gibbs distributions may naturally arise from synaptic adaptation mechanisms

Juan Carlos Vasquez; Bruno Cessac; Horacio Rostro-Gonzalez; Thierry Viéville

It is assumed that complex perceptual or sensori-motor tasks are the result of neural network dynamics and are expressed by spike trains containing the neural code. Hence, in this context two main questions are (i) How to characterize the statistical properties of sequences the spikes trains produced by neuronal networks and (ii) What are the effects of synaptic plasticity on these statistics? Using methods from dynamical systems theory and statistical physics, we introduce a framework which applies for very general forms of spike train properties allowing to characterize miscellaneous forms of neural code (rank coding, synchronizations, correlations of different orders, etc.). In this framework, spike trains are associated with a coding of membrane potential trajectories constituting a symbolic coding in important modeling examples. On this basis, we use the thermodynamic formalism from ergodic theory to show how Gibbs distributions are natural probability measures to describe the statistics of spike trains, given the data of known empirical averages. Finally, we show that Gibbs distribution naturally arise when considering slow synaptic plasticity rules, where the only requirement is that characteristic time for synapse adaptation must be quite a bit longer that the characteristic time for neurons dynamics. We include some simulations results applying this framework on recurrent neural network with discrete time current based dynamics under the action of an STDP rule (see Figures 1 and 2). Numerical results are in accord with theory establishing that the topological pressure is a variation quantity with a minimum given by a Gibbs distribution (Figure 3).


Journal of Statistical Physics | 2009

How Gibbs Distributions May Naturally Arise from Synaptic Adaptation Mechanisms. A Model-Based Argumentation

Bruno Cessac; Horacio Rostro; Juan Carlos Vasquez; Thierry Viéville


arXiv: Biological Physics | 2008

To which extend is the "neural code'' a metric ?

Bruno Cessac; Horacio Rostro-Gonzalez; Juan Carlos Vasquez; Thierry Viéville


arXiv: Data Analysis, Statistics and Probability | 2010

Entropy-based parametric estimation of spike train statistics

Juan Carlos Vasquez; Thierry Viéville; Bruno Cessac


BMC Neuroscience | 2009

Back-engineering of spiking neural networks parameters

Horacio Rostro-Gonzalez; Bruno Cessac; Juan Carlos Vasquez; Thierry Viéville


arXiv: Adaptation and Self-Organizing Systems | 2008

Statistics of spikes trains, synaptic plasticity and Gibbs distributions.

Bruno Cessac; Horacio Rostro; Juan Carlos Vasquez; Thierry Viéville


Archive | 2011

Parametric Estimation of Gibbs distributions as generalized maximum-entropy models for the analysis of spike train statistics.

Juan Carlos Vasquez; Thierry Viéville; Bruno Cessac


Cinquième conférence plénière française de Neurosciences Computationnelles, "Neurocomp'10" | 2010

Parametric estimation of spike train statistics by Gibbs distributions : an application to bio-inspired and experimental data

Bruno Cessac; Juan Carlos Vasquez; Hassan Nasser; Horacio Rostro-Gonzalez; Thierry Viéville; Adrian G. Palacios


arXiv: Adaptation and Self-Organizing Systems | 2010

Spike trains statistics in integrate and fire models: exact results.

Bruno Cessac; Hassan Nasser; Juan Carlos Vasquez


Neurocomputing | 2009

On deterministic reservoir computing: network complexity and algorithm

Horacio Rostro; Bruno Cessac; Juan Carlos Vasquez; Thierry Viéville

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Thierry Viéville

French Institute for Research in Computer Science and Automation

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