We review here the basics of the formalism of Gibbs distributions and its numerical implementation, (its details published elsewhere \cite{vasquez-cessac-etal:10}, in order to characterizing the statistics of multi-unit spike trains. We present this here with the aim to analyze and modeling synthetic data, especially bio-inspired simulated data e.g. from Virtual Retina \cite{wohrer-kornprobst:09}, but also experimental data Multi-Electrode-Array(MEA) recordings from retina obtained by Adrian Palacios. We remark that Gibbs distribution allow us to estimate the spike statistics, given a design choice, but also to compare different models, thus answering comparative questions about the neural code
We propose a generalization of the existing maximum entropy models used for spike trains statistics ...
International audienceWe consider a conductance-based neural network inspired by the generalized Int...
International audienceWe consider a conductance-based neural network inspired by the generalized Int...
We review here the basics of the formalism of Gibbs distributions and its numerical implementation, ...
We review here the basics of the formalism of Gibbs distributions and its numerical implementation, ...
We review here the basics of the formalism of Gibbs distributions and its numerical implementation, ...
We review here the basics of the formalism of Gibbs distributions and its numerical implementation, ...
We review here the basics of the formalism of Gibbs distributions and its numerical implementation, ...
ABSTRACT We review here the basics of the formalism of Gibbs distributions and its numerical impleme...
International audienceIn this talk we shall argue that Gibbs distributions, considered in more gener...
We briefly review and highlight the consequence of rigorous and exact results obtained in \cite{cess...
We briefly review and highlight the consequence of rigorous and exact results obtained in \cite{cess...
International audienceThis paper is based on a lecture given in the LACONEU summer school, Valparais...
We propose a generalization of the existing maximum entropy models used for spike trains statistics ...
We propose a generalization of the existing maximum entropy models used for spike trains statistics ...
We propose a generalization of the existing maximum entropy models used for spike trains statistics ...
International audienceWe consider a conductance-based neural network inspired by the generalized Int...
International audienceWe consider a conductance-based neural network inspired by the generalized Int...
We review here the basics of the formalism of Gibbs distributions and its numerical implementation, ...
We review here the basics of the formalism of Gibbs distributions and its numerical implementation, ...
We review here the basics of the formalism of Gibbs distributions and its numerical implementation, ...
We review here the basics of the formalism of Gibbs distributions and its numerical implementation, ...
We review here the basics of the formalism of Gibbs distributions and its numerical implementation, ...
ABSTRACT We review here the basics of the formalism of Gibbs distributions and its numerical impleme...
International audienceIn this talk we shall argue that Gibbs distributions, considered in more gener...
We briefly review and highlight the consequence of rigorous and exact results obtained in \cite{cess...
We briefly review and highlight the consequence of rigorous and exact results obtained in \cite{cess...
International audienceThis paper is based on a lecture given in the LACONEU summer school, Valparais...
We propose a generalization of the existing maximum entropy models used for spike trains statistics ...
We propose a generalization of the existing maximum entropy models used for spike trains statistics ...
We propose a generalization of the existing maximum entropy models used for spike trains statistics ...
International audienceWe consider a conductance-based neural network inspired by the generalized Int...
International audienceWe consider a conductance-based neural network inspired by the generalized Int...