We define a stochastic neuron as an element that increases its internal state with probability p until a threshold value is reached; after that its internal state is set back to the initial value. We study the local information of a stochastic neuron between the message arriving from the input neurons and the response of the neuron. We study the dependence of the local information on the firing probability α of the synaptic inputs in a network of such stochastic neurons. The values of α obtained in the simulations are the same as those obtained theoretically by maximization of local mutual information. We conclude that the global dynamics maximizes the local mutual information of single units, which means that the self-selected parameter va...
We consider a neural network with adapting synapses whose dynamics can be analytically computed. The...
We consider a neural network with adapting synapses whose dynamics can be analitically computed. The...
We study a model of spiking neurons, with recurrent connections that result from learning a set of s...
In this paper we consider the optimisation of Shannon mutual information (MI) in the context of two ...
According to the classical efficient-coding hypothesis, biological neurons are naturally adapted to ...
Does the nervous system "tune" itself to perform at peak efficiency? Optimal transmission of informa...
Repeating spatiotemporal spike patterns exist and carry information. Here we investigated how a sing...
Neuronal networks exhibit a wide diversity of structures, which contributes to the diversity of the ...
A simple expression for a lower bound of Fisher information is derived for a network of recurrently ...
In this work we explore encoding strategies learned by statistical models of sensory coding in noisy...
International audienceThe activity of a neuronal network, characterized by action potentials (spikes...
In this work we explore encoding strategies learned by statistical models of sensory coding in noisy...
We demonstrate that, in a parallel array of model neurons, the optimizing influence of internal nois...
Critical dynamics have been postulated as an ideal regime for neuronal networks in the brain, consid...
<p>The external population delivers stochastic activity to the local network. The local network is ...
We consider a neural network with adapting synapses whose dynamics can be analytically computed. The...
We consider a neural network with adapting synapses whose dynamics can be analitically computed. The...
We study a model of spiking neurons, with recurrent connections that result from learning a set of s...
In this paper we consider the optimisation of Shannon mutual information (MI) in the context of two ...
According to the classical efficient-coding hypothesis, biological neurons are naturally adapted to ...
Does the nervous system "tune" itself to perform at peak efficiency? Optimal transmission of informa...
Repeating spatiotemporal spike patterns exist and carry information. Here we investigated how a sing...
Neuronal networks exhibit a wide diversity of structures, which contributes to the diversity of the ...
A simple expression for a lower bound of Fisher information is derived for a network of recurrently ...
In this work we explore encoding strategies learned by statistical models of sensory coding in noisy...
International audienceThe activity of a neuronal network, characterized by action potentials (spikes...
In this work we explore encoding strategies learned by statistical models of sensory coding in noisy...
We demonstrate that, in a parallel array of model neurons, the optimizing influence of internal nois...
Critical dynamics have been postulated as an ideal regime for neuronal networks in the brain, consid...
<p>The external population delivers stochastic activity to the local network. The local network is ...
We consider a neural network with adapting synapses whose dynamics can be analytically computed. The...
We consider a neural network with adapting synapses whose dynamics can be analitically computed. The...
We study a model of spiking neurons, with recurrent connections that result from learning a set of s...