An input-output map in which the patterns are divided into classes is considered for the perceptron. The statistical mechanical analysis with a finite number of classes turns out to give the same results as the case of only one class of patterns ; the limit of capacity and the relevant order parameters are calculated in a mean field approach. The analysis is then extended to the Derrida Gardner canonical ensemble in which the perceptron can be studied beyond the limit of capacity. We complete the analysis with numerical simulations with the perceptron learning rule. The relevance of those results to the possible emergence of spontaneous categorization is finally discussed.Nous considérons une application entrée-sortie pour un perceptron dan...
The authors study neural network models in which the synaptic efficacies are restricted to have a pr...
We display a synaptic matrix that can efficiently store, in attractor neural networks (ANN) and perc...
We present a new method for obtaining the response function G and its average G from which most of ...
An input-output map in which the patterns are divided into classes is considered for the perceptron....
. We consider the mean field theory of optimally pruned perceptrons. Using the cavity method, micros...
Zero temperature Gibbs learning is considered for a connected committee machine with K hidden units....
The classical perceptron is a simple neural network that performs a binary classification by a linea...
Learning algorithms for perceptrons are deduced from statistical mechanics. Thermodynamical quantiti...
We study learning from examples in higher-order perceptrons, which can realize polynomially separabl...
A basic neural model for Boolean computation is examined in the context of learning from examples. T...
International audienceIn this paper we consider two main aspects of the binary perceptron problem: t...
The statistical picture of the solution space for a binary perceptron is studied. The binary percept...
Recurrent perceptron classifiers generalize the classical perceptron model. They take into account t...
AblncL In lhis paper we consider two main aspsln of the binary perccptron problem: the maximal capac...
We consider restricted Boltzmann machine (RBMs) trained over an unstructured dataset made of blurred...
The authors study neural network models in which the synaptic efficacies are restricted to have a pr...
We display a synaptic matrix that can efficiently store, in attractor neural networks (ANN) and perc...
We present a new method for obtaining the response function G and its average G from which most of ...
An input-output map in which the patterns are divided into classes is considered for the perceptron....
. We consider the mean field theory of optimally pruned perceptrons. Using the cavity method, micros...
Zero temperature Gibbs learning is considered for a connected committee machine with K hidden units....
The classical perceptron is a simple neural network that performs a binary classification by a linea...
Learning algorithms for perceptrons are deduced from statistical mechanics. Thermodynamical quantiti...
We study learning from examples in higher-order perceptrons, which can realize polynomially separabl...
A basic neural model for Boolean computation is examined in the context of learning from examples. T...
International audienceIn this paper we consider two main aspects of the binary perceptron problem: t...
The statistical picture of the solution space for a binary perceptron is studied. The binary percept...
Recurrent perceptron classifiers generalize the classical perceptron model. They take into account t...
AblncL In lhis paper we consider two main aspsln of the binary perccptron problem: the maximal capac...
We consider restricted Boltzmann machine (RBMs) trained over an unstructured dataset made of blurred...
The authors study neural network models in which the synaptic efficacies are restricted to have a pr...
We display a synaptic matrix that can efficiently store, in attractor neural networks (ANN) and perc...
We present a new method for obtaining the response function G and its average G from which most of ...