Abstract. The more realistic neural soma and synaptic nonlinear relations and an alternative mean field theory (MFT) approach relevant for strongly interconnected systems as a cortical matter are considered. The general procedure of averaging the quenched random states in the fully-connected networks for MFT, as usually, is based on the Boltzmann Machine learning. But this approach requires an unrealistically large number of samples to provide a reliable performance. We suppose an alternative MFT with deterministic features instead of stochastic nature of searching a solution a set of large number equations. Of course, this alternative theory will not be strictly valid for infinite number of elements. Another property of generalization is a...
We analyze the storage capacity of a variant of the Hopfield model with semantically correlated patt...
We introduce a form of the Hopfield model that is able to store an increasing number of biased i.i.d...
Mean-field descriptions of neuronal networks yield stabilityconstraints that guide efficient model d...
The study of neural networks by physicists started as an extension of the theory of spin glasses. Fo...
A general mean-field theory is presented for an attractor neural network in which each elementary un...
Various applications of the mean field theory (MFT) technique for obtaining solutions close to optim...
In standard attractor neural network models, specific patterns of activity are stored in the synapti...
We analyze the storage capacity of the Hopfield model with spatially correlated patterns ¸ i (i.e....
The macroscopic dynamics of an extremely diluted as well as of a fully connected three-state neural ...
The Bidirectional Associative Memory (B.A.M.) is a neural network which can store and associate pair...
The Hopfield model is a pioneering neural network model with associative memory retrieval. The analy...
We present results for two difFerent kinds of high-order connections between neurons acting as corre...
Threshold-linear (graded response) units approximate the real firing behaviour of pyramidal neurons ...
Abstract. In the present paper, the neural networks theory based on presumptions of the Ising model ...
We solve the mean field equations for a stochastic Hopfield network with tem-perature (noise) in the...
We analyze the storage capacity of a variant of the Hopfield model with semantically correlated patt...
We introduce a form of the Hopfield model that is able to store an increasing number of biased i.i.d...
Mean-field descriptions of neuronal networks yield stabilityconstraints that guide efficient model d...
The study of neural networks by physicists started as an extension of the theory of spin glasses. Fo...
A general mean-field theory is presented for an attractor neural network in which each elementary un...
Various applications of the mean field theory (MFT) technique for obtaining solutions close to optim...
In standard attractor neural network models, specific patterns of activity are stored in the synapti...
We analyze the storage capacity of the Hopfield model with spatially correlated patterns ¸ i (i.e....
The macroscopic dynamics of an extremely diluted as well as of a fully connected three-state neural ...
The Bidirectional Associative Memory (B.A.M.) is a neural network which can store and associate pair...
The Hopfield model is a pioneering neural network model with associative memory retrieval. The analy...
We present results for two difFerent kinds of high-order connections between neurons acting as corre...
Threshold-linear (graded response) units approximate the real firing behaviour of pyramidal neurons ...
Abstract. In the present paper, the neural networks theory based on presumptions of the Ising model ...
We solve the mean field equations for a stochastic Hopfield network with tem-perature (noise) in the...
We analyze the storage capacity of a variant of the Hopfield model with semantically correlated patt...
We introduce a form of the Hopfield model that is able to store an increasing number of biased i.i.d...
Mean-field descriptions of neuronal networks yield stabilityconstraints that guide efficient model d...