In the paper thermodynamic properties of an artificial neural network are analyzed in a way analogous to spin glasses theory. Synaptic connections are calculated numerically according to the Hebb rule and their distribution is obtained for different characteristics of stored patterns. The phase diagrams and magnetization are established in dependence on the temperature of the network and the external field (threshold). It was showed that changing control parameters typical of artificial neural network (i.e. number of stored patterns and pattern bias level) one obtains the results similar to the Sherrington-Kirkpatrick model of spin glass
Abstract. In the present paper, the neural networks theory based on presumptions of the Ising model ...
The replica-symmetric order parameter equations derived in [2, 4] for the symmetrically diluted Hopf...
SIGLEAvailable from British Library Document Supply Centre- DSC:D182994 / BLDSC - British Library Do...
Numerical and analytical solutions at low temperature are presented for the replica symmetric order ...
Abstract: Neural networks are nowadays both powerful operational tools (e.g., for pattern recognitio...
Hopfield-like neural networks with spatially organized data are studied by a mean-field theory. The ...
Numerical and analytical solutions at low temperature are presented for the replica symmetric order ...
We present results for two difFerent kinds of high-order connections between neurons acting as corre...
Neural networks are nowadays both powerful operational tools (e.g., for pattern recognition, data mi...
We review some recent rigorous results in the theory of neural networks, and in particular on the th...
We review some recent rigorous results in the theory of neural networks, and in particular on the th...
In this paper, we study numerically the out-of-equilibrium dynamics of the Hopfield model for associ...
In this paper we continue our investigation on the high storage regime of a neural network with Gaus...
A specific type of neural networks, the Restricted Boltzmann Machines (RBM), are implemented for cla...
Spin glass is the simplest disordered system that preserves the full range of complex collective beh...
Abstract. In the present paper, the neural networks theory based on presumptions of the Ising model ...
The replica-symmetric order parameter equations derived in [2, 4] for the symmetrically diluted Hopf...
SIGLEAvailable from British Library Document Supply Centre- DSC:D182994 / BLDSC - British Library Do...
Numerical and analytical solutions at low temperature are presented for the replica symmetric order ...
Abstract: Neural networks are nowadays both powerful operational tools (e.g., for pattern recognitio...
Hopfield-like neural networks with spatially organized data are studied by a mean-field theory. The ...
Numerical and analytical solutions at low temperature are presented for the replica symmetric order ...
We present results for two difFerent kinds of high-order connections between neurons acting as corre...
Neural networks are nowadays both powerful operational tools (e.g., for pattern recognition, data mi...
We review some recent rigorous results in the theory of neural networks, and in particular on the th...
We review some recent rigorous results in the theory of neural networks, and in particular on the th...
In this paper, we study numerically the out-of-equilibrium dynamics of the Hopfield model for associ...
In this paper we continue our investigation on the high storage regime of a neural network with Gaus...
A specific type of neural networks, the Restricted Boltzmann Machines (RBM), are implemented for cla...
Spin glass is the simplest disordered system that preserves the full range of complex collective beh...
Abstract. In the present paper, the neural networks theory based on presumptions of the Ising model ...
The replica-symmetric order parameter equations derived in [2, 4] for the symmetrically diluted Hopf...
SIGLEAvailable from British Library Document Supply Centre- DSC:D182994 / BLDSC - British Library Do...