AbstractThe focus of the paper is the estimation of the maximum number of states that can be made stable in higher-order extensions of neural network models. Each higher-order neuron in a network of n elements is modeled as a polynomial threshold element of degree d. It is shown that regardless of the manner of operation, or the algorithm used, the storage capacity of the higher-order network is of the order of one bit per interaction weight. In particular, the maximal (algorithm independent) storage capacity realizable in a recurrent network of n higher-order neurons of degree d is of the order of ndd!. A generalization of a spectral algorithm for information storage is introduced and arguments adducing near optimal capacity for the algori...
AbstractThis paper deals with a neural network model in which each neuron performs a threshold logic...
The study of neural networks by physicists started as an extension of the theory of spin glasses. Fo...
Abstract. The more realistic neural soma and synaptic nonlinear relations and an alternative mean fi...
AbstractThe focus of the paper is the estimation of the maximum number of states that can be made st...
AbstractRecent results on the memory storage capacity of the outer-product algorithm indicate that t...
AbstractGeneral high order neural networks [LD…] (models which are multinomial as opposed to linear ...
We consider the properties of “Potts” neural networks where each neuron can be in $Q$ different stat...
The information capacity of general forms of memory is formalized. The number of bits of information...
International audienceThe optimal storage properties of three different neural network models are st...
For realistic neural network applications the storage and recognition of gray-tone patterns, i.e., p...
Recurrent neural networks have been shown to be able to store memory patterns as fixed point attract...
This paper deals with a neural network model in which each neuron performs a threshold logic functio...
We define a Potts version of neural networks with q states. We give upper and lower bounds for the s...
We study learning from examples in higher-order perceptrons, which can realize polynomially separabl...
A model of associate memory incorporating global linearity and pointwise nonlinearities in a state s...
AbstractThis paper deals with a neural network model in which each neuron performs a threshold logic...
The study of neural networks by physicists started as an extension of the theory of spin glasses. Fo...
Abstract. The more realistic neural soma and synaptic nonlinear relations and an alternative mean fi...
AbstractThe focus of the paper is the estimation of the maximum number of states that can be made st...
AbstractRecent results on the memory storage capacity of the outer-product algorithm indicate that t...
AbstractGeneral high order neural networks [LD…] (models which are multinomial as opposed to linear ...
We consider the properties of “Potts” neural networks where each neuron can be in $Q$ different stat...
The information capacity of general forms of memory is formalized. The number of bits of information...
International audienceThe optimal storage properties of three different neural network models are st...
For realistic neural network applications the storage and recognition of gray-tone patterns, i.e., p...
Recurrent neural networks have been shown to be able to store memory patterns as fixed point attract...
This paper deals with a neural network model in which each neuron performs a threshold logic functio...
We define a Potts version of neural networks with q states. We give upper and lower bounds for the s...
We study learning from examples in higher-order perceptrons, which can realize polynomially separabl...
A model of associate memory incorporating global linearity and pointwise nonlinearities in a state s...
AbstractThis paper deals with a neural network model in which each neuron performs a threshold logic...
The study of neural networks by physicists started as an extension of the theory of spin glasses. Fo...
Abstract. The more realistic neural soma and synaptic nonlinear relations and an alternative mean fi...