The storage capacity of an autoassociative memory with extremely diluted connectivity and with threshold-linear elementary units is studied in its dependence on the graded structure and on the sparseness of the coding scheme, and on the form of the learning rule used. As the coding becomes sparse, more patterns can be stored, and the difference in capacity (measured for a given number of modifiable synapses per unit) between fully connected and highly diluted systems vanishes. Graded (non-binary) codings, especially when used with learning rules nonlinear in their post-synaptic factor, further increase the number of patterns that can be stored by making their retrieved representation even sparser
Associative memories with recurrent connectivity can be built from networks of perceptrons and train...
Associative networks have long been regarded as a biologically plausible mechanism for memory storag...
We study analytically the effect of metrically structured connectivity on the behavior of autoassoci...
The storage capacity of an autoassociative memory with extremely diluted connectivity and with thres...
Threshold-linear (graded response) units approximate the real firing behaviour of pyramidal neurons ...
A general mean-field theory is presented for an attractor neural network in which each elementary un...
Networks of neurons in the brain encode preferred patterns of neural activity via their synap-tic co...
Abstract: Associative memories with recurrent connectivity can be built from networks of perceptrons...
In some neuronal networks in the brain which are thought to operate as associative memories, a spars...
We study the storage of multiple phase-coded patterns as stable dynamical attractors in recurrent ne...
Most analytical results concerning the long-time behaviour of associative memory networks have been ...
Much evidence indicates that the perirhinal cortex is involved in the familiarity discrimination asp...
We derive the Gardner storage capacity for associative networks of threshold linear units, and show ...
In this paper we present a modification of the strongly diluted Hopfield model in which the dilution...
Copyright IEEE. Personal use of this material is permitted. However, permission to reprint/republish...
Associative memories with recurrent connectivity can be built from networks of perceptrons and train...
Associative networks have long been regarded as a biologically plausible mechanism for memory storag...
We study analytically the effect of metrically structured connectivity on the behavior of autoassoci...
The storage capacity of an autoassociative memory with extremely diluted connectivity and with thres...
Threshold-linear (graded response) units approximate the real firing behaviour of pyramidal neurons ...
A general mean-field theory is presented for an attractor neural network in which each elementary un...
Networks of neurons in the brain encode preferred patterns of neural activity via their synap-tic co...
Abstract: Associative memories with recurrent connectivity can be built from networks of perceptrons...
In some neuronal networks in the brain which are thought to operate as associative memories, a spars...
We study the storage of multiple phase-coded patterns as stable dynamical attractors in recurrent ne...
Most analytical results concerning the long-time behaviour of associative memory networks have been ...
Much evidence indicates that the perirhinal cortex is involved in the familiarity discrimination asp...
We derive the Gardner storage capacity for associative networks of threshold linear units, and show ...
In this paper we present a modification of the strongly diluted Hopfield model in which the dilution...
Copyright IEEE. Personal use of this material is permitted. However, permission to reprint/republish...
Associative memories with recurrent connectivity can be built from networks of perceptrons and train...
Associative networks have long been regarded as a biologically plausible mechanism for memory storag...
We study analytically the effect of metrically structured connectivity on the behavior of autoassoci...