We consider the problem of neural association for a network of non-binary neurons. Here, the task is to recall a previously memorized pattern from its noisy version using a network of neurons whose states assume values from a finite number of non-negative integer levels. Prior works in this area consider storing a finite number of purely random patterns, and have shown that the pattern retrieval capacities (maximum number of patterns that can be memorized) scale only linearly with the number of neurons in the network
An associative memory is a structure learned from a datasetM of vectors (signals) in a way such that...
Abstract—The problem of neural network association is to retrieve a previously memorized pattern fro...
A general mean-field theory is presented for an attractor neural network in which each elementary un...
Abstract—We consider the problem of neural association for a network of non-binary neurons. Here, th...
We consider the problem of neural association for a network of nonbinary neurons. Here, the task is ...
The problem of neural network association is to retrieve a previously memorized pattern from its noi...
Abstract—We consider the problem of neural association, which deals with the retrieval of a previous...
Abstract—We consider the problem of neural association, which deals with the retrieval of a previous...
Recent advances in associative memory design through structured pattern sets and graph-based inferen...
The task of a neural associative memory is to retrieve a set of previously memorized patterns from t...
We investigate the pattern completion performance of neural auto-associative memories composed of bi...
Recent advances in associative memory design through structured pat-tern sets and graph-based infere...
The Little-Hopfield network is an auto-associative computational model of neural memory storage and ...
In standard attractor neural network models, specific patterns of activity are stored in the synapti...
Recent advances in associative memory design through structured pattern sets and graph-based inferen...
An associative memory is a structure learned from a datasetM of vectors (signals) in a way such that...
Abstract—The problem of neural network association is to retrieve a previously memorized pattern fro...
A general mean-field theory is presented for an attractor neural network in which each elementary un...
Abstract—We consider the problem of neural association for a network of non-binary neurons. Here, th...
We consider the problem of neural association for a network of nonbinary neurons. Here, the task is ...
The problem of neural network association is to retrieve a previously memorized pattern from its noi...
Abstract—We consider the problem of neural association, which deals with the retrieval of a previous...
Abstract—We consider the problem of neural association, which deals with the retrieval of a previous...
Recent advances in associative memory design through structured pattern sets and graph-based inferen...
The task of a neural associative memory is to retrieve a set of previously memorized patterns from t...
We investigate the pattern completion performance of neural auto-associative memories composed of bi...
Recent advances in associative memory design through structured pat-tern sets and graph-based infere...
The Little-Hopfield network is an auto-associative computational model of neural memory storage and ...
In standard attractor neural network models, specific patterns of activity are stored in the synapti...
Recent advances in associative memory design through structured pattern sets and graph-based inferen...
An associative memory is a structure learned from a datasetM of vectors (signals) in a way such that...
Abstract—The problem of neural network association is to retrieve a previously memorized pattern fro...
A general mean-field theory is presented for an attractor neural network in which each elementary un...