A Self-organizing neural network model for locus-Addressable associative memory, and binary pattern recognition is presented. The net may be used for either auto-associative or hetero-associative tasks. Locus - addressability is suggested as a possible mechanism for retrieval of memories without any external cues in the form of partial or corrupted exemplar patterns. The architecture, Which employs competitive dynamics, embodies a parallel search scheme which updates itself adaptively as the learning progresses. A thresholding mechanism ensures the learning of new exemplars. On saturation of the memory capacity, the net thereafter responds to new patterns by recalling exemplars in its memory that are nearest to the presented input in Hammin...
We consider the problem of neural association for a network of non-binary neurons. Here, the task is...
A neural network architecture for the learning of recognition categories is derived. Real-time netwo...
A general mean-field theory is presented for an attractor neural network in which each elementary un...
A Self-organizing neural network model for locus-Addressable associative memory, and binary pattern ...
Abstract—We consider the problem of neural association for a network of non-binary neurons. Here, th...
While the present edition is bibliographically the third one of Vol. 8 of the Springer Series in Inf...
This paper proposes a novel neural network model for associative memory using dynamical systems. The...
In this thesis, cognitive models of associative memory are developed. The cognitive view of memory i...
The task of a neural associative memory is to retrieve a set of previously memorized patterns from t...
Introduction The associative memory is one of the fundamental algorithms of information processing ...
An associative memory is a structure learned from a datasetM of vectors (signals) in a way such that...
The human brain has a remarkable capability to recall information if a sufficient clue is presented....
An associative memory is a framework of content-addressable memory that stores a collection of messa...
A learning algorithm for single layer perceptrons is proposed. First, cone-like domains, each of whi...
A new efficient learning algorithm of associative memory neural network is proposed, with the follow...
We consider the problem of neural association for a network of non-binary neurons. Here, the task is...
A neural network architecture for the learning of recognition categories is derived. Real-time netwo...
A general mean-field theory is presented for an attractor neural network in which each elementary un...
A Self-organizing neural network model for locus-Addressable associative memory, and binary pattern ...
Abstract—We consider the problem of neural association for a network of non-binary neurons. Here, th...
While the present edition is bibliographically the third one of Vol. 8 of the Springer Series in Inf...
This paper proposes a novel neural network model for associative memory using dynamical systems. The...
In this thesis, cognitive models of associative memory are developed. The cognitive view of memory i...
The task of a neural associative memory is to retrieve a set of previously memorized patterns from t...
Introduction The associative memory is one of the fundamental algorithms of information processing ...
An associative memory is a structure learned from a datasetM of vectors (signals) in a way such that...
The human brain has a remarkable capability to recall information if a sufficient clue is presented....
An associative memory is a framework of content-addressable memory that stores a collection of messa...
A learning algorithm for single layer perceptrons is proposed. First, cone-like domains, each of whi...
A new efficient learning algorithm of associative memory neural network is proposed, with the follow...
We consider the problem of neural association for a network of non-binary neurons. Here, the task is...
A neural network architecture for the learning of recognition categories is derived. Real-time netwo...
A general mean-field theory is presented for an attractor neural network in which each elementary un...