An associative memory with parallel architecture is presented. The neurons are modelled by perceptrons having only binary, rather than continuous valued input. To store m elements each having n features, m neurons each with n connections are needed. The n features are coded as an n-bit binary vector. The weights of the n connections that store the n features of an element has only two values -1 and 1 corresponding to the absence or presence of a feature. This makes the learning very simple and straightforward. For an input corrupted by binary noise, the associative memory indicates the element that is closest (in terms of Hamming distance) to the noisy input. In the case where the noisy input is equidistant from two or more stored vectors, ...
A number of neural network models, in which fixed-point and limit-cycle attractors of the underlying...
A number of neural network models, in which fixed-point and limit-cycle attractors of the underlying...
A number of neural network models, in which fixed-point and limit-cycle attractors of the underlying...
The goal of this project was to investigate new approaches for designing associative neural memories...
Abstract—We propose a novel architecture to design a neural associative memory that is capable of le...
Introduction The associative memory is one of the fundamental algorithms of information processing ...
The Hopfield network (Hopfield, 1982,1984) provides a simple model of an associative memory in a neu...
Rückert U. An Associative Memory with Neural Architecture and its VLSI Implementation. In: Milutinov...
Human memory is associative and emerges from the behaviour of neurons. Two models, based on commonly...
In this paper, we present a neural network system related to about memory and recall that consists o...
The reason for this is easy hardware implementation and successful applications in Associative Memor...
Hopfield type associative memory networks usually use a bipolar representation. It is also possible ...
Memory ability of human is an interesting ability. For example, human memorizes an image. After that...
An associative memory is a structure learned from a datasetM of vectors (signals) in a way such that...
The Aleksander model of neural networks replaces the connection weights of conventional models by lo...
A number of neural network models, in which fixed-point and limit-cycle attractors of the underlying...
A number of neural network models, in which fixed-point and limit-cycle attractors of the underlying...
A number of neural network models, in which fixed-point and limit-cycle attractors of the underlying...
The goal of this project was to investigate new approaches for designing associative neural memories...
Abstract—We propose a novel architecture to design a neural associative memory that is capable of le...
Introduction The associative memory is one of the fundamental algorithms of information processing ...
The Hopfield network (Hopfield, 1982,1984) provides a simple model of an associative memory in a neu...
Rückert U. An Associative Memory with Neural Architecture and its VLSI Implementation. In: Milutinov...
Human memory is associative and emerges from the behaviour of neurons. Two models, based on commonly...
In this paper, we present a neural network system related to about memory and recall that consists o...
The reason for this is easy hardware implementation and successful applications in Associative Memor...
Hopfield type associative memory networks usually use a bipolar representation. It is also possible ...
Memory ability of human is an interesting ability. For example, human memorizes an image. After that...
An associative memory is a structure learned from a datasetM of vectors (signals) in a way such that...
The Aleksander model of neural networks replaces the connection weights of conventional models by lo...
A number of neural network models, in which fixed-point and limit-cycle attractors of the underlying...
A number of neural network models, in which fixed-point and limit-cycle attractors of the underlying...
A number of neural network models, in which fixed-point and limit-cycle attractors of the underlying...