The human brain is extremely effective at performing pattern recognition, even in the presence of noisy or distorted inputs. Artificial neural networks attempt to imitate the structure of the brain, often with a view to mimicking its success. The binary correlation matrix memory (CMM) is a particular type of neural network that is capable of learning and recalling associations extremely quickly, as well as displaying a high storage capacity and having the ability to generalise from patterns already learned. CMMs have been used as a major component of larger architectures designed to solve a wide range of problems, such as rule chaining, character recognition, or more general pattern recognition. It is clear that the memory requirement of th...
This thesis introduces several variants to the classical autoassociative memory model in order to ca...
This paper describes an improvement to the Cellular Associative Neural Network, an architecture base...
Pattern recognition and learning are basic functions, which are needed to build artificial systems w...
The human brain is an extremely powerful pattern recogniser, as well as being capable of displaying ...
The human brain is an extremely powerful pattern recogniser, as well as being capable of displaying ...
This paper describes an architecture based on superimposed distributed representations and distribut...
Despite their relative simplicity, Correlation Matrix Memories (CMMs) are an active area of research...
The human brain has a remarkable capability to recall information if a sufficient clue is presented....
In this paper we introduce an improved binary correlation matrix memory (CMM) with better storage ca...
This paper briefly introduces a novel symbolic reasoning system based upon distributed associative m...
An associative memory with parallel architecture is presented. The neurons are modelled by perceptro...
This thesis proposes a novel method for learning and pattern recognition. The algorithm presented re...
Learning in bidirectional associative memory (BAM) is typically Hebbian-based. Since Kosko's 1988 ['...
We propose a new associative memory to improve its noise tolerance and storage capacity. Our underly...
Learning in Bidirectional Associative Memory (BAM) is typically based on Hebbian-type learning. Sinc...
This thesis introduces several variants to the classical autoassociative memory model in order to ca...
This paper describes an improvement to the Cellular Associative Neural Network, an architecture base...
Pattern recognition and learning are basic functions, which are needed to build artificial systems w...
The human brain is an extremely powerful pattern recogniser, as well as being capable of displaying ...
The human brain is an extremely powerful pattern recogniser, as well as being capable of displaying ...
This paper describes an architecture based on superimposed distributed representations and distribut...
Despite their relative simplicity, Correlation Matrix Memories (CMMs) are an active area of research...
The human brain has a remarkable capability to recall information if a sufficient clue is presented....
In this paper we introduce an improved binary correlation matrix memory (CMM) with better storage ca...
This paper briefly introduces a novel symbolic reasoning system based upon distributed associative m...
An associative memory with parallel architecture is presented. The neurons are modelled by perceptro...
This thesis proposes a novel method for learning and pattern recognition. The algorithm presented re...
Learning in bidirectional associative memory (BAM) is typically Hebbian-based. Since Kosko's 1988 ['...
We propose a new associative memory to improve its noise tolerance and storage capacity. Our underly...
Learning in Bidirectional Associative Memory (BAM) is typically based on Hebbian-type learning. Sinc...
This thesis introduces several variants to the classical autoassociative memory model in order to ca...
This paper describes an improvement to the Cellular Associative Neural Network, an architecture base...
Pattern recognition and learning are basic functions, which are needed to build artificial systems w...