This paper describes an architecture based on superimposed distributed representations and distributed associative memories which is capable of performing rule chaining. The use of a distributed representation allows the system to utilise memory efficiently, and the use of superposition reduces the time complexity of a tree search to O(d), where d is the depth of the tree. Our experimental results show that the architecture is capable of rule chaining effectively, but that further investigation is needed to address capacity considerations
The discovery of interesting patterns from database transactions is one of the major problems in kno...
The research conducted has dealt with rule-based expert systems. The algorithms that may lead to eff...
The research conducted has dealt with rule-based expert systems. The algorithms that may lead to eff...
This paper briefly introduces a novel symbolic reasoning system based upon distributed associative m...
This paper describes improvements to the rule chaining architecture presented in [1]. The architectu...
The human brain is extremely effective at performing pattern recognition, even in the presence of no...
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 ...
Despite their relative simplicity, Correlation Matrix Memories (CMMs) are an active area of research...
Outline of The Chapter… Section 16.2 describes CMM and the Dynamic Variable Binding Problem. Section...
In this paper we introduce an improved binary correlation matrix memory (CMM) with better storage ca...
Unconventional computing paradigms are typically very difficult to program. By implementing efficien...
This paper proposes a method for sequential data mining using correlation matrix memory. Here, we us...
The paper describes a highly-scalable associative memory network capable of handling multiple stream...
A simple architecture and algorithm for analytically guaranteed associa-tive memory storage of analo...
The discovery of interesting patterns from database transactions is one of the major problems in kno...
The research conducted has dealt with rule-based expert systems. The algorithms that may lead to eff...
The research conducted has dealt with rule-based expert systems. The algorithms that may lead to eff...
This paper briefly introduces a novel symbolic reasoning system based upon distributed associative m...
This paper describes improvements to the rule chaining architecture presented in [1]. The architectu...
The human brain is extremely effective at performing pattern recognition, even in the presence of no...
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 ...
Despite their relative simplicity, Correlation Matrix Memories (CMMs) are an active area of research...
Outline of The Chapter… Section 16.2 describes CMM and the Dynamic Variable Binding Problem. Section...
In this paper we introduce an improved binary correlation matrix memory (CMM) with better storage ca...
Unconventional computing paradigms are typically very difficult to program. By implementing efficien...
This paper proposes a method for sequential data mining using correlation matrix memory. Here, we us...
The paper describes a highly-scalable associative memory network capable of handling multiple stream...
A simple architecture and algorithm for analytically guaranteed associa-tive memory storage of analo...
The discovery of interesting patterns from database transactions is one of the major problems in kno...
The research conducted has dealt with rule-based expert systems. The algorithms that may lead to eff...
The research conducted has dealt with rule-based expert systems. The algorithms that may lead to eff...