In this paper we propose several novel techniques for mapping rule bases, such as are used in rule based expert systems, onto neural network architectures. Our objective in doing this is to achieve a system capable of incremental learning, and distributed probabilistic inference. Such a system would be capable of performing inference many orders of magnitude faster than current serial rule based expert systems, and hence be capable of true real time operation. In addition, the rule based formalism gives the system an explicit knowledge representation, unlike current neural models. We propose an information-theoretic approach to this problem, which really has two aspects: firstly learning the model and, secondly, performing inference usin...
The latest development in machine learning techniques has enabled the development of intelligent too...
AbstractThe fuzzy expert system we are concerned about in this paper is a rule-based fuzzy expert sy...
[[abstract]]A major bottleneck in building expert systems is the process of acquiring the required k...
In this paper we propose several novel techniques for mapping rule bases, such as are used in rule b...
We discuss in this paper architectures for executing probabilistic rule-bases in a parallel manner,...
In this paper we propose a network architecture that combines a rule-based approach with that of the...
A classifier for discrete-valued variable classification problems is presented. The system utilizes ...
[[abstract]]Often a major difficulty in the design of expert systems is the process of acquiring the...
A classi er for discrete-valued variable classi cation problems is presented. The system utilizes an...
In this chapter the knowledge-based neurocomputing will be applied to expert systems. Two main appro...
Expert networks are networks of neural objects derived from expert systems. The hybrid nature of suc...
We demonstrate in this paper how certain forms of rule-based knowledge can be used to prestructure a...
This thesis examines the problems of designing decision trees and expert systems from an information...
III-formalized situations can easily be represented by means of conditional rules. Heuristics that a...
This thesis describes the architecture of learning systems which can explain their decisions through...
The latest development in machine learning techniques has enabled the development of intelligent too...
AbstractThe fuzzy expert system we are concerned about in this paper is a rule-based fuzzy expert sy...
[[abstract]]A major bottleneck in building expert systems is the process of acquiring the required k...
In this paper we propose several novel techniques for mapping rule bases, such as are used in rule b...
We discuss in this paper architectures for executing probabilistic rule-bases in a parallel manner,...
In this paper we propose a network architecture that combines a rule-based approach with that of the...
A classifier for discrete-valued variable classification problems is presented. The system utilizes ...
[[abstract]]Often a major difficulty in the design of expert systems is the process of acquiring the...
A classi er for discrete-valued variable classi cation problems is presented. The system utilizes an...
In this chapter the knowledge-based neurocomputing will be applied to expert systems. Two main appro...
Expert networks are networks of neural objects derived from expert systems. The hybrid nature of suc...
We demonstrate in this paper how certain forms of rule-based knowledge can be used to prestructure a...
This thesis examines the problems of designing decision trees and expert systems from an information...
III-formalized situations can easily be represented by means of conditional rules. Heuristics that a...
This thesis describes the architecture of learning systems which can explain their decisions through...
The latest development in machine learning techniques has enabled the development of intelligent too...
AbstractThe fuzzy expert system we are concerned about in this paper is a rule-based fuzzy expert sy...
[[abstract]]A major bottleneck in building expert systems is the process of acquiring the required k...