Knowledge based artificial neural networks offer an attractive approach to extending or modifying incomplete knowledge bases or domain theories through a process of data-driven theory refinement. We present an efficient algorithm for data-driven knowledge discovery and theory refinement using DistAl, a novel (inter-pattern distance based polynomial time) constructive neural network learning algorithm. the initial domain theory comprising of propositional rules is translated into a knowledge based network. The domain theory is modified using DistAl which adds new neurons to the existing network as needed to reduce classification errors associated with the incomplete domain theory on labeled training examples. The proposed algorithm is capab...
Multi-layer networks of threshold logic units offer an attractive framework for the design of patter...
Efficient search in vast combinatorial spaces, such as those of possible action sequences, linguisti...
[[abstract]]How to learn new knowledge without forgetting old knowledge is a key issue in designing ...
Bioinformatics and related applications call for efficient algorithms for knowledge intensive learni...
Knowledge based artificial neural networks offer an approach for connectionist theory refinement. We...
An algorithm that learns from a set of examples should ideally be able to exploit the available reso...
Traditional approaches to connectionist theory refinement map the dependencies of a domain-specific ...
We describe the application of a hybrid symbolic/connectionist machine learning algorithm to the tas...
Multi-layer networks of threshold logic units offer an attractive framework for the design of patter...
The recent proliferation of computers and communication networks has made it possible for individual...
Knowledge discovery, in databases, also known as data mining, is aimed to find significant informati...
We describe and try to motivate our project to build systems using both a knowledge based and a neur...
Artificial neural networks are inspired by information processing performed by neural circuits in bi...
In this paper, we propose the Neural Knowledge DNA, a framework that tailors the ideas underlying th...
[[abstract]]Often a major difficulty in the design of expert systems is the process of acquiring the...
Multi-layer networks of threshold logic units offer an attractive framework for the design of patter...
Efficient search in vast combinatorial spaces, such as those of possible action sequences, linguisti...
[[abstract]]How to learn new knowledge without forgetting old knowledge is a key issue in designing ...
Bioinformatics and related applications call for efficient algorithms for knowledge intensive learni...
Knowledge based artificial neural networks offer an approach for connectionist theory refinement. We...
An algorithm that learns from a set of examples should ideally be able to exploit the available reso...
Traditional approaches to connectionist theory refinement map the dependencies of a domain-specific ...
We describe the application of a hybrid symbolic/connectionist machine learning algorithm to the tas...
Multi-layer networks of threshold logic units offer an attractive framework for the design of patter...
The recent proliferation of computers and communication networks has made it possible for individual...
Knowledge discovery, in databases, also known as data mining, is aimed to find significant informati...
We describe and try to motivate our project to build systems using both a knowledge based and a neur...
Artificial neural networks are inspired by information processing performed by neural circuits in bi...
In this paper, we propose the Neural Knowledge DNA, a framework that tailors the ideas underlying th...
[[abstract]]Often a major difficulty in the design of expert systems is the process of acquiring the...
Multi-layer networks of threshold logic units offer an attractive framework for the design of patter...
Efficient search in vast combinatorial spaces, such as those of possible action sequences, linguisti...
[[abstract]]How to learn new knowledge without forgetting old knowledge is a key issue in designing ...