Multi-layer networks of threshold logic units offer an attractive framework for the design of pattern classification systems. A new constructive neural network learning algorithm (DistAl) based on inter-pattern distance is introduced. DistAl uses spherical threshold neurons in a hidden layer to find a cluster of patterns to be covered (or classified) by each hidden neuron. It does not depend on an iterative, expensive and time-consuming perceptron training algorithm to find the weight settings for the neurons in the network, and thus extremely fast even for large data sets. The experimental results (in terms of generalization capability and network size) of DistAl on a number of benchmark classification problems show reasonable performance ...
In this article we describe a feature extraction algorithm for pattern classification based on Bayes...
A general method for building and training multilayer perceptrons composed of linear threshold units...
Abstract: In this paper we present a simple modification of some cascade-correlation type constructi...
Multi-layer networks of threshold logic units offer an attractive framework for the design of patter...
Multi-layer networks of threshold logic units offer an attractive framework for the design of patter...
Constructive learning algorithms offer an approach to incremental construction of near-minimal artif...
Abstract: A framework for Similarity-Based Methods (SBMs) includes many classification models as spe...
It is a neural network truth universally acknowledged, that the signal transmitted to a target node ...
Of crucial importance to the successful use of artificial neural networks for pattern classification...
A general method for building and training multilayer perceptrons composed of linear threshold units...
Knowledge based artificial neural networks offer an approach for connectionist theory refinement. We...
Artificial neural networks (ANN) have been a powerful data mining tool with no prior data assumption...
Neural networks have frequently been found to give accurate solutions to hard classification problem...
This study highlights on the subject of weight initialization in multi-layer feed-forward networks....
Abstract- We propose a novel learning algorithm to train networks with multi-layer linear-threshold ...
In this article we describe a feature extraction algorithm for pattern classification based on Bayes...
A general method for building and training multilayer perceptrons composed of linear threshold units...
Abstract: In this paper we present a simple modification of some cascade-correlation type constructi...
Multi-layer networks of threshold logic units offer an attractive framework for the design of patter...
Multi-layer networks of threshold logic units offer an attractive framework for the design of patter...
Constructive learning algorithms offer an approach to incremental construction of near-minimal artif...
Abstract: A framework for Similarity-Based Methods (SBMs) includes many classification models as spe...
It is a neural network truth universally acknowledged, that the signal transmitted to a target node ...
Of crucial importance to the successful use of artificial neural networks for pattern classification...
A general method for building and training multilayer perceptrons composed of linear threshold units...
Knowledge based artificial neural networks offer an approach for connectionist theory refinement. We...
Artificial neural networks (ANN) have been a powerful data mining tool with no prior data assumption...
Neural networks have frequently been found to give accurate solutions to hard classification problem...
This study highlights on the subject of weight initialization in multi-layer feed-forward networks....
Abstract- We propose a novel learning algorithm to train networks with multi-layer linear-threshold ...
In this article we describe a feature extraction algorithm for pattern classification based on Bayes...
A general method for building and training multilayer perceptrons composed of linear threshold units...
Abstract: In this paper we present a simple modification of some cascade-correlation type constructi...