This thesis brings together two strands of neural networks research - weightless systems and statistical learning theory - in an attempt to understand better the learning and generalisation abilities of a class of pattern classifying machines. The machines under consideration are n-tuple classifiers. While their analysis falls outside the domain of more widespread neural networks methods the method has found considerable application since its first publication in 1959. The larger class of learning systems to which the n-tuple classifier belongs is known as the set of weightless or RAM-based systems, because of the fact that they store all their modifiable information in the nodes rather than as weights on the connections. The analy...
The idea of n-tuple sampling as a basis for pattern recognition, as proposed by Bledsoe and Browning...
Weightless neural systems have often struggles in terms of speed, performances, and memory issues. T...
This thesis presents a new theory of generalization in neural network types of learning machines. Th...
The n-tuple pattern recognition method has been tested using a selection of 11 large data sets from ...
The n-tuple pattern recognition method has been tested using a selection of 11 large data sets from ...
Abstract. Random Access Memory (RAM) nodes can play the role of artificial neurons that are addresse...
This paper presents a survey of a class of neural models known as Weightless Neural Networks (WNNs)....
The use of n-tuple or weightless neural networks as pattern recognition devices is well known (Aleks...
The use of n-tuple or weightless neural networks as pattern recognition devices i well known (Aleksa...
An N-tuple Neural Network (NNN) is described in which each node fires selectively to its own table o...
Among numerous pattern recognition methods the neural network approach has been the subject of much ...
The n-tuple pattern recognition method has been tested using a selection of 11 large data sets from ...
One family of classifiers which lias has considerable experimental success over the last thirty year...
Sample complexity results from computational learning theory, when applied to neural network learnin...
This research demonstrates a method of discriminating the numerical relationships of neural network ...
The idea of n-tuple sampling as a basis for pattern recognition, as proposed by Bledsoe and Browning...
Weightless neural systems have often struggles in terms of speed, performances, and memory issues. T...
This thesis presents a new theory of generalization in neural network types of learning machines. Th...
The n-tuple pattern recognition method has been tested using a selection of 11 large data sets from ...
The n-tuple pattern recognition method has been tested using a selection of 11 large data sets from ...
Abstract. Random Access Memory (RAM) nodes can play the role of artificial neurons that are addresse...
This paper presents a survey of a class of neural models known as Weightless Neural Networks (WNNs)....
The use of n-tuple or weightless neural networks as pattern recognition devices is well known (Aleks...
The use of n-tuple or weightless neural networks as pattern recognition devices i well known (Aleksa...
An N-tuple Neural Network (NNN) is described in which each node fires selectively to its own table o...
Among numerous pattern recognition methods the neural network approach has been the subject of much ...
The n-tuple pattern recognition method has been tested using a selection of 11 large data sets from ...
One family of classifiers which lias has considerable experimental success over the last thirty year...
Sample complexity results from computational learning theory, when applied to neural network learnin...
This research demonstrates a method of discriminating the numerical relationships of neural network ...
The idea of n-tuple sampling as a basis for pattern recognition, as proposed by Bledsoe and Browning...
Weightless neural systems have often struggles in terms of speed, performances, and memory issues. T...
This thesis presents a new theory of generalization in neural network types of learning machines. Th...