The subject of this thesis is the n-tuple net.work (RAMnet). The major advantage of RAMnets is their speed and the simplicity with which they can be implemented in parallel hardware. On the other hand, this method is not a universal approximator and the training procedure does not involve the minimisation of a cost function. Hence RAMnets are potentially sub-optimal. It is important to understand the source of this sub-optimality and to develop the analytical tools that allow us to quantify the generalisation cost of using this model for any given data. We view RAMnets as classifiers and function approximators and try to determine how critical their lack of' universality and optimality is. In order to understand better the inherent. restric...
A general relationship is developed between the VC-dimension and the statistical lower epsilon-capac...
This paper studies the asymptotical lower limits on the required number of samples for identifying B...
In this thesis, we consider resource limitations on machine learning algorithms in a variety of sett...
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 ...
The use of n-tuple or weightless neural networks as pattern recognition devices is well known (Aleks...
The n-tuple pattern recognition method has been tested using a selection of 11 large data sets from ...
An N-tuple Neural Network (NNN) is described in which each node fires selectively to its own table o...
This thesis brings together two strands of neural networks research - weightless systems and statis...
N-tuple neural networks (NTNNs) have been successfully applied to both pattern recognition and funct...
The idea of n-tuple sampling as a basis for pattern recognition, as proposed by Bledsoe and Browning...
The use of n-tuple or weightless neural networks as pattern recognition devices i well known (Aleksa...
One family of classifiers which lias has considerable experimental success over the last thirty year...
The use of n-tuple or weightless neural networks as pattern recognition devices has been well docume...
In this thesis, we mainly investigate two collections of problems: statistical network inference and...
A general relationship is developed between the VC-dimension and the statistical lower epsilon-capac...
This paper studies the asymptotical lower limits on the required number of samples for identifying B...
In this thesis, we consider resource limitations on machine learning algorithms in a variety of sett...
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 ...
The use of n-tuple or weightless neural networks as pattern recognition devices is well known (Aleks...
The n-tuple pattern recognition method has been tested using a selection of 11 large data sets from ...
An N-tuple Neural Network (NNN) is described in which each node fires selectively to its own table o...
This thesis brings together two strands of neural networks research - weightless systems and statis...
N-tuple neural networks (NTNNs) have been successfully applied to both pattern recognition and funct...
The idea of n-tuple sampling as a basis for pattern recognition, as proposed by Bledsoe and Browning...
The use of n-tuple or weightless neural networks as pattern recognition devices i well known (Aleksa...
One family of classifiers which lias has considerable experimental success over the last thirty year...
The use of n-tuple or weightless neural networks as pattern recognition devices has been well docume...
In this thesis, we mainly investigate two collections of problems: statistical network inference and...
A general relationship is developed between the VC-dimension and the statistical lower epsilon-capac...
This paper studies the asymptotical lower limits on the required number of samples for identifying B...
In this thesis, we consider resource limitations on machine learning algorithms in a variety of sett...