Statistical modelling by neural networks
In this thesis the two disciplines of Statistics and Artificial Neural Networks are combined into an integrated study of a data set of a weather modification Experiment. An extensive literature study on artificial neural network methodology has revealed the strongly interdisciplinary nature of t...
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ndltd-netd.ac.za-oai-union.ndltd.org-unisa-oai-umkn-dsp01.int.unisa.ac.za-10500-6002016-04-16T04:07:38Z Statistical modelling by neural networks Fletcher, Lizelle Steffens, F. E. (Francois Eliza) Katkovnik, V. Statistical modelling Artificial neural networks Nonlinear regression Multilayer perceptron Backpropagation Hidden nodes Pruning algorithm Classification Discriminant analysis Analysis of variance Weather modification 006.320727 Neural networks (Computer science) -- Statistical methods Weather control -- Statistical methods In this thesis the two disciplines of Statistics and Artificial Neural Networks are combined into an integrated study of a data set of a weather modification Experiment. An extensive literature study on artificial neural network methodology has revealed the strongly interdisciplinary nature of the research and the applications in this field. An artificial neural networks are becoming increasingly popular with data analysts, statisticians are becoming more involved in the field. A recursive algoritlun is developed to optimize the number of hidden nodes in a feedforward artificial neural network to demonstrate how existing statistical techniques such as nonlinear regression and the likelihood-ratio test can be applied in innovative ways to develop and refine neural network methodology. This pruning algorithm is an original contribution to the field of artificial neural network methodology that simplifies the process of architecture selection, thereby reducing the number of training sessions that is needed to find a model that fits the data adequately. [n addition, a statistical model to classify weather modification data is developed using both a feedforward multilayer perceptron artificial neural network and a discriminant analysis. The two models are compared and the effectiveness of applying an artificial neural network model to a relatively small data set assessed. The formulation of the problem, the approach that has been followed to solve it and the novel modelling application all combine to make an original contribution to the interdisciplinary fields of Statistics and Artificial Neural Networks as well as to the discipline of meteorology. Mathematical Sciences D. Phil. (Statistics) 2009-08-25T10:45:05Z 2009-08-25T10:45:05Z 2002-06 2002-06-30 Thesis http://hdl.handle.net/10500/600 en 1 online resource (xiii, 207 leaves) |
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Statistical modelling Artificial neural networks Nonlinear regression Multilayer perceptron Backpropagation Hidden nodes Pruning algorithm Classification Discriminant analysis Analysis of variance Weather modification 006.320727 Neural networks (Computer science) -- Statistical methods Weather control -- Statistical methods |
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Statistical modelling Artificial neural networks Nonlinear regression Multilayer perceptron Backpropagation Hidden nodes Pruning algorithm Classification Discriminant analysis Analysis of variance Weather modification 006.320727 Neural networks (Computer science) -- Statistical methods Weather control -- Statistical methods Fletcher, Lizelle Statistical modelling by neural networks |
description |
In this thesis the two disciplines of Statistics and Artificial Neural Networks
are combined into an integrated study of a data set of a weather modification
Experiment.
An extensive literature study on artificial neural network methodology has
revealed the strongly interdisciplinary nature of the research and the applications
in this field.
An artificial neural networks are becoming increasingly popular with data
analysts, statisticians are becoming more involved in the field. A recursive
algoritlun is developed to optimize the number of hidden nodes in a feedforward
artificial neural network to demonstrate how existing statistical techniques
such as nonlinear regression and the likelihood-ratio test can be applied in
innovative ways to develop and refine neural network methodology.
This pruning algorithm is an original contribution to the field of artificial
neural network methodology that simplifies the process of architecture selection,
thereby reducing the number of training sessions that is needed to find
a model that fits the data adequately.
[n addition, a statistical model to classify weather modification data is developed
using both a feedforward multilayer perceptron artificial neural network
and a discriminant analysis. The two models are compared and the effectiveness
of applying an artificial neural network model to a relatively small
data set assessed.
The formulation of the problem, the approach that has been followed to
solve it and the novel modelling application all combine to make an original
contribution to the interdisciplinary fields of Statistics and Artificial Neural
Networks as well as to the discipline of meteorology. === Mathematical Sciences === D. Phil. (Statistics) |
author2 |
Steffens, F. E. (Francois Eliza) |
author_facet |
Steffens, F. E. (Francois Eliza) Fletcher, Lizelle |
author |
Fletcher, Lizelle |
author_sort |
Fletcher, Lizelle |
title |
Statistical modelling by neural networks |
title_short |
Statistical modelling by neural networks |
title_full |
Statistical modelling by neural networks |
title_fullStr |
Statistical modelling by neural networks |
title_full_unstemmed |
Statistical modelling by neural networks |
title_sort |
statistical modelling by neural networks |
publishDate |
2009 |
url |
http://hdl.handle.net/10500/600 |
work_keys_str_mv |
AT fletcherlizelle statisticalmodellingbyneuralnetworks |
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1718223586892709888 |