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Training, dynamics, and complexity of architecture-specific recurrent neural networks

Dissertation (Ph. D.) -- University of Stellenbosch, 1994.

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Main Author: Ludik, Jacques
Other Authors: Cloete, I.
Format: Thesis
Language:en_ZA
Published: Stellenbosch : Stellenbosch University 2012
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access_status_str Open Access
author Ludik, Jacques
author2 Cloete, I.
author_browse Cloete, I.
Ludik, Jacques
author_facet Cloete, I.
Ludik, Jacques
author_sort Ludik, Jacques
collection Thesis
dc_rights_str_mv Stellenbosch University
description Dissertation (Ph. D.) -- University of Stellenbosch, 1994.
format Thesis
id oai:scholar.sun.ac.za:10019.1/58622
institution Stellenbosch University (South Africa)
language en_ZA
last_indexed 2026-06-10T12:41:19.170Z
license_str Other — see source repository
provenance_str_mv Harvested via OAI-PMH from SUNScholar — Stellenbosch University Repository
publishDate 2012
publishDateRange 2012
publishDateSort 2012
publisher Stellenbosch : Stellenbosch University
publisherStr Stellenbosch : Stellenbosch University
record_format dspace
source_str SUNScholar — Stellenbosch University Repository
spelling oai:scholar.sun.ac.za:10019.1/58622 Training, dynamics, and complexity of architecture-specific recurrent neural networks Ludik, Jacques Cloete, I. Stellenbosch University. Faculty of Science. Dept. of Computer Science. Neural networks (Computer science) Computer architecture System analysis Dissertations -- Computer science UCTD Dissertation (Ph. D.) -- University of Stellenbosch, 1994. ENGLISH ABSTRACT: This dissertation describes the main results of a pioneering effort to develop novel architectures, training strategies, dynamics analysis techniques and theoretical complexity results for architecure-specific reccurent neural network (ASRNNs). To put the study of ASRNNs into an appropriate perspective, a temporal processing framework that describes the different neural network approaches taken, was constructed. ASRNNs are more powerful than non-recurrent networks and computationally less expensive, more stable, and easier to study than general-purpose recurrent networks. The focus was on Elman, Jordan, and Temporal Autoassociation ASRNNs using discrete-time backpropagation. AFRIKAANSE OPSOMMIG: Hierdie proefskrif beskryf die belangrikste resultate van baanbrekerswerk om nuwe argitekture, afrigstratigee, dinamiese analise tegniek en teoretiese kompleksiteitsresultate vir argitektuur-spesifieke terugvoer neurale netwerke (ASTNNe) te ontwikkel. Om die studie van ASTNNe in 'n gepaste perspektief te plaas, is 'n temporaleverwerkingsraamwerk daargestel wat die verskillende neurale netwerk benaderings wat ingespan word, beskryf. ASTNNe is kragtiger as nie-terugvoer netwerke en minder berekeningsintensief, meer stabiel, en eenvoudiger om te bestudeer as meerdoelige terugvoer netwerke. In hierdie studie word spesifiek gefokus op Elman, Jordan, en Temporale Outoassosiasie ASTNNe wat van die terugpropagering leer-algoritme gebruik maak. Doctoral 2012-08-27T11:39:03Z 2012-08-27T11:39:03Z 1994 Thesis http://hdl.handle.net/10019.1/58622 en_ZA Stellenbosch University 244 pages : illustrations. application/pdf Stellenbosch : Stellenbosch University
spellingShingle Neural networks (Computer science)
Computer architecture
System analysis
Dissertations -- Computer science
UCTD
Ludik, Jacques
Training, dynamics, and complexity of architecture-specific recurrent neural networks
title Training, dynamics, and complexity of architecture-specific recurrent neural networks
title_full Training, dynamics, and complexity of architecture-specific recurrent neural networks
title_fullStr Training, dynamics, and complexity of architecture-specific recurrent neural networks
title_full_unstemmed Training, dynamics, and complexity of architecture-specific recurrent neural networks
title_short Training, dynamics, and complexity of architecture-specific recurrent neural networks
title_sort training dynamics and complexity of architecture specific recurrent neural networks
topic Neural networks (Computer science)
Computer architecture
System analysis
Dissertations -- Computer science
UCTD
url http://hdl.handle.net/10019.1/58622
work_keys_str_mv AT ludikjacques trainingdynamicsandcomplexityofarchitecturespecificrecurrentneuralnetworks