Regularised feed forward neural networks for streamed data classification problems

dc.contributor.advisorBosman, Anna S.
dc.contributor.coadvisorEngelbrecht, Andries P.
dc.contributor.emailmox.1990@gmail.comen_ZA
dc.contributor.postgraduateEllis, Mathys
dc.date.accessioned2020-08-19T08:06:14Z
dc.date.available2020-08-19T08:06:14Z
dc.date.created2020-09
dc.date.issued2020
dc.descriptionDissertation (MSc)--University of Pretoria, 2020.en_ZA
dc.description.abstractStreamed data classification problems (SDCPs) require classifiers with the ability to learn and to adjust to the underlying relationships in data streams, in real-time. This requirement poses a challenge to classifiers, because the learning task is no longer just to find the optimal decision boundaries, but also to track changes in the decision boundaries as new training data is received. The challenge is due to concept drift, i.e. the changing of decision boundaries over time. Changes include disappearing, appearing, or shifting decision boundaries. This thesis proposes an online learning approach for feed forward neural networks (FFNNs) that meets the requirements of SDCPs. The approach uses regularisation to optimise the architecture via the weights, and quantum particle swarm optimisation (QPSO) to dynamically adjust the weights. The learning approach is applied to a FFNN, which uses rectified linear activation functions, to form a novel SDCP classifier. The classifier is empirically investigated on several SDCPs. Both weight decay (WD) and weight elimination (WE) are investigated as regularisers. Empirical results show that using QPSO with no regularisation, causes the classifier to completely saturate. However, using QPSO with regularisation enables the classifier to dynamically adapt both its implicit architecture and weights as decision boundaries change. Furthermore, the results favour WE over WD as a regulariser for QPSO.en_ZA
dc.description.availabilityUnrestricteden_ZA
dc.description.degreeMScen_ZA
dc.description.departmentComputer Scienceen_ZA
dc.description.sponsorshipNational Research Foundation (NRF)en_ZA
dc.identifier.citationEllis, M 2020, Regularised feed forward neural networks for streamed data classification problems, MSc Dissertation, University of Pretoria, Pretoria, viewed yymmdd <http://hdl.handle.net/2263/75804>en_ZA
dc.identifier.otherS2020en_ZA
dc.identifier.urihttp://hdl.handle.net/2263/75804
dc.language.isoenen_ZA
dc.publisherUniversity of Pretoria
dc.rights© 2019 University of Pretoria. All rights reserved. The copyright in this work vests in the University of Pretoria. No part of this work may be reproduced or transmitted in any form or by any means, without the prior written permission of the University of Pretoria.
dc.subjectComputational Intelligenceen_ZA
dc.subjectData Streamsen_ZA
dc.subjectFeed Forward Neural Networksen_ZA
dc.subjectQuantum Particle Swarm Optimisationen_ZA
dc.subjectRegularisationen_ZA
dc.subjectFeed Forward Neural Networksen_ZA
dc.subjectClassification Problemsen_ZA
dc.subjectConcept driften_ZA
dc.subjectUCTD
dc.titleRegularised feed forward neural networks for streamed data classification problemsen_ZA
dc.typeDissertationen_ZA

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