Individual And Ensemble Pattern Classification Models Using Enhanced Fuzzy Min-Max Neural Networks

Pattern classification is one of the major components for the design and development of a computerized pattern recognition system. Focused on computational intelligence models, this thesis describes in-depth investigations on two possible directions to design robust and flexible pattern classificati...

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Main Author: F. M., Mohammed
Format: Thesis
Language:English
Published: 2014
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Online Access:http://eprints.usm.my/46164/1/Mohammed%20F.%20M.24.pdf
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spelling my.usm.eprints.46164 http://eprints.usm.my/46164/ Individual And Ensemble Pattern Classification Models Using Enhanced Fuzzy Min-Max Neural Networks F. M., Mohammed TK1-9971 Electrical engineering. Electronics. Nuclear engineering Pattern classification is one of the major components for the design and development of a computerized pattern recognition system. Focused on computational intelligence models, this thesis describes in-depth investigations on two possible directions to design robust and flexible pattern classification models with high performance. Firstly is by enhancing the learning algorithm of a neural-fuzzy network; and secondly by devising an ensemble model to combine the predictions from multiple neural-fuzzy networks using an agent-based framework. Owing to a number of salient features which include the ability of learning incrementally and establishing nonlinear decision boundary with hyperboxes, the Fuzzy Min-Max (FMM) network is selected as the backbone for designing useful and usable pattern classification models in this research. Two enhanced FMM variants, i.e. EFMM and EFMM2, are proposed to address a number of limitations in the original FMM learning algorithm. In EFMM, three heuristic rules are introduced to improve the hyperbox expansion, overlap test, and contraction processes. The network complexity and noise tolerance issues are undertaken in EFMM2. In addition, an agent-based framework is capitalized as a robust ensemble model to house multiple EFMM-based networks. A useful trust measurement method known as Certified Belief in Strength (CBS) is developed and incorporated into the ensemble model for exploiting the predictive performances of different EFMM-based networks. 2014-02 Thesis NonPeerReviewed application/pdf en http://eprints.usm.my/46164/1/Mohammed%20F.%20M.24.pdf F. M., Mohammed (2014) Individual And Ensemble Pattern Classification Models Using Enhanced Fuzzy Min-Max Neural Networks. PhD thesis, Universiti Sains Malaysia.
institution Universiti Sains Malaysia
building Hamzah Sendut Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Sains Malaysia
content_source USM Institutional Repository
url_provider http://eprints.usm.my/
language English
topic TK1-9971 Electrical engineering. Electronics. Nuclear engineering
spellingShingle TK1-9971 Electrical engineering. Electronics. Nuclear engineering
F. M., Mohammed
Individual And Ensemble Pattern Classification Models Using Enhanced Fuzzy Min-Max Neural Networks
description Pattern classification is one of the major components for the design and development of a computerized pattern recognition system. Focused on computational intelligence models, this thesis describes in-depth investigations on two possible directions to design robust and flexible pattern classification models with high performance. Firstly is by enhancing the learning algorithm of a neural-fuzzy network; and secondly by devising an ensemble model to combine the predictions from multiple neural-fuzzy networks using an agent-based framework. Owing to a number of salient features which include the ability of learning incrementally and establishing nonlinear decision boundary with hyperboxes, the Fuzzy Min-Max (FMM) network is selected as the backbone for designing useful and usable pattern classification models in this research. Two enhanced FMM variants, i.e. EFMM and EFMM2, are proposed to address a number of limitations in the original FMM learning algorithm. In EFMM, three heuristic rules are introduced to improve the hyperbox expansion, overlap test, and contraction processes. The network complexity and noise tolerance issues are undertaken in EFMM2. In addition, an agent-based framework is capitalized as a robust ensemble model to house multiple EFMM-based networks. A useful trust measurement method known as Certified Belief in Strength (CBS) is developed and incorporated into the ensemble model for exploiting the predictive performances of different EFMM-based networks.
format Thesis
author F. M., Mohammed
author_facet F. M., Mohammed
author_sort F. M., Mohammed
title Individual And Ensemble Pattern Classification Models Using Enhanced Fuzzy Min-Max Neural Networks
title_short Individual And Ensemble Pattern Classification Models Using Enhanced Fuzzy Min-Max Neural Networks
title_full Individual And Ensemble Pattern Classification Models Using Enhanced Fuzzy Min-Max Neural Networks
title_fullStr Individual And Ensemble Pattern Classification Models Using Enhanced Fuzzy Min-Max Neural Networks
title_full_unstemmed Individual And Ensemble Pattern Classification Models Using Enhanced Fuzzy Min-Max Neural Networks
title_sort individual and ensemble pattern classification models using enhanced fuzzy min-max neural networks
publishDate 2014
url http://eprints.usm.my/46164/1/Mohammed%20F.%20M.24.pdf
http://eprints.usm.my/46164/
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