On the training algorithms for Restricted Boltzmann Machine-Based Models

Detalhes bibliográficos
Autor(a) principal: Passos Junior, Leandro Aparecido
Data de Publicação: 2018
Tipo de documento: Tese
Idioma: eng
Título da fonte: Repositório Institucional da UFSCAR
Texto Completo: https://repositorio.ufscar.br/handle/ufscar/10828
Resumo: Deep learning techniques have been studied extensively in the last years, due to its good results related to essential tasks on a large range of applications, such as speech and face recognition, as well as objects classification. Among the most employed techniques is the Restrict Boltzmann Machines (RBMs), which are energy-based stochastic neural networks composed of two layers of neurons., i.e., visible and hidden, whose objective is to estimate the connection weights between both layers, generally using Markov chains. Recently, the scientific community spent many efforts on sampling methods, since RBMs effectiveness is directly related to the success of the sampling process. Thereby, the present work contributes with RBMs Learning area, as well as its variants DBNs and DBMs. Further, the work covers the application of meta-heuristic methods concerning a proper fine-tune of these techniques. Moreover, the validation of the model is presented in the context of image reconstruction and pattern recognition. In general, the present work presents different approaches to training these techniques, as well as the evaluation of meta-heuristic methods efficiency in training. Finally, this thesis presents a collection of works developed by the author during the study period, which was published/submitted until the present time, concerning: (i) temperature parameter introduction in DBM formulation, (ii) DBM using adaptive temperature, (iii) DBM meta-parameters optimization through meta-heuristic techniques, and (iv) iRBM meta-parameters optimization through meta-heuristic techniques.
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spelling Passos Junior, Leandro AparecidoPapa, João Paulohttp://lattes.cnpq.br/9039182932747194http://lattes.cnpq.br/37852557386715022019-01-10T12:41:32Z2019-01-10T12:41:32Z2018-12-05PASSOS JUNIOR, Leandro Aparecido. On the training algorithms for Restricted Boltzmann Machine-Based Models. 2018. Tese (Doutorado em Ciência da Computação) – Universidade Federal de São Carlos, São Carlos, 2018. Disponível em: https://repositorio.ufscar.br/handle/ufscar/10828.https://repositorio.ufscar.br/handle/ufscar/10828Deep learning techniques have been studied extensively in the last years, due to its good results related to essential tasks on a large range of applications, such as speech and face recognition, as well as objects classification. Among the most employed techniques is the Restrict Boltzmann Machines (RBMs), which are energy-based stochastic neural networks composed of two layers of neurons., i.e., visible and hidden, whose objective is to estimate the connection weights between both layers, generally using Markov chains. Recently, the scientific community spent many efforts on sampling methods, since RBMs effectiveness is directly related to the success of the sampling process. Thereby, the present work contributes with RBMs Learning area, as well as its variants DBNs and DBMs. Further, the work covers the application of meta-heuristic methods concerning a proper fine-tune of these techniques. Moreover, the validation of the model is presented in the context of image reconstruction and pattern recognition. In general, the present work presents different approaches to training these techniques, as well as the evaluation of meta-heuristic methods efficiency in training. Finally, this thesis presents a collection of works developed by the author during the study period, which was published/submitted until the present time, concerning: (i) temperature parameter introduction in DBM formulation, (ii) DBM using adaptive temperature, (iii) DBM meta-parameters optimization through meta-heuristic techniques, and (iv) iRBM meta-parameters optimization through meta-heuristic techniques.Técnicas de aprendizado em profundidade têm sido amplamente investigadas pela comunidade científica nos últimos anos, principalmente devido ao seu bom desempenho em tarefas tidas como essenciais em diversas aplicações, tais como reconhecimento de faces e comandos por voz, bem como classificação de objetos. Um dos métodos mais empregados é o das Máquinas de Boltzmann Restritas, do inglês Restricted Boltzmann Machines (RBMs), as quais são, basicamente, redes neurais estocásticas que objetivam estimar os pesos das conexões entre camadas distintas utilizando, dentre algumas técnicas, aquelas baseadas em amostragem em cadeias de Markov. Atualmente, grande parte dos trabalhos científicos têm concentrado sua atenção em métodos de amostragem nessas cadeias, dado que a sua eficiência e eficácia estão intimamente ligadas ao sucesso do processo de treinamento de uma RBM. Assim, a presente Tese contribui na área de aprendizado de RBMs, bem como de suas variantes chamadas de Deep Belief Networks e Deep Boltzmann Machines. Métodos de otimização para seleção dos parâmetros dessas técnicas também são estudados e validados no contexto de reconstrução de imagens e reconhecimento de padrões. De uma maneira geral, esta Tese objetiva estabelecer paralelos entre diferentes abordagens de treinamento dessas técnicas, bem como estudar e avaliar a eficiência de seu treinamento por meio de técnicas meta-heurí­sticas. Além disso, a proposta apresenta uma coleção de trabalhos desenvolvidos pelo autor durante o período de estudo, que foram publicados/submetidos para publicação em periódicos e conferências até o presente momento, sendo eles relacionados à: (i) inclusão do parâmetro temperatura na formulação da DBM, (ii) utilização de temperatura adaptativa para DBM, (iii) otimização dos meta-parâmetros da DBM utilizando técnicas meta-heurísticas e (iv) otimização dos meta-parâmetros da iRBM utilizando técnicas meta-heurísticas.Coordenação de Aperfeiçoamento de Pessoal de Nível Superior (CAPES)CAPES: Código do Financiamento 001engUniversidade Federal de São CarlosCâmpus São CarlosPrograma de Pós-Graduação em Ciência da Computação - PPGCCUFSCarAprendizado de MáquinaRestricted Boltzmann MachineOtimizaçãoMachine LearningOptimizationCIENCIAS EXATAS E DA TERRA::CIENCIA DA COMPUTACAO::METODOLOGIA E TECNICAS DA COMPUTACAOOn the training algorithms for Restricted Boltzmann Machine-Based Modelsinfo:eu-repo/semantics/publishedVersioninfo:eu-repo/semantics/doctoralThesisOnlineinfo:eu-repo/semantics/openAccessreponame:Repositório Institucional da UFSCARinstname:Universidade Federal de São Carlos (UFSCAR)instacron:UFSCARORIGINALtese.pdftese.pdfapplication/pdf6567414https://{{ getenv "DSPACE_HOST" "repositorio.ufscar.br" }}/bitstream/ufscar/10828/1/tese.pdf1e9081c40d9782112a37c7f042d68a1bMD51LICENSElicense.txtlicense.txttext/plain; charset=utf-81957https://{{ getenv "DSPACE_HOST" "repositorio.ufscar.br" }}/bitstream/ufscar/10828/3/license.txtae0398b6f8b235e40ad82cba6c50031dMD53TEXTtese.pdf.txttese.pdf.txtExtracted texttext/plain205203https://{{ getenv "DSPACE_HOST" "repositorio.ufscar.br" }}/bitstream/ufscar/10828/4/tese.pdf.txt3ce6578ccb8c1a55acf07908a2800a09MD54THUMBNAILtese.pdf.jpgtese.pdf.jpgIM Thumbnailimage/jpeg7821https://{{ getenv "DSPACE_HOST" "repositorio.ufscar.br" }}/bitstream/ufscar/10828/5/tese.pdf.jpg9fb7b306576bac4b916e4ee90c1984abMD55ufscar/108282019-09-11 03:35:11.126oai:repositorio.ufscar.br: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Repositório InstitucionalPUBhttps://repositorio.ufscar.br/oai/requestopendoar:43222019-09-11T03:35:11Repositório Institucional da UFSCAR - Universidade Federal de São Carlos (UFSCAR)false
dc.title.eng.fl_str_mv On the training algorithms for Restricted Boltzmann Machine-Based Models
title On the training algorithms for Restricted Boltzmann Machine-Based Models
spellingShingle On the training algorithms for Restricted Boltzmann Machine-Based Models
Passos Junior, Leandro Aparecido
Aprendizado de Máquina
Restricted Boltzmann Machine
Otimização
Machine Learning
Optimization
CIENCIAS EXATAS E DA TERRA::CIENCIA DA COMPUTACAO::METODOLOGIA E TECNICAS DA COMPUTACAO
title_short On the training algorithms for Restricted Boltzmann Machine-Based Models
title_full On the training algorithms for Restricted Boltzmann Machine-Based Models
title_fullStr On the training algorithms for Restricted Boltzmann Machine-Based Models
title_full_unstemmed On the training algorithms for Restricted Boltzmann Machine-Based Models
title_sort On the training algorithms for Restricted Boltzmann Machine-Based Models
author Passos Junior, Leandro Aparecido
author_facet Passos Junior, Leandro Aparecido
author_role author
dc.contributor.authorlattes.por.fl_str_mv http://lattes.cnpq.br/3785255738671502
dc.contributor.author.fl_str_mv Passos Junior, Leandro Aparecido
dc.contributor.advisor1.fl_str_mv Papa, João Paulo
dc.contributor.advisor1Lattes.fl_str_mv http://lattes.cnpq.br/9039182932747194
contributor_str_mv Papa, João Paulo
dc.subject.por.fl_str_mv Aprendizado de Máquina
Restricted Boltzmann Machine
Otimização
topic Aprendizado de Máquina
Restricted Boltzmann Machine
Otimização
Machine Learning
Optimization
CIENCIAS EXATAS E DA TERRA::CIENCIA DA COMPUTACAO::METODOLOGIA E TECNICAS DA COMPUTACAO
dc.subject.eng.fl_str_mv Machine Learning
Optimization
dc.subject.cnpq.fl_str_mv CIENCIAS EXATAS E DA TERRA::CIENCIA DA COMPUTACAO::METODOLOGIA E TECNICAS DA COMPUTACAO
description Deep learning techniques have been studied extensively in the last years, due to its good results related to essential tasks on a large range of applications, such as speech and face recognition, as well as objects classification. Among the most employed techniques is the Restrict Boltzmann Machines (RBMs), which are energy-based stochastic neural networks composed of two layers of neurons., i.e., visible and hidden, whose objective is to estimate the connection weights between both layers, generally using Markov chains. Recently, the scientific community spent many efforts on sampling methods, since RBMs effectiveness is directly related to the success of the sampling process. Thereby, the present work contributes with RBMs Learning area, as well as its variants DBNs and DBMs. Further, the work covers the application of meta-heuristic methods concerning a proper fine-tune of these techniques. Moreover, the validation of the model is presented in the context of image reconstruction and pattern recognition. In general, the present work presents different approaches to training these techniques, as well as the evaluation of meta-heuristic methods efficiency in training. Finally, this thesis presents a collection of works developed by the author during the study period, which was published/submitted until the present time, concerning: (i) temperature parameter introduction in DBM formulation, (ii) DBM using adaptive temperature, (iii) DBM meta-parameters optimization through meta-heuristic techniques, and (iv) iRBM meta-parameters optimization through meta-heuristic techniques.
publishDate 2018
dc.date.issued.fl_str_mv 2018-12-05
dc.date.accessioned.fl_str_mv 2019-01-10T12:41:32Z
dc.date.available.fl_str_mv 2019-01-10T12:41:32Z
dc.type.status.fl_str_mv info:eu-repo/semantics/publishedVersion
dc.type.driver.fl_str_mv info:eu-repo/semantics/doctoralThesis
format doctoralThesis
status_str publishedVersion
dc.identifier.citation.fl_str_mv PASSOS JUNIOR, Leandro Aparecido. On the training algorithms for Restricted Boltzmann Machine-Based Models. 2018. Tese (Doutorado em Ciência da Computação) – Universidade Federal de São Carlos, São Carlos, 2018. Disponível em: https://repositorio.ufscar.br/handle/ufscar/10828.
dc.identifier.uri.fl_str_mv https://repositorio.ufscar.br/handle/ufscar/10828
identifier_str_mv PASSOS JUNIOR, Leandro Aparecido. On the training algorithms for Restricted Boltzmann Machine-Based Models. 2018. Tese (Doutorado em Ciência da Computação) – Universidade Federal de São Carlos, São Carlos, 2018. Disponível em: https://repositorio.ufscar.br/handle/ufscar/10828.
url https://repositorio.ufscar.br/handle/ufscar/10828
dc.language.iso.fl_str_mv eng
language eng
dc.rights.driver.fl_str_mv info:eu-repo/semantics/openAccess
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dc.publisher.none.fl_str_mv Universidade Federal de São Carlos
Câmpus São Carlos
dc.publisher.program.fl_str_mv Programa de Pós-Graduação em Ciência da Computação - PPGCC
dc.publisher.initials.fl_str_mv UFSCar
publisher.none.fl_str_mv Universidade Federal de São Carlos
Câmpus São Carlos
dc.source.none.fl_str_mv reponame:Repositório Institucional da UFSCAR
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instacron:UFSCAR
instname_str Universidade Federal de São Carlos (UFSCAR)
instacron_str UFSCAR
institution UFSCAR
reponame_str Repositório Institucional da UFSCAR
collection Repositório Institucional da UFSCAR
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