Learning Kernels from genetic profiles to discriminate tumor subtypes

Autores
Palazzo, Martín; Beauseroy, Pierre; Koile, Daniel; Yankilevich, Patricio
Año de publicación
2018
Idioma
inglés
Tipo de recurso
documento de conferencia
Estado
versión publicada
Descripción
Our work aims to perform the feature selection step on Multiple Kernel Learning by optimizing the Kernel Target Alignment score. It begins by building feature-wise gaussian kernel functions. Then by a constrained linear combination of the feature-wise kernels, we aim to increase the Kernel Target Alignment to obtain a new optimized custom kernel. The linear combination results in a sparse solution where only few kernels survive to improve KTA and consequently a reduced feature subset is obtained. Reducing considerably the original gene set allow to study deeper the selected genes for clinical purposes. The higher the KTA obtained, the better the feature selection, since we want to build custom kernels to use them for classification purposes later. The final kernel after optimizing the KTA is built by a linear combination of ‘Ki’ kernels, each one associated to a μi coefficient. The μ vector is computed during the optimization process.
Sociedad Argentina de Informática e Investigación Operativa
Materia
Ciencias Informáticas
kernel target alignment
multiple kernel learning
somatic mutation
breast cancer
support vector classification
feature selection
Nivel de accesibilidad
acceso abierto
Condiciones de uso
http://creativecommons.org/licenses/by-sa/3.0/
Repositorio
SEDICI (UNLP)
Institución
Universidad Nacional de La Plata
OAI Identificador
oai:sedici.unlp.edu.ar:10915/70649

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network_name_str SEDICI (UNLP)
spelling Learning Kernels from genetic profiles to discriminate tumor subtypesPalazzo, MartínBeauseroy, PierreKoile, DanielYankilevich, PatricioCiencias Informáticaskernel target alignmentmultiple kernel learningsomatic mutationbreast cancersupport vector classificationfeature selectionOur work aims to perform the feature selection step on Multiple Kernel Learning by optimizing the Kernel Target Alignment score. It begins by building feature-wise gaussian kernel functions. Then by a constrained linear combination of the feature-wise kernels, we aim to increase the Kernel Target Alignment to obtain a new optimized custom kernel. The linear combination results in a sparse solution where only few kernels survive to improve KTA and consequently a reduced feature subset is obtained. Reducing considerably the original gene set allow to study deeper the selected genes for clinical purposes. The higher the KTA obtained, the better the feature selection, since we want to build custom kernels to use them for classification purposes later. The final kernel after optimizing the KTA is built by a linear combination of ‘Ki’ kernels, each one associated to a μi coefficient. The μ vector is computed during the optimization process.Sociedad Argentina de Informática e Investigación Operativa2018-09info:eu-repo/semantics/conferenceObjectinfo:eu-repo/semantics/publishedVersionResumenhttp://purl.org/coar/resource_type/c_5794info:ar-repo/semantics/documentoDeConferenciaapplication/pdf88-90http://sedici.unlp.edu.ar/handle/10915/70649enginfo:eu-repo/semantics/altIdentifier/url/http://47jaiio.sadio.org.ar/sites/default/files/AGRANDA-09.pdfinfo:eu-repo/semantics/altIdentifier/issn/2451-7569info:eu-repo/semantics/openAccesshttp://creativecommons.org/licenses/by-sa/3.0/Creative Commons Attribution-ShareAlike 3.0 Unported (CC BY-SA 3.0)reponame:SEDICI (UNLP)instname:Universidad Nacional de La Platainstacron:UNLP2025-10-15T11:03:20Zoai:sedici.unlp.edu.ar:10915/70649Institucionalhttp://sedici.unlp.edu.ar/Universidad públicaNo correspondehttp://sedici.unlp.edu.ar/oai/snrdalira@sedici.unlp.edu.arArgentinaNo correspondeNo correspondeNo correspondeopendoar:13292025-10-15 11:03:20.963SEDICI (UNLP) - Universidad Nacional de La Platafalse
dc.title.none.fl_str_mv Learning Kernels from genetic profiles to discriminate tumor subtypes
title Learning Kernels from genetic profiles to discriminate tumor subtypes
spellingShingle Learning Kernels from genetic profiles to discriminate tumor subtypes
Palazzo, Martín
Ciencias Informáticas
kernel target alignment
multiple kernel learning
somatic mutation
breast cancer
support vector classification
feature selection
title_short Learning Kernels from genetic profiles to discriminate tumor subtypes
title_full Learning Kernels from genetic profiles to discriminate tumor subtypes
title_fullStr Learning Kernels from genetic profiles to discriminate tumor subtypes
title_full_unstemmed Learning Kernels from genetic profiles to discriminate tumor subtypes
title_sort Learning Kernels from genetic profiles to discriminate tumor subtypes
dc.creator.none.fl_str_mv Palazzo, Martín
Beauseroy, Pierre
Koile, Daniel
Yankilevich, Patricio
author Palazzo, Martín
author_facet Palazzo, Martín
Beauseroy, Pierre
Koile, Daniel
Yankilevich, Patricio
author_role author
author2 Beauseroy, Pierre
Koile, Daniel
Yankilevich, Patricio
author2_role author
author
author
dc.subject.none.fl_str_mv Ciencias Informáticas
kernel target alignment
multiple kernel learning
somatic mutation
breast cancer
support vector classification
feature selection
topic Ciencias Informáticas
kernel target alignment
multiple kernel learning
somatic mutation
breast cancer
support vector classification
feature selection
dc.description.none.fl_txt_mv Our work aims to perform the feature selection step on Multiple Kernel Learning by optimizing the Kernel Target Alignment score. It begins by building feature-wise gaussian kernel functions. Then by a constrained linear combination of the feature-wise kernels, we aim to increase the Kernel Target Alignment to obtain a new optimized custom kernel. The linear combination results in a sparse solution where only few kernels survive to improve KTA and consequently a reduced feature subset is obtained. Reducing considerably the original gene set allow to study deeper the selected genes for clinical purposes. The higher the KTA obtained, the better the feature selection, since we want to build custom kernels to use them for classification purposes later. The final kernel after optimizing the KTA is built by a linear combination of ‘Ki’ kernels, each one associated to a μi coefficient. The μ vector is computed during the optimization process.
Sociedad Argentina de Informática e Investigación Operativa
description Our work aims to perform the feature selection step on Multiple Kernel Learning by optimizing the Kernel Target Alignment score. It begins by building feature-wise gaussian kernel functions. Then by a constrained linear combination of the feature-wise kernels, we aim to increase the Kernel Target Alignment to obtain a new optimized custom kernel. The linear combination results in a sparse solution where only few kernels survive to improve KTA and consequently a reduced feature subset is obtained. Reducing considerably the original gene set allow to study deeper the selected genes for clinical purposes. The higher the KTA obtained, the better the feature selection, since we want to build custom kernels to use them for classification purposes later. The final kernel after optimizing the KTA is built by a linear combination of ‘Ki’ kernels, each one associated to a μi coefficient. The μ vector is computed during the optimization process.
publishDate 2018
dc.date.none.fl_str_mv 2018-09
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info:eu-repo/semantics/publishedVersion
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info:ar-repo/semantics/documentoDeConferencia
format conferenceObject
status_str publishedVersion
dc.identifier.none.fl_str_mv http://sedici.unlp.edu.ar/handle/10915/70649
url http://sedici.unlp.edu.ar/handle/10915/70649
dc.language.none.fl_str_mv eng
language eng
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info:eu-repo/semantics/altIdentifier/issn/2451-7569
dc.rights.none.fl_str_mv info:eu-repo/semantics/openAccess
http://creativecommons.org/licenses/by-sa/3.0/
Creative Commons Attribution-ShareAlike 3.0 Unported (CC BY-SA 3.0)
eu_rights_str_mv openAccess
rights_invalid_str_mv http://creativecommons.org/licenses/by-sa/3.0/
Creative Commons Attribution-ShareAlike 3.0 Unported (CC BY-SA 3.0)
dc.format.none.fl_str_mv application/pdf
88-90
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instname:Universidad Nacional de La Plata
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repository.name.fl_str_mv SEDICI (UNLP) - Universidad Nacional de La Plata
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