Ordinal classification for interval-valued data and interval-valued functional data
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Otros documentos de la autoría: Alcacer Sales, Aleix; Martínez Garcia, marina; Epifanio, Irene
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Ordinal classification for interval-valued data and interval-valued functional dataFecha de publicación
2023-10-29Editor
ElsevierCita bibliográfica
ALCACER, Aleix; MARTINEZ-GARCIA, Marina; EPIFANIO, Irene. Ordinal classification for interval-valued data and interval-valued functional data. Expert Systems with Applications, 2024, vol. 238, p. 122277.Tipo de documento
info:eu-repo/semantics/articleVersión
info:eu-repo/semantics/submittedVersionPalabras clave / Materias
Resumen
The aim of ordinal classification is to predict the ordered labels of the output from a set of observed inputs. Interval-valued data refers to data in the form of intervals. For the first time, interval-valued data ... [+]
The aim of ordinal classification is to predict the ordered labels of the output from a set of observed inputs. Interval-valued data refers to data in the form of intervals. For the first time, interval-valued data and interval-valued functional data are considered as inputs in an ordinal classification problem. Six ordinal classifiers for interval data and interval-valued functional data are proposed. Three of them are parametric, one of them is based on ordinal binary decompositions and the other two are based on ordered logistic regression. The other three methods are based on the use of distances between interval data and kernels on interval data. One of the methods uses the weighted
-nearest-neighbor technique for ordinal classification. Another method considers kernel principal component analysis plus an ordinal classifier. And the sixth method, which is the method that performs best, uses a kernel-induced ordinal random forest. They are compared with naïve approaches in an extensive experimental study with synthetic and original real data sets, about human global development, and weather data. The results show that considering ordering and interval-valued information improves the accuracy. The source code and data sets are available at https://github.com/aleixalcacer/OCFIVD [-]
Entidad financiadora
Ministerio de Ciencia, Innovación y Universidades (Spain) | Generalitat Valenciana | Universitat Jaume I
Código del proyecto o subvención
FPU grant FPU20/0182 | PID2022-141699NB-I00 | PID2020-118763GA-I00 | PID2020-118071GB-I00 | CIGE/2022/066 | UJI-A2022-12
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© 2023 Elsevier Ltd. All rights reserved.
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info:eu-repo/semantics/openAccess
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