Mañana, JUEVES, 24 DE ABRIL, el sistema se apagará debido a tareas habituales de mantenimiento a partir de las 9 de la mañana. Lamentamos las molestias.
Building heterogeneous ensembles by pooling homogeneous ensembles
Entidad
UAM. Departamento de Ingeniería InformáticaEditor
SpringerFecha de edición
2021-10-13Cita
10.1007/s13042-021-01442-1
International Journal of Machine Learning and Cybernetics volume 13.2 (2022): 551-558
ISSN
1868-8071DOI
10.1007/s13042-021-01442-1Financiado por
The authors acknowledge financial support from PID2019-106827GB-I00/AEI/10.13039/501100011033Proyecto
Gobierno de España. PID2019-106827GB-I00/AEI/10.13039/501100011033Versión del editor
https://doi.org/10.1007/s13042-021-01442-1Materias
Ensembles; Heterogeneous; Homogeneous; Optimal composition; Simplex; InformáticaNota
The version of record of this article, first published in International Journal of Machine Learning and Cybernetics , is available online at Publisher’s website: http://dx.doi.org/10.1007/s13042-021-01442-1Derechos
© The Author(s) 2021, corrected publication 2021Resumen
Heterogeneous ensembles consist of predictors of different types, which are likely to have different biases. If these biases are complementary, the combination of their decisions is beneficial and could be superior to homogeneous ensembles. In this paper, a family of heterogeneous ensembles is built by pooling classifiers from M homogeneous ensembles of different types of size T. Depending on the fraction of base classifiers of each type, a particular heterogeneous combination in this family is represented by a point in a regular simplex in M dimensions. The M vertices of this simplex represent the different homogeneous ensembles. A displacement away from one of these vertices effects a smooth transformation of the corresponding homogeneous ensemble into a heterogeneous one. The optimal composition of such heterogeneous ensemble can be determined using cross-validation or, if bootstrap samples are used to build the individual classifiers, out-of-bag data. The proposed heterogeneous ensemble building strategy, composed of neural networks, SVMs, and random trees (i.e. from a standard random forest), is analyzed in a comprehensive empirical analysis and compared to a benchmark of other heterogeneous and homogeneous ensembles. The achieved results illustrate the gains that can be achieved by the proposed ensemble creation method with respect to both homogeneous ensembles and to the tested heterogeneous building strategy at a fraction of the training cost.
Lista de ficheros
Google Scholar:Sabzevari, Maryam
-
Martínez Muñoz, Gonzalo
-
Suárez González, Alberto
Lista de colecciones del ítem
Registros relacionados
Mostrando ítems relacionados por título, autor, creador y materia.