On the size of training set and the benefit from ensemble


Autoria(s): Zhou, Zhi-Hua; Wei, Dan; Li, Gang; Dai, Honghua
Data(s)

01/01/2004

Resumo

In this paper, the impact of the size of the training set on the benefit from ensemble, i.e. the gains obtained by employing ensemble learning paradigms, is empirically studied. Experiments on Bagged/ Boosted J4.8 decision trees with/without pruning show that enlarging the training set tends to improve the benefit from Boosting but does not significantly impact the benefit from Bagging. This phenomenon is then explained from the view of bias-variance reduction. Moreover, it is shown that even for Boosting, the benefit does not always increase consistently along with the increase of the training set size since single learners sometimes may learn relatively more from additional training data that are randomly provided than ensembles do. Furthermore, it is observed that the benefit from ensemble of unpruned decision trees is usually bigger than that from ensemble of pruned decision trees. This phenomenon is then explained from the view of error-ambiguity balance.<br />

Identificador

http://hdl.handle.net/10536/DRO/DU:30008668

Idioma(s)

eng

Publicador

Springer-Verlag

Relação

http://dro.deakin.edu.au/eserv/DU:30008668/n20040186.pdf

http://springerlink.metapress.com/content/0jhvtafl17m8n8gw/fulltext.pdf

Direitos

2004, Springer-Verlag

Tipo

Journal Article