Building forests of local trees

Giuliano Armano
Primo
;
Emanuele Tamponi
Secondo
2018-01-01

Abstract

Ensemble methods have shown to be more effective than monolithic classifiers, in particular when diversity holds among their components. How to enforce diversity in classifier ensembles has received much attention from machine learning researchers, yielding a variety of different techniques and algorithms. In this paper, a novel algorithm for ensemble classifiers is proposed, in which ensemble components are trained with focus on different regions of the sample space. In so doing, diversity is mainly a consequence of the intention to limit the scope of base classifiers. The algorithm proposed in this paper shares roots with several ensemble paradigms, in particular with random forests, as it generates forests of decision trees as well. As decision trees are trained with focus on specific subsets of the sample space, the resulting ensemble is in fact a forest of “local” trees. Comparative experimental results highlight that, on average, these ensembles perform better than other relevant kinds of ensemble classifiers, including random forests.
2018
2017
Inglese
76
380
390
11
https://www.sciencedirect.com/science/article/pii/S0031320317304727
Esperti anonimi
internazionale
scientifica
Classifier ensembles; Mixture of experts; Random forests
no
Armano, Giuliano; Tamponi, Emanuele
1.1 Articolo in rivista
info:eu-repo/semantics/article
1 Contributo su Rivista::1.1 Articolo in rivista
262
2
reserved
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