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Please use this identifier to cite or link to this item: http://hdl.handle.net/10016/6100

Google™ Scholar. Others By: Ledezma, Agapito - Aler, Ricardo - Borrajo, Daniel
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Title: Empirical study of a stacking state-space
Author(s): Ledezma, Agapito
Aler, Ricardo
Borrajo, Daniel
Publisher: IEEE
Issued date: Nov-2001
Citation: International Conference on Tools with Artificial Intelligence, 2001, p. 210-217
URI: http://hdl.handle.net/10016/6100
ISBN: 0-7695-1417-0
DOI: http://dx.doi.org/10.1109/ICTAI.2001.974467
Description: Proceedings of: 13th International Conference on Tools with Artificial Intelligence, 7-9 Nov. 2001 Dallas
Abstract: Nowadays, there is no doubt that machine learning techniques can be successfully applied to data mining tasks. Currently, the combination of several classifiers is one of the most active fields within inductive machine learning. Examples of such techniques are boosting, bagging and stacking. From these three techniques, stacking is perhaps the less used one. One of the main reasons for this relates to the difficulty to define and parameterize its components: selecting which combination of base classifiers to use, and which classifier to use as the meta-classifier. One could use for that purpose simple search methods (e.g. hill climbing), or more complex ones (e.g. genetic algorithms). But before search is attempted, it is important to know the properties of the search space itself. In this paper we study exhaustively the space of stacking systems that can be built by using four base learning systems: C4.5, IB1, Naive Bayes, and PART. The results that have been obtained in this paper will be useful for designing new Stacking-based algorithms and tools.
Review: PeerReviewed
Publisher version: http://dx.doi.org/10.1109/ICTAI.2001.974467
Keywords: Data mining
Learning (artificial intelligence)
Rights: © IEEE
Appears in Collections:DI - PLG - Capítulos de Monografías
DI - GCERN - Capítulos de Monografías
DI - GCERN - Comunicaciones en Congresos y otros eventos
DI - PLG - Comunicaciones en Congresos y otros eventos

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