Ensemble methods

Versione 1.2 (12,5 KB) da Mao Shasha
Ensemble methods include four strategies which can obtain samples of ensemble individual learners
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Aggiornato 26 nov 2015

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There are four ensemble strategies--- random selecting samples, Bagging strategy, Random subspace method, Rotation forest method. They are ensemble methods which can obtain the samples of individual learner. Bagging method is a classical ensemble strategy proposed by Leo Breiman in Ref [L.Breiman. Bagging Predictors. Machine learning, vol.24(2), pp.123-140, 1996.]. Random subspace method is proposed by Tin Kam Ho in Ref [Ho T.K.. The Random Subspace Method for Constructing Decision Forests. IEEE Transactions on pattern analysis and Machine Intelligence, vol.20(8), pp.832-844, 1998.]. Rotation forest method is better than bagging, random subspace, adaboost methods and so on, which is proposed by Juan J. Rodriguez and Ludmila I. Kuncheva in Ref [J.J. Rodriguez, L.I. Kuncheva. Rotation Forest: A New Classifier Ensemble Method. IEEE transactions on Pattern Analysis and Machine Intelligence, vol.28(10), pp.1619-1630, October, 2006.].

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Mao Shasha (2025). Ensemble methods (https://it.mathworks.com/matlabcentral/fileexchange/38225-ensemble-methods), MATLAB Central File Exchange. Recuperato .

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1.2

Add Nearest_Neighbor.m and update bootstrap.m.

1.1.0.0

some detailed descriptions are added.

1.0.0.0