New Bootstrap Applications in Supervised Learning |
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Authors: | Getulio Jose Amorim Amaral Marcelo Rodrigo Portela Ferreira |
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Affiliation: | 1. Department of Statistics , Federal University of Pernambuco , Pernambuco, Brazil gjaa@de.ufpe.br;3. Department of Statistics , Federal University of Pernambuco , Pernambuco, Brazil |
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Abstract: | Some bootstrap and boosting methods for problems related to classification are introduced in this article. The first method chooses better boosting weights by using a bootstrap search algorithm. The second method is a good way to define a classification frontier. A new formulation for boosting in linear discriminant analysis is given. Since in this new formulation the uncertainty is represented by the weighted covariance matrix, it is more appropriate from the conceptual point of view. Simulation results show that the proposed methods perform well in data analysis. |
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Keywords: | Boosting Bootstrap Bumping |
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