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Please use this identifier to cite or link to this item: http://hdl.handle.net/10016/3982

Google™ Scholar. Others By: Fernández, Fernando - Isasi, Pedro
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Title: Local feature weighting in nearest prototype classification
Author(s): Fernández, Fernando
Isasi, Pedro
Publisher: IEEE
Issued date: Jan-2008
Citation: IEEE Transactions on Neural Networks, 2008, vol. 19, n. 1, p. 40-53
URI: http://hdl.handle.net/10016/3982
ISSN: 1045-9227
DOI: http://dx.doi.org/10.1109/TNN.2007.902955
Abstract: The distance metric is the corner stone of nearest neighbor (NN)-based methods, and therefore, of nearest prototype (NP) algorithms. That is because they classify depending on the similarity of the data. When the data is characterized by a set of features which may contribute to the classification task in different levels, feature weighting or selection is required, sometimes in a local sense. However, local weighting is typically restricted to NN approaches. In this paper, we introduce local feature weighting (LFW) in NP classification. LFW provides each prototype its own weight vector, opposite to typical global weighting methods found in the NP literature, where all the prototypes share the same one. Providing each prototype its own weight vector has a novel effect in the borders of the Voronoi regions generated: They become nonlinear. We have integrated LFW with a previously developed evolutionary nearest prototype classifier (ENPC). The experiments performed both in artificial and real data sets demonstrate that the resulting algorithm that we call LFW in nearest prototype classification (LFW-NPC) avoids overfitting on training data in domains where the features may have different contribution to the classification task in different areas of the feature space. This generalization capability is also reflected in automatically obtaining an accurate and reduced set of prototypes.
Review: PeerReviewed
Publisher version: http://dx.doi.org/10.1109/TNN.2007.902955
Keywords: Evolutionary learning
Local feature weighting
Nearest prototype (NP) classification
Weighted Euclidean
Rights: © IEEE
Appears in Collections:DI - GCERN - Artículos de revistas científicas

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