2015 IEEE Conference on Control Applications (CCA) 2015
DOI: 10.1109/cca.2015.7320757
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A majority voting classifier with probabilistic guarantees

Abstract: Abstract-This paper deals with supervised learning for classification. A new general purpose classifier is proposed that builds upon the Guaranteed Error Machine (GEM). Standard GEM can be tuned to guarantee a desired (small) misclassification probability and this is achieved by letting the classifier return an unknown label. In the proposed classifier, the size of the unknown classification region is reduced by introducing a majority voting mechanism over multiple GEMs. At the same time, the possibility of tu… Show more

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Cited by 4 publications
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