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FLAIRS
2001

Improvement of Nearest-Neighbor Classifiers via Support Vector Machines

13 years 5 months ago
Improvement of Nearest-Neighbor Classifiers via Support Vector Machines
Theoretically well-founded, Support Vector Machines (SVM)are well-knownto be suited for efficiently solving classification problems. Althoughimprovedgeneralization is the maingoal of this newtype of learning machine,recent workshave tried to use themdifferently. For instance, feature selection has beenrecently viewedas an indirect consequenceof the SVM approach. In this paper, we also exploit SVMsdifferently from what they are originally intended. We investigatethemasa datareductiontechnique,useful forimprovingcase-basedlearningalgorithms,sensitive tonoiseandcomputationallyexpensive.Adoptingthe marginmaximizationprincipleforreducingtheStructuralRisk,ourstrategyallowsnotonlytoeliminateirrelevantinstancesbutalsotoimprovetheperformances ofthestandardk-Nearest-Neighborclassifier.A wide comparativestudyispresentedonseveralbenchmarks ofUCIrepository,showingtheutilityofourapproach.
Marc Sebban, Richard Nock
Added 31 Oct 2010
Updated 31 Oct 2010
Type Conference
Year 2001
Where FLAIRS
Authors Marc Sebban, Richard Nock
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