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AUTHOR

Ramón Alberto Mollineda

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An efficient prototype merging strategy for the condensed 1-NN rule through class-conditional hierarchical clustering

2002

Abstract A generalized prototype-based classification scheme founded on hierarchical clustering is proposed. The basic idea is to obtain a condensed 1-NN classification rule by merging the two same-class nearest clusters, provided that the set of cluster representatives correctly classifies all the original points. Apart from the quality of the obtained sets and its flexibility which comes from the fact that different intercluster measures and criteria can be used, the proposed scheme includes a very efficient four-stage procedure which conveniently exploits geometric cluster properties to decide about each possible merge. Empirical results demonstrate the merits of the proposed algorithm t…

Single-linkage clusteringcomputer.software_genreComplete-linkage clusteringHierarchical clusteringk-nearest neighbors algorithmArtificial IntelligenceNearest-neighbor chain algorithmClassification ruleSignal ProcessingCluster (physics)Computer Vision and Pattern RecognitionData miningMerge (version control)computerSoftwareMathematicsPattern Recognition
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