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A Clustering Preserving Transformation for k-Means Algorithm Output
International Syposium on Methodologies for Intelligent Systems (ISMIS), 2022
Abstract
This note introduces a novel clustering preserving transformation of cluster sets obtained from -means algorithm. This transformation may be used to generate new labeled data{}sets from existent ones. It is more flexible that Kleinberg axiom based consistency transformation because data points in a cluster can be moved away and datapoints between clusters may come closer together.
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