Concept Learning and Feature Selection Based on Square-Error Clustering
作者:Boris Mirkin
摘要
Based on a reinterpretation of the square-error criterion for classical clustering, a “separate-and-conquer” version of K-Means clustering is presented and a contribution weight is determined for each variable of every cluster. The weight is used to produce conjunctive concepts that describe clusters and to reduce or transform the variable (feature) space.
论文关键词:Clustering, variable weights, conjunctive concepts, feature selection, feature space transformation
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论文官网地址:https://doi.org/10.1023/A:1007567018844