A COMPARISON BETWEEN K-MEANS AND SUPPORT VECTOR CLUSTERING OF CATEGORICAL DATA

2009 
Standard clustering methods fail when data are characterized by non-linear associations. A suitable solution consists in mapping data in a higher dimensional feature space where clusters are separable. The aim of the present contribution is to propose a new technique in this context and to compare it with k-means technique.
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