An efficient Support Vector Machine based classi-fier for multiclass clustering

نویسنده

  • Prashant Sharma
چکیده

Clustering is a technique of grouping the similar items and dissimilar items so that the analysis of any data can be done efficiently and effectively. Although there are various clustering techniques implemented for the analysis of data but the clustering technique used here is based on fuzzy based clusters. Here in this paper an efficient clustering is proposed using fuzzy based SVM. The technique implemented here is efficient in terms of error rate and time and also the clustering implemented here is for the multiple numbers of

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تاریخ انتشار 2013