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Support vector machines / Statistical classification / Feature selection / Sequential minimal optimization / Sepp Hochreiter / Vector space / Duality / Least squares support vector machine / Ranking SVM
Date: 2013-01-23 02:44:45
Support vector machines
Statistical classification
Feature selection
Sequential minimal optimization
Sepp Hochreiter
Vector space
Duality
Least squares support vector machine
Ranking SVM

Nonlinear Feature Selection with the Potential Support Vector Machine Sepp Hochreiter and Klaus Obermayer Technische Universit¨ at Berlin Fakult¨

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