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Machine learning / Support vector machines / Information theory / Differential geometry / Least squares support vector machine / Statistics / Statistical classification / Hinge loss
Date: 2009-06-21 14:47:09
Machine learning
Support vector machines
Information theory
Differential geometry
Least squares support vector machine
Statistics
Statistical classification
Hinge loss

Max-margin Methods Notation Notation Example images (v1T, v2T,…,v5T)T, where

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