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Statistics / Statistical classification / Functions and mappings / Support vector machine / Convex optimization / Function / Convex function / Locally convex topological vector space / Least squares support vector machine / Convex analysis / Mathematical analysis / Mathematics
Date: 2013-06-20 15:49:31
Statistics
Statistical classification
Functions and mappings
Support vector machine
Convex optimization
Function
Convex function
Locally convex topological vector space
Least squares support vector machine
Convex analysis
Mathematical analysis
Mathematics

Combining Multi-class SVMs with Linear Ensemble Methods that Estimate the Class Posterior Probabilities Yann Guermeur LORIA-CNRS Campus Scientique, BP 239

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