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Support vector machine / Kernel methods / Binary classification / Supervised learning / Multiclass classification / Regularization / Multi-label classification / Regression analysis / Least squares support vector machine / Statistics / Machine learning / Statistical classification
Date: 2008-10-11 19:16:28
Support vector machine
Kernel methods
Binary classification
Supervised learning
Multiclass classification
Regularization
Multi-label classification
Regression analysis
Least squares support vector machine
Statistics
Machine learning
Statistical classification

Supervised learning for computer vision: Theory and algorithms - Part II Francis Bach1 & Jean-Yves Audibert2,1 1. 2.

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