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Statistical classification / Machine learning / Learning / Artificial intelligence / Support vector machine / Polynomial kernel / LIBSVM / Quadratic / Classifier / XTR / Least squares support vector machine
Date: 2015-01-01 11:20:46
Statistical classification
Machine learning
Learning
Artificial intelligence
Support vector machine
Polynomial kernel
LIBSVM
Quadratic
Classifier
XTR
Least squares support vector machine

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