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Multiclass classification / Margin classifier / Classifier / Support vector machine / Naive Bayes classifier / Viola–Jones object detection framework / Binary classification / Classifier chains / Classification rule / Statistics / Statistical classification / Linear classifier
Date: 2011-11-20 00:44:24
Multiclass classification
Margin classifier
Classifier
Support vector machine
Naive Bayes classifier
Viola–Jones object detection framework
Binary classification
Classifier chains
Classification rule
Statistics
Statistical classification
Linear classifier

valueOfClassifier-NIPS-2011.dvi

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