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Statistical classification / Machine learning / Learning / Artificial intelligence / Statistics / Multi-label classification / Support vector machine / Naive Bayes classifier / AdaBoost / Binary classification / Classifier chains / Multiclass classification
Date: 2010-10-25 05:10:52
Statistical classification
Machine learning
Learning
Artificial intelligence
Statistics
Multi-label classification
Support vector machine
Naive Bayes classifier
AdaBoost
Binary classification
Classifier chains
Multiclass classification

On-line Multi-label Classification A Problem Transformation Approach Jesse Read Supervisors: Bernhard Pfahringer, Geoff Holmes

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