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Statistical classification / Statistics / Data / Classifier chains / Multi-label classification / Multiclass classification / Support vector machine / Probabilistic classification / Classifier / Naive Bayes classifier / K-nearest neighbors algorithm
Date: 2014-02-24 06:09:18
Statistical classification
Statistics
Data
Classifier chains
Multi-label classification
Multiclass classification
Support vector machine
Probabilistic classification
Classifier
Naive Bayes classifier
K-nearest neighbors algorithm

IEEE TRANSACTIONS ON KNOWLEDGE AND DATA ENGINEERING 1 Multi-Dimensional Classification with Super-Classes Jesse Read, Concha Bielza, Member, IEEE, Pedro Larra˜naga, Member, IEEE,

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