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Artificial intelligence / Statistical classification / AdaBoost / Boosting / LogitBoost / Computational learning theory / Binary classification / Generalization error / Multiclass classification / Machine learning / Ensemble learning / Statistics
Date: 2008-02-20 19:50:06
Artificial intelligence
Statistical classification
AdaBoost
Boosting
LogitBoost
Computational learning theory
Binary classification
Generalization error
Multiclass classification
Machine learning
Ensemble learning
Statistics

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