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Learning / AdaBoost / Boosting / Statistical classification / Type I and type II errors / Gain / Face detection / Bootstrapping / Boosting methods for object categorization / Ensemble learning / Artificial intelligence / Statistics
Date: 2005-03-30 03:00:23
Learning
AdaBoost
Boosting
Statistical classification
Type I and type II errors
Gain
Face detection
Bootstrapping
Boosting methods for object categorization
Ensemble learning
Artificial intelligence
Statistics

Department of Electrical and Computer Systems Engineering Technical Report MECSE

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Source URL: www.ecse.monash.edu.au

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