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AdaBoost / Gradient boosting / Decision stump / LogitBoost / Boosting methods for object categorization / LPBoost / Machine learning / Ensemble learning / Boosting
Date: 2013-01-08 00:54:06
AdaBoost
Gradient boosting
Decision stump
LogitBoost
Boosting methods for object categorization
LPBoost
Machine learning
Ensemble learning
Boosting

Human Boosting Harsh Pareek [removed] Pradeep Ravikumar [removed]

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