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Ensemble learning / Gradient boosting / Generalized functions / Distribution / Loss function / Mathematical optimization / Gradient descent / Expected value / Linear least squares / Dirac delta function
Date: 2009-11-06 11:55:58
Ensemble learning
Gradient boosting
Generalized functions
Distribution
Loss function
Mathematical optimization
Gradient descent
Expected value
Linear least squares
Dirac delta function

A General Framework for Learning an Ensemble of Decision Rules Krzysztof Dembczyński1 Wojciech Kotłowski1 Roman Słowiński1,2 Institute of Computing Science, Poznań University of Technology, Poznań, Poland

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