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ICANN
1997
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Neural Networks
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ICANN 1997
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A Boosting Algorithm for Regression
14 years 3 months ago
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A new boosting algorithm ADABOOST-R for regression problems is presented and upper bound on the error is obtained. Experimental results to compare ADABOOST-R and other learning algorithms are given.
Alberto Bertoni, Paola Campadelli, M. Parodi
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ICANN 1997
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Learning Algorithms
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Neural Networks
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Regression Problems
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Upper Bound
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Added
07 Aug 2010
Updated
07 Aug 2010
Type
Conference
Year
1997
Where
ICANN
Authors
Alberto Bertoni, Paola Campadelli, M. Parodi
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Researcher Info
Neural Networks Study Group
Computer Vision