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arxiv: 1506.02535 · v5 · pith:TX2MDBNFnew · submitted 2015-06-08 · 💻 cs.LG

Efficient Learning of Ensembles with QuadBoost

classification 💻 cs.LG
keywords quadboostensemblesboundefficientgenerallearningmethodrisk
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We first present a general risk bound for ensembles that depends on the Lp norm of the weighted combination of voters which can be selected from a continuous set. We then propose a boosting method, called QuadBoost, which is strongly supported by the general risk bound and has very simple rules for assigning the voters' weights. Moreover, QuadBoost exhibits a rate of decrease of its empirical error which is slightly faster than the one achieved by AdaBoost. The experimental results confirm the expectation of the theory that QuadBoost is a very efficient method for learning ensembles.

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