One-Pass Boosting

Barutcuoglu, Zafer, Long, Phil, Servedio, Rocco

Neural Information Processing Systems 

This paper studies boosting algorithms that make a single pass over a set of base classifiers. Wefirst analyze a one-pass algorithm in the setting of boosting with diverse base classifiers. Our guarantee is the same as the best proved for any boosting algorithm, butour one-pass algorithm is much faster than previous approaches. We next exhibit a random source of examples for which a "picky" variant of AdaBoost thatskips poor base classifiers can outperform the standard AdaBoost algorithm, whichuses every base classifier, by an exponential factor. Experiments with Reuters and synthetic data show that one-pass boosting can substantially improveon the accuracy of Naive Bayes, and that picky boosting can sometimes lead to a further improvement in accuracy.

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