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PAC analogues of perceptron and winnow via boosting the margin


Author(s) : Rocco A. Servedio, 
Publisher : N/A
Publication Date : 2000
ISSN : N/A
Abstract : We describe a novel family of PAC model algorithms for learning linear threshold functions. The new algorithms work by boosting a simple weak learner and exhibit complexity bounds remarkably similar to those of known online algorithms such as Perceptron and Winnow, thus suggesting that these well-studied online algorithms in some sense correspond to instances of boosting. We show that the new algorithms can be viewed as natural PAC analogues of the online p-norm algorithms which have recently been studied by Grove, Littlestone, and Schuurmans [16] and Gentile and Littlestone [15]. As special cases of the algorithm, by taking p = 2 and p = 1 we obtain natural boostingbased PAC analogues of Perceptron and Winnow respectively. The p = 1 case of our algorithm can also be viewed as a generalization (with an improved sample complexity bound) of Jackson and Craven's PAC-model boosting-based algorithm for learning "sparse perceptrons " [20]. The analysis of the generalization error of the new algorithms relies on techniques from the theory of large margin classification. 1,