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      Margin-Based Generalization Lower Bounds for Boosted Classifiers

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          Abstract

          Boosting is one of the most successful ideas in machine learning. The most well-accepted explanations for the low generalization error of boosting algorithms such as AdaBoost stem from margin theory. The study of margins in the context of boosting algorithms was initiated by Schapire, Freund, Bartlett and Lee (1998) and has inspired numerous boosting algorithms and generalization bounds. To date, the strongest known generalization (upper bound) is the \(k\)th margin bound of Gao and Zhou (2013). Despite the numerous generalization upper bounds that have been proved over the last two decades, nothing is known about the tightness of these bounds. In this paper, we give the first margin-based lower bounds on the generalization error of boosted classifiers. Our lower bounds nearly match the \(k\)th margin bound and thus almost settle the generalization performance of boosted classifiers in terms of margins.

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          Boosting the margin: a new explanation for the effectiveness of voting methods

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            The Distribution of Rademacher Sums

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              Tail bounds for sums of geometric and exponential variables

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                Author and article information

                Journal
                27 September 2019
                Article
                1909.12518
                f0793d66-25f7-459f-ad3f-782197245ada

                http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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                Custom metadata
                cs.LG cs.DS stat.ML

                Data structures & Algorithms,Machine learning,Artificial intelligence
                Data structures & Algorithms, Machine learning, Artificial intelligence

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