On the Generalization Ability of On-Line Learning Algorithms

Cesa-bianchi, Nicolò, Conconi, Alex, Gentile, Claudio

Neural Information Processing Systems 

In this paper we show that online algorithms for classification and regression canbe naturally used to obtain hypotheses with good datadependent tailbounds on their risk. Our results are proven without requiring complicated concentration-of-measure arguments and they hold for arbitrary online learning algorithms. Furthermore, when applied to concrete online algorithms, our results yield tail bounds that in many cases are comparable or better than the best known bounds.

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