Abstract

Learnability in Valiant's PAC learning model has been shown to be strongly related to the existence of uniform laws of large numbers. These laws define a distribution-free convergence property of means to expectations uniformly over classes of random variables. Classes of real-valued functions enjoying such a property are also known as uniform Glivenko-Cantelli classes. In this paper, we prove, through a generalization of Sauer's lemma that may be interesting in its own right, a new characterization of uniform Glivenko-Cantelli classes. Our characterization yields Dudley, Gine´, and Zinn's previous characterization as a corollary. Furthermore, it is the first based on a Gine´, and Zinn's previous characterization as a corollary. Furthermore, it is the first based on a simple combinatorial quantity generalizing the Vapnik-Chervonenkis dimension. We apply this result to obtain the weakest combinatorial condition known to imply PAC learnability in the statistical regression (or “agnostic”) framework. Furthermore, we find a characterization of learnability in the probabilistic concept model, solving an open problem posed by Kearns and Schapire. These results show that the accuracy parameter plays a crucial role in determining the effective complexity of the learner's hypothesis class.

Keywords

LearnabilityLemma (botany)Characterization (materials science)MathematicsGeneralizationCorollarySimple (philosophy)Probabilistic logicUniform convergenceDiscrete mathematicsClass (philosophy)Convergence (economics)Dimension (graph theory)CombinatoricsComputer scienceArtificial intelligenceMathematical analysis

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Publication Info

Year
1997
Type
article
Volume
44
Issue
4
Pages
615-631
Citations
341
Access
Closed

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Cite This

Noga Alon, Shai Ben-David, Nicolò Cesa‐Bianchi et al. (1997). Scale-sensitive dimensions, uniform convergence, and learnability. Journal of the ACM , 44 (4) , 615-631. https://doi.org/10.1145/263867.263927

Identifiers

DOI
10.1145/263867.263927