• DocumentCode
    2366549
  • Title

    Scale-sensitive dimensions, uniform convergence, and learnability

  • Author

    Alon, Noga ; Ben-David, Shai ; Cesa-Bianchi, Nicolo ; Haussler, David

  • Author_Institution
    Dept. of Math., Tel Aviv Univ., Israel
  • fYear
    1993
  • fDate
    3-5 Nov 1993
  • Firstpage
    292
  • Lastpage
    301
  • 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 Gliveako-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 simple combinatorial quantity generalizing the Vapnik-Chervonenkis dimension. We apply this result to characterize PAC learnability in the statistical regression framework of probabilistic concepts, solving an open problem posed by Kearns and Schapire. Our characterization shows that the accuracy parameter plays a crucial role in determining the effective complexity of the learner´s hypothesis class
  • Keywords
    computational complexity; learning (artificial intelligence); PAC learning model; distribution-free convergence property; learnability; probabilistic concepts; scale-sensitive dimensions; statistical regression framework; uniform Gliveako-Cantelli classes; uniform convergence; Computer science; Convergence; Mathematical model; Mathematics; Meteorology; Minimization methods; Power measurement; Predictive models; Size measurement; Weather forecasting;
  • fLanguage
    English
  • Publisher
    ieee
  • Conference_Titel
    Foundations of Computer Science, 1993. Proceedings., 34th Annual Symposium on
  • Conference_Location
    Palo Alto, CA
  • Print_ISBN
    0-8186-4370-6
  • Type

    conf

  • DOI
    10.1109/SFCS.1993.366858
  • Filename
    366858