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10.1109/FOCS.2008.64guideproceedingsArticle/Chapter ViewAbstractPublication PagesConference Proceedingsacm-pubtype
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Learning Geometric Concepts via Gaussian Surface Area

Published: 25 October 2008 Publication History

Abstract

We study the learnability of sets in R^n under the Gaussiandistribution, taking Gaussian surface area as the``complexity measure'' of the sets being learned. Let C_Sdenote the class of all (measurable) sets with surface area at most S.We first show that the class C_S is learnable to any constant accuracy in time n^{O(S^2)}, even in the arbitrary noise (``agnostic'') model. Complementing this, we also show that any learning algorithm for C_S information-theoretically requires 2^{\Omega(S^2)} examples for learning to constant accuracy. These results together show that Gaussian surface area essentially characterizes the computational complexity of learning under the Gaussian distribution. \\Our approach yields several new learning results, including the following (all bounds are for learning to any constant accuracy):The class of all convex sets can be agnostically learned in time 2^{\tilde{O}(\sqrt{n})} (and we prove a 2^{\Omega(\sqrt{n})} lower bound for noise-free learning). This is the first subexponential time algorithm for learning general convex sets even in the noise-free (PAC) model.Intersections of k halfspaces can be agnostically learned in time n^{O(\log k)} (cf. Vempala's n^{O(k)} time algorithm for learning in the noise-free model).Cones (with apex centered at the origin), and spheres witharbitrary radius and center, can be agnostically learned in time poly(n).

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  • (2023)A Moment-Matching Approach to Testable Learning and a New Characterization of Rademacher ComplexityProceedings of the 55th Annual ACM Symposium on Theory of Computing10.1145/3564246.3585206(1657-1670)Online publication date: 2-Jun-2023
  • (2023)Testing Distributional Assumptions of Learning AlgorithmsProceedings of the 55th Annual ACM Symposium on Theory of Computing10.1145/3564246.3585117(1643-1656)Online publication date: 2-Jun-2023
  • (2022)Positive spectrahedra: invariance principles and pseudorandom generatorsProceedings of the 54th Annual ACM SIGACT Symposium on Theory of Computing10.1145/3519935.3519965(208-221)Online publication date: 9-Jun-2022
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  1. Learning Geometric Concepts via Gaussian Surface Area

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    Published In

    cover image Guide Proceedings
    FOCS '08: Proceedings of the 2008 49th Annual IEEE Symposium on Foundations of Computer Science
    October 2008
    773 pages
    ISBN:9780769534367

    Publisher

    IEEE Computer Society

    United States

    Publication History

    Published: 25 October 2008

    Author Tag

    1. Learning, Convex Sets, Agnostic Learning, Surface Area, Gaussians, Gaussian Surface Area

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    • (2023)A Moment-Matching Approach to Testable Learning and a New Characterization of Rademacher ComplexityProceedings of the 55th Annual ACM Symposium on Theory of Computing10.1145/3564246.3585206(1657-1670)Online publication date: 2-Jun-2023
    • (2023)Testing Distributional Assumptions of Learning AlgorithmsProceedings of the 55th Annual ACM Symposium on Theory of Computing10.1145/3564246.3585117(1643-1656)Online publication date: 2-Jun-2023
    • (2022)Positive spectrahedra: invariance principles and pseudorandom generatorsProceedings of the 54th Annual ACM SIGACT Symposium on Theory of Computing10.1145/3519935.3519965(208-221)Online publication date: 9-Jun-2022
    • (2022)Fooling PolytopesJournal of the ACM10.1145/346053269:2(1-37)Online publication date: 31-Jan-2022
    • (2019)Fooling polytopesProceedings of the 51st Annual ACM SIGACT Symposium on Theory of Computing10.1145/3313276.3316321(614-625)Online publication date: 23-Jun-2019
    • (2018)Learning geometric concepts with nasty noiseProceedings of the 50th Annual ACM SIGACT Symposium on Theory of Computing10.1145/3188745.3188754(1061-1073)Online publication date: 20-Jun-2018
    • (2016)Candidate hard unique gameProceedings of the forty-eighth annual ACM symposium on Theory of Computing10.1145/2897518.2897531(63-76)Online publication date: 19-Jun-2016
    • (2014)Testing surface areaProceedings of the twenty-fifth annual ACM-SIAM symposium on Discrete algorithms10.5555/2634074.2634163(1204-1214)Online publication date: 5-Jan-2014
    • (2014)Learning sparse polynomial functionsProceedings of the twenty-fifth annual ACM-SIAM symposium on Discrete algorithms10.5555/2634074.2634111(500-510)Online publication date: 5-Jan-2014
    • (2014)Testing surface area with arbitrary accuracyProceedings of the forty-sixth annual ACM symposium on Theory of computing10.1145/2591796.2591807(393-397)Online publication date: 31-May-2014
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