December 2021 Adaptive learning rates for support vector machines working on data with low intrinsic dimension
Thomas Hamm, Ingo Steinwart
Author Affiliations +
Ann. Statist. 49(6): 3153-3180 (December 2021). DOI: 10.1214/21-AOS2078

Abstract

We derive improved regression and classification rates for support vector machines using Gaussian kernels under the assumption that the data has some low-dimensional intrinsic structure that is described by the box-counting dimension. Under some standard regularity assumptions for regression and classification, we prove learning rates, in which the dimension of the ambient space is replaced by the box-counting dimension of the support of the data generating distribution. In the regression case, our rates are in some cases minimax optimal up to logarithmic factors, whereas in the classification case our rates are minimax optimal up to logarithmic factors in a certain range of our assumptions and otherwise of the form of the best known rates. Furthermore, we show that a training validation approach for choosing the hyperparameters of a SVM in a data dependent way achieves the same rates adaptively, that is, without any knowledge on the data generating distribution.

Funding Statement

The authors thank the International Max Planck Research School for Intelligent Systems (IMPRS-IS) for supporting Thomas Hamm. Ingo Steinwart was supported by the German Research Foundation under DFG Grant STE 1074/4-1.

Funding Statement

The authors thank the International Max Planck Research School for Intelligent Systems (IMPRS-IS) for supporting Thomas Hamm. Ingo Steinwart was supported by the German Research Foundation under DFG Grant STE 1074/4-1.

Citation

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Thomas Hamm. Ingo Steinwart. "Adaptive learning rates for support vector machines working on data with low intrinsic dimension." Ann. Statist. 49 (6) 3153 - 3180, December 2021. https://doi.org/10.1214/21-AOS2078

Information

Received: 1 March 2020; Revised: 1 March 2021; Published: December 2021
First available in Project Euclid: 14 December 2021

MathSciNet: MR4352526
zbMATH: 1486.62107
Digital Object Identifier: 10.1214/21-AOS2078

Subjects:
Primary: 68T05
Secondary: 62G08 , 62H30 , 68Q32

Keywords: ‎classification‎ , curse of dimensionality , learning rates , regression , Support vector machines

Rights: Copyright © 2021 Institute of Mathematical Statistics

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Vol.49 • No. 6 • December 2021
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