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The Power of Iterative Filtering for Supervised Learning with (Heavy) Contamination

26 May 2025
Adam R. Klivans
Konstantinos Stavropoulos
Kevin Tian
Arsen Vasilyan
ArXiv (abs)PDFHTML
Main:22 Pages
4 Tables
Appendix:14 Pages
Abstract

Inspired by recent work on learning with distribution shift, we give a general outlier removal algorithm called iterative polynomial filtering and show a number of striking applications for supervised learning with contamination: (1) We show that any function class that can be approximated by low-degree polynomials with respect to a hypercontractive distribution can be efficiently learned under bounded contamination (also known as nasty noise). This is a surprising resolution to a longstanding gap between the complexity of agnostic learning and learning with contamination, as it was widely believed that low-degree approximators only implied tolerance to label noise. (2) For any function class that admits the (stronger) notion of sandwiching approximators, we obtain near-optimal learning guarantees even with respect to heavy additive contamination, where far more than 1/21/21/2 of the training set may be added adversarially. Prior related work held only for regression and in a list-decodable setting. (3) We obtain the first efficient algorithms for tolerant testable learning of functions of halfspaces with respect to any fixed log-concave distribution. Even the non-tolerant case for a single halfspace in this setting had remained open. These results significantly advance our understanding of efficient supervised learning under contamination, a setting that has been much less studied than its unsupervised counterpart.

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@article{klivans2025_2505.20177,
  title={ The Power of Iterative Filtering for Supervised Learning with (Heavy) Contamination },
  author={ Adam R. Klivans and Konstantinos Stavropoulos and Kevin Tian and Arsen Vasilyan },
  journal={arXiv preprint arXiv:2505.20177},
  year={ 2025 }
}
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