Learning Geometric Concepts with Nasty Noise
Ilias Diakonikolas, Daniel M. Kane, Alistair Stewart

TL;DR
This paper presents the first polynomial-time algorithms for robustly learning geometric concept classes like low-degree polynomial threshold functions and intersections of halfspaces under nasty noise, extending learnability to adversarial data corruption.
Contribution
It introduces new efficient algorithms for learning these concepts with dimension-independent error guarantees in the presence of nasty noise, applicable to Gaussian and log-concave distributions.
Findings
Successfully learns low-degree PTFs under nasty noise
Achieves $O(psilon)$ error for LTFs with Gaussian noise
Develops a robust inverse independence lemma
Abstract
We study the efficient learnability of geometric concept classes - specifically, low-degree polynomial threshold functions (PTFs) and intersections of halfspaces - when a fraction of the data is adversarially corrupted. We give the first polynomial-time PAC learning algorithms for these concept classes with dimension-independent error guarantees in the presence of nasty noise under the Gaussian distribution. In the nasty noise model, an omniscient adversary can arbitrarily corrupt a small fraction of both the unlabeled data points and their labels. This model generalizes well-studied noise models, including the malicious noise model and the agnostic (adversarial label noise) model. Prior to our work, the only concept class for which efficient malicious learning algorithms were known was the class of origin-centered halfspaces. Specifically, our robust learning algorithm for low-degree…
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