Paper ID: 2408.17165

Efficient Testable Learning of General Halfspaces with Adversarial Label Noise

Ilias Diakonikolas, Daniel M. Kane, Sihan Liu, Nikos Zarifis

We study the task of testable learning of general -- not necessarily homogeneous -- halfspaces with adversarial label noise with respect to the Gaussian distribution. In the testable learning framework, the goal is to develop a tester-learner such that if the data passes the tester, then one can trust the output of the robust learner on the data.Our main result is the first polynomial time tester-learner for general halfspaces that achieves dimension-independent misclassification error. At the heart of our approach is a new methodology to reduce testable learning of general halfspaces to testable learning of nearly homogeneous halfspaces that may be of broader interest.

Submitted: Aug 30, 2024