ICML2021
On the Power of Localized Perceptron for Label-Optimal Learning of Halfspaces with Adversarial Noise
Jie Shen
15 citations
Abstract
We study online active learning of homogeneous halfspaces in with adversarial noise where the overall probability of a noisy label is constrained to be at most . Our main contribution is a Perceptron-like online active learning algorithm that runs in polynomial time, and under the conditions that the marginal distribution is isotropic log-concave and , where is the target error rate, our algorithm PAC learns the underlying halfspace with near-optimal label complexity of and sample complexity of . Prior to this work, existing online algorithms designed for tolerating the adversarial noise are subject to either label complexity polynomial in , or suboptimal noise tolerance, or restrictive marginal distributions. With the additional prior knowledge that the underlying halfspace is -sparse, we obtain attribute-efficient label complexity of and sample complexity of . As an immediate corollary, we show that under the agnostic model where no assumption is made on the noise rate , our active learner achieves an error rate of with the same running time and label and sample complexity, where is the best possible error rate achievable by any homogeneous halfspace.